{"doc_desc":{"title":"MEX_2019_ENA_v01_ES_M_v01_A_OCS_nesstar","idno":"DDI_MEX_2019_ENA_v01_EN_M_v01_A_OCS","producers":[{"name":"Instituto Nacional de Estad\u00edstica y Geograf\u00eda","abbreviation":" INEGI","affiliation":"","role":"Metadata producer"},{"name":"Direcci\u00f3n General de Estad\u00edsticas Econ\u00f3micas","abbreviation":"DGEE","affiliation":"","role":"Metadata producer"},{"name":"Direcci\u00f3n General Adjunta de Censos Econ\u00f3micos y Agropecuarios","abbreviation":"DGACEA","affiliation":"","role":"Metadata producer"},{"name":"Direcci\u00f3n de Censos y Encuestas Agropecuarias","abbreviation":"DCEA","affiliation":"","role":"Metadata producer"},{"name":"Coordinaci\u00f3n de Dise\u00f1o Conceptual y Resultados","abbreviation":"CDCR","affiliation":"","role":"Metadata producer"},{"name":"Subdirecci\u00f3n de Dise\u00f1o Conceptual","abbreviation":"SDC","affiliation":"","role":"Metadata producer"},{"name":"Office of Chief Statistician","abbreviation":"OCS","affiliation":"","role":"Metadata adapted for FAM"}],"version_statement":{"version":"MEX_2019_ENA_v01_EN_M_v01_A_OCS_v01"}},"study_desc":{"title_statement":{"idno":"MEX_2019_ENA_v01_EN_M_v01_A_OCS","title":"National Agricultural Survey 2019","alt_title":"ENA 2019"},"authoring_entity":[{"name":"Instituto Nacional de Estad\u00edstica y Geograf\u00eda","affiliation":""},{"name":"Direcci\u00f3n General de Estad\u00edsticas Econ\u00f3micas","affiliation":""},{"name":"Direcci\u00f3n General Adjunta de Censos Econ\u00f3micos y Agropecuarios","affiliation":""}],"production_statement":{"producers":[{"name":"Secretar\u00eda de Agricultura y Desarrollo Rural","affiliation":"","role":""}],"copyright":"Derechos reservados \u00a9 INEGI 2020","funding_agencies":[{"name":"Instituto Nacional de Estad\u00edstica y Geograf\u00eda","abbreviation":"INEGI","role":""},{"name":"Secretar\u00eda de Agricultura y Desarrollo Rural","abbreviation":"SADER","role":""}]},"distribution_statement":{"contact":[{"name":"Atenci\u00f3n a usuarios","affiliation":" INEGI","email":"atencion.usuarios@inegi.org.mx","uri":"https:\/\/www.inegi.org.mx\/inegi\/contacto.html"}]},"series_statement":{"series_name":"Agricultural Census [ag\/census]","series_info":"The ENA 2019 represents the fourth exercise in a series that began seven years ago due to the need to establish an agricultural information system that would integrate information from censuses and continuous surveys.\n\nIn 1930, the first Agricultural, Livestock and Forestry Census of Mexico was carried out and it continued to be carried out every 10 years (1940, 1950, 1960, 1970, 1981), until 1991. Subsequently, an information gap of 16 years was created. years, since it was not until 2007 when the next Agricultural, Livestock and Forestry Census was carried out, which, by the way, is the last Census of this type that has been carried out in the country.\n\nTherefore, given the need to have agricultural and forestry statistics with greater continuity, in 2012 the first National Agricultural Survey (ENA 2012) was carried out and from then on it is suggested that this survey be carried out biennially, therefore that in 2014 the second National Agricultural Survey 2014 (ENA 2014) was carried out.\n\nSubsequently, it had been proposed to carry out the Agricultural, Livestock and Forestry Census in 2017, so the first stage was scheduled for 2016, which is the updating of the framework as a preparatory stage for said Census. Consequently, the 2016 National Agricultural Survey was not scheduled. However, since the budget for the census event in 2017 was not authorized, INEGI decided to carry out the third National Agricultural Survey (ENA 2017).\n\nIn 2019, the fourth National Agricultural Survey (ENA 2019) was carried out, which has been conceived to obtain statistics that allow for an overview of the small and medium-sized units of agricultural production in the country, as an invaluable input that allows defining and better evaluate public policies on priority and strategic programs established by the Federal Government."},"study_info":{"keywords":[{"keyword":"Production Unit","vocab":"","uri":""},{"keyword":"Legal category","vocab":"","uri":""},{"keyword":"Land","vocab":"","uri":""},{"keyword":"Organization","vocab":"","uri":""},{"keyword":"Ground","vocab":"","uri":""},{"keyword":"Irrigation","vocab":"","uri":""},{"keyword":"Water","vocab":"","uri":""},{"keyword":"Agriculture","vocab":"","uri":""},{"keyword":"Crops","vocab":"","uri":""},{"keyword":"Animal husbandry","vocab":"","uri":""},{"keyword":"Cattle","vocab":"","uri":""},{"keyword":"Cattle","vocab":"","uri":""},{"keyword":"Pigs","vocab":"","uri":""},{"keyword":"Poultry","vocab":"","uri":""},{"keyword":"Tractors","vocab":"","uri":""},{"keyword":"Machinery","vocab":"","uri":""},{"keyword":"Vehicles","vocab":"","uri":""},{"keyword":"Labor","vocab":"","uri":""},{"keyword":"Remuneration","vocab":"","uri":""},{"keyword":"Credit","vocab":"","uri":""},{"keyword":"Insurance","vocab":"","uri":""},{"keyword":"Tecnology","vocab":"","uri":""},{"keyword":"Environment","vocab":"","uri":""},{"keyword":"Productor","vocab":"","uri":""}],"topics":[{"topic":"- Legal category of the land","vocab":"","uri":""},{"topic":"- Organization and support for production","vocab":"","uri":""},{"topic":"- Classification of the production unit","vocab":"","uri":""},{"topic":"- General characteristics of the land","vocab":"","uri":""},{"topic":"- Land use","vocab":"","uri":""},{"topic":"- Irrigation systems, quality and origin of water","vocab":"","uri":""},{"topic":"- Agriculture","vocab":"","uri":""},{"topic":"- Breeding and exploitation of animals","vocab":"","uri":""},{"topic":"- Tractors, machinery and vehicles","vocab":"","uri":""},{"topic":"- Labor and wages","vocab":"","uri":""},{"topic":"- Credit and insurance","vocab":"","uri":""},{"topic":"- Computer and communication technologies","vocab":"","uri":""},{"topic":"- Problems that affect production","vocab":"","uri":""},{"topic":"- Actions to protect the environment","vocab":"","uri":""},{"topic":"- Sociodemographic characteristics of the producer","vocab":"","uri":""}],"abstract":"The National Institute of Statistics and Geography (INEGI) carried out the National Agricultural Survey 2019 (ENA 2019) to offer statistics on the production of crops and livestock species that are characterized by being the ones that mostly participate in the Gross Domestic Product of the primary sector in Mexico and which, according to the Sustainable Rural Development Law, are those products for which the State seeks the supply, promoting their access to less favored social groups. Likewise, the Food and Agriculture Organization of the United Nations (FAO) considers them essential for food security, agricultural sustainability and rural development.\n\nThe ENA 2019 allows to continue obtaining basic and structural statistics of the agricultural and livestock sector, as it is the fourth version of a series of National Agricultural Surveys that INEGI carried out in the years 2012, 2014 and 2017. This survey, in addition to allowing to know The current characteristics of the agricultural production units has been enriched in terms of the results achieved, because, for some priority crops in the Federal Government programs, data was obtained from the small and medium-sized units that have the smallest area planted in the country.","time_periods":[{"start":"2018-10-01","end":"2019-09-30","cycle":"Legal category of the land, Organization and support for production, Classification of the production unit, General characteristics of the land, Land use, Irrigation systems, Water quality and origin, Open-air agriculture, Organic agriculture, Protected agriculture , Fertilizers and fertilizers, Production destination, Food loss, Marketing, Agricultural technologies, Agricultural facilities, Production sales, Tractors, Manpower, Wages and salaries, Credit and insurance, Information and communication technologies, Problems that affect production, Actions to protect the environment    "},{"start":"2014-01-01","end":"2019-09-30","cycle":"Environmental factors"},{"start":"2019-09-30","end":"2019-09-30","cycle":"Livestock stocks, Machinery and equipment"},{"start":"2019-03-31","end":"2019-03-31","cycle":"Livestock stocks"}],"coll_dates":[{"start":"2019-04-01","end":"2019-07-31","cycle":"Questionnaire design"},{"start":"2019-06-17","end":"2019-10-04","cycle":"Pre-recruitment activities"},{"start":"2019-10-07","end":"2019-10-18","cycle":"operational training"},{"start":"2019-10-21","end":"2019-11-29","cycle":"Information training "},{"start":"2019-12-02","end":"2019-12-31","cycle":"Closing of operation"},{"start":"2019-11-04","end":"2020-03-31","cycle":"Process and analysis"},{"start":"2020-04-01","end":"2020-04-17","cycle":"Calculation of expansion factors, sample expansion and analysis of the result of the statistical design"},{"start":"2020-04-20","end":"2020-04-30","cycle":"Generation of tables and comparison with other sources"},{"start":"2020-04-20","end":"2020-04-30","cycle":"Calculation of tables with indicators of statistical precision"},{"start":"2020-05-04","end":"2020-07-13","cycle":"Analysis and delivery of results (priority and non-priority) INEGI-SADER"}],"nation":[{"name":"Mexico","abbreviation":"MEX"}],"geog_coverage":"National and by Federative Entity.","analysis_unit":"For ENA 2019, the Observation Unit is defined as the economic unit made up of one or more pieces of land located in the same municipality, where at least some of them carry out agricultural or forestry activities, under the control of the same administration. If the administration has land located in another municipality, it is considered as another production unit; that is, there will be as many production units as municipalities occupying their land.","universe":"The universe selected for the ENA 2019 was 79,252 production-product units, equivalent to 69,124 production units from which information of interest was obtained. These units come from the Update of the 2016 Agricultural Census Framework (AMCA 2016) and updated with information from the 2017 National Agricultural Survey (ENA 2017). This universe was defined from the 28 products of national interest, 5 of these livestock products being of economic importance for the country.\n\nThe products selected for the conformation of the universe of work of the ENA 2019 are 29 products, 24 agricultural: Avocado, Alfalfa, Amaranth, Rice, Cocoa, Coffee, Pumpkin, Sugar Cane, Onion, Chile, Strawberry, Bean, Tomato (Tomato Red), Lemon, White Corn, Yellow Corn, Mango, Apple, Orange, Banana, Sorghum, Soya, Wheat and Grape; while the five species and livestock products were made up of Bovines, Porcine, Poultry, Milk and Egg.","data_kind":"Sample Survey Data [ssd]","notes":"Agriculture and Livestock"},"method":{"data_collection":{"data_collectors":[{"name":"Instituto Nacional de Estad\u00edstica y Geograf\u00eda","abbreviation":"INEGI","affiliation":""}],"sampling_procedure":"SAMPLE DESIGN\nThe elements considered for the definition and construction of the sampling scheme of the 2019 National Agricultural Survey (ENA 2019), help determine the size, selection and distribution of the sample; Necessary and substantial elements to define the precision of the information, as well as the analysis of the uptake for the evaluation of the final estimates, through calculations such as the variance and the coefficient of variation.\n\nTARGET POPULATION\nIt is defined by all production units captured in the 2016 Agricultural Census Framework Update (AMCA 2016), updated with information from the 2017 National Agricultural Survey (ENA 2017) for the part of agricultural products and for the part of livestock producers it is taken of the 2007 Agricultural, Livestock and Forestry Census updated with the 2017 ENA that reported, at that time, producing any of the products of interest, classified according to their importance of national and\/or state interest.\n\nGEOGRAPHICAL AND SECTOR COVERAGE\nThe survey was designed to obtain information at the national level for the products of interest and for each of the states for their main products.\n\nDOMAIN OF STUDY\nIt refers to subsets of the population under study for which it is intended to obtain information and for which a sample is designed independently for each of them.\nIn this regard, it is worth mentioning that of the 29 products of the ENA 2019 work universe, 26 had a stratified probabilistic design (for purposes of the sample design, corn counts as a single product regardless of whether it is white grain corn or yellow grain corn , reason for which there are 26 and not 27 products); while for poultry and egg products, a non-probabilistic design was considered. The subsets under study are presented below:\nA. NATIONAL DOMAIN. Each of the 26 products by producer size (large and small and medium producers), obtaining a total of 52 domains, the products considered (Avocado, Alfalfa, Amaranth, Rice, Cattle, Cocoa, Coffee, Pumpkin, Sugarcane, Onion, Chile, Strawberry, Bean, Tomato (Red tomato), Milk, Lemon, Corn, Mango, Apple, Orange, Banana, Pork, Sorghum, Soy, Wheat, Grape).\nB. PRODUCT-FEDERAL ENTITY DOMAIN. For the main federal entities by producer size, for this case 60 product-federal entity domains were considered.\nC. DOMAIN PRODUCT-FEDERAL ENTITY-SIZE OF PRODUCTION UNIT BY AREA. (For ten products, the federative entity domain-size of production unit per area is necessary) for this case, 384 domains were considered.\n\nSAMPLING UNIT\nThe observation unit is the Production Unit (UDP), defined as: The economic unit made up of one or more pieces of land located in the same municipality, where at least some of them carry out agricultural or forestry activities, under the control of the same administration. Under this context, the sampling unit is the production-product unit. If the production unit has more than one product or crop, it will be included in two or more study domains.\n\nSAMPLING FRAME\nIt was integrated from two different sources:\nA. AGRICULTURAL PRODUCTS: the framework derived from the AMCA 2016, updated with the results of the ENA 2017, was the input for determining the sampling framework of the ENA 2019.\nB. LIVESTOCK PRODUCTS: the 2007 Agricultural, Livestock and Forestry Census, updated with the results of the 2017 ENA.\n\nSTRATIFICATION\nFor agricultural products, the variable of interest for stratification was the planted area in hectares (ha), depending on the characteristics of the crop, from four to six strata. The determination of the ranges of the strata is obtained by the Dalenius-Hodges method. According to William G. Cochran (1977), \"for a single feature or variable, the best feature is, of course, the frequency distribution. The next best is probably the frequency distribution, given the number of strata, the equations for determining the best limits between them under Neyman proportional assignment, have been obtained by Dalenius (1957)\".\nFor livestock products, the number of heads variable was used.\n\nSAMPLING SCHEME\nFor the products of interest, both large and small and medium producers, the sampling design is stratified probabilistic with simple random selection within each study domain:\nA. PROBABILISTIC. The selection units had a known, non-zero probability of being selected.\nB. STRATIFIED. Sampling units with similar characteristics were grouped to form strata.\nThe results of the sample are generalized to the entire population and it is possible to know the precision of the results.\n\nSAMPLE SIZE\nDifferent sample sizes were calculated for:\nA. SAMPLE SIZE FOR DOMAINS AT THE NATIONAL LEVEL (PRODUCT). For products of national interest, the sample size obtained for these domains is 19,320 production-product units; 10,968 for large producers and 8,352 for small and medium producers.\nB. SAMPLE SIZES FOR DOMAINS AT THE PRODUCT-FEDERAL ENTITY LEVEL. For products of state interest, the sample size obtained for these domains is 19,320 production-product units; 10,968 for large producers and 8,352 for small and medium producers.\nC. SAMPLE SIZES FOR DOMAINS AT THE PRODUCT-FEDERAL ENTITY-SIZE OF PRODUCTION UNIT LEVEL BY AREA. In this case, the calculation differentiated by producer size was made, in such a way that the sample size for small and medium-sized producers was strengthened, according to the following considerations:\nYo. DOMAIN OF LARGE PRODUCERS. The sample size obtained for these domains is 3,255 production-product units.\nii. DOMAIN OF SMALL AND MEDIUM PRODUCERS. The sample size obtained for these domains is 7,355 production-product units.\nD. SAMPLE SIZES FOR LIVESTOCK PRODUCTS\nYo. DOMAIN OF LARGE PRODUCERS. For the bovine product, a relative error of 14% was considered for the national design sample.\nii. The sample size obtained for these domains is 10,554 units. The interest of bovines is both the number of stocks and milk production.\n\nSAMPLE ALLOCATION.\nFor the three large levels of interest, (National (product), Product-federative entity and Product-federative entity-size of production unit by area). The sample was assigned in each stratum by the Neyman method according to the planted area or number of heads. Except for small and medium-sized producers in the domains at the product-federative entity-size of production unit per area level.\n\nSAMPLE SELECTION\nIt is performed randomly and independently for each study domain. The sample selected for the design is 79,252 production-product units, equivalent to 69,124 production units in which information of interest is obtained.\n\nCALCULATION OF EXPANSION FACTORS\nThree different types of expansion factors were calculated, which are:\nA. Production-product unit expansion factors (for each production-product unit)\nB. Production unit expansion factors (based on design expansion factors for production-product units)\nC. Producer expansion factors (for each producer, based on design expansion factors for production-product units)\n\nADJUSTMENT TO EXPANSION FACTORS\nA. Expansion factors for the non-response rate. The expansion factors at the production unit-product level are corrected for non-response at the stratum level, because some of the production units that were selected did not answer.\nB. Calibration of expansion factors for avocado. In surveys, the use of auxiliary information can greatly improve the precision of estimates for a whole population. To incorporate the auxiliary information in the estimates, there is a method proposed by Deville and Sarndal; which proposes the use of calibrated estimators, with the idea of \u200b\u200bobtaining a better estimate for the population. The calibration estimators that were used for the following purposes:\n- Decreased variance.\n- Eliminate or decrease selection biases caused by unit non-response or frame errors.\n- Force estimates to be numerically consistent with external measures or auxiliary information.\nIn the case of avocado, INEGI has implemented a process to estimate the area planted using satellite images in the main states of the country, with the aim of measuring the underreporting that was observed by producers in past national agricultural surveys.\nIn order to give consistent estimates of the information collected, in the analysis of satellite images, the expansion factor calibration method is used for the advantages mentioned above.\n\nESTIMATORS\nA. Estimators at the production unit-product level (For cattle, pigs and corn, due to the high probability of finding in most production units the combination of these products with any other of interest in the survey).\nB. Estimators at the production unit level (characteristic of production units)\nC. Producer level estimators (proportions, rates and averages)\n\nCALCULATION OF PRECISION INDICATORS\nA. Calculation of variance at the production unit-product level (The estimate of the variance of the total characteristic)\nB. Calculation of variance at the production unit and producer level (The estimation of the variance, standard deviation and coefficient of variation for the total characteristic at the production and producer level)\nC. Level of precision of the estimates (The information obtained will be published in statistical tables, to facilitate its consultation. For each data, the indicators of statistical precision are disclosed (standard error, confidence interval and coefficient of variation (CV))) The estimates are colored according to their level of precision, in High, Moderate and Low, taking as reference the coefficient of variation (%). A Low precision requires a cautious use of the estimate. The levels considered are, High CV in the range of (0-20), Moderate CV in the range of [20,30) and Low CV from 30% onwards)\n\n\n* For further details of this section, consult the document Encuesta Nacional Agropecuaria 2019. ENA. Methodology. Same as found in the External Reference Materials of this documentation.","sampling_deviation":"The non-response that was presented in the ENA 2019 was 8.7%, (8.1% of Producers not collected, which is equivalent to 8.7% of UP), caused mainly by two reasons: The first was that the production units selected by some crop or livestock species, at the time of the interview they were no longer engaged in any agricultural activity, due to abandonment of these units. The second reason was the fact of not finding or being able to locate the informant of the production unit, for which reason the information was not collected.","coll_mode":["Computer Assisted Personal Interview [capi]"],"research_instrument":"The collection of statistical information from the ENA 2019 was carried out through a Questionnaire.This instrument was published in Spanish and is structured by pre-coded questions and some open questions. The application of the questionnaire was carried out through electronic means and on paper in special cases.","coll_situation":"NATIONAL GEOSTATISTICAL FRAMEWORK\nIt is a unique and national system designed by the INEGI, to correctly reference the statistical information of the censuses and surveys with the corresponding geographical places, it provides the location of the towns, municipalities and federal entities of the country, using geographic coordinates.\n\nThe National Geostatistical Framework (MGN) used in the ENA 2019, is made up of the results of the Update of the Agricultural Census Framework (AMCA) carried out in 2016 and complemented with information from the 2017 National Agricultural Survey. This Framework integrates the new municipalities created until December 2018.\n\nBased on this Framework, the cartographic materials used in the field data collection operation were generated.\n\nFor the ENA 2019, it was considered to use mainly digital cartography preloaded in Mobile Computing Devices (DCM), as well as the printing of some cartographic materials that facilitated the interviewers the location of localities and addresses of the producers.\n\nThe cartography in digital format was integrated into the cartographic module, installed in the DCM used by the interviewers, which contained information on municipalities, rural and urban localities, streets, blocks, Basic Geostatistical Areas (AGEB), streams and bodies of water, routes of communication, and physical and cultural traits.\n\nThe main layers of digital cartographic files used corresponded to:\n- MGN vectors (federative entity, municipality, AGEB).\n- Vectors of the urban MGN (blocks, directions of roads).\n- Vectors of urban services (markets, schools, medical services, among others).\n- Vectorial topographic chart 1:50,000 (rivers, streams, roads, trails, dams, etc.).\n- Vectors of urban and rural localities.\n- MGN catalogs and derivatives (municipalities and municipal capitals, AGEB, General Integral Catalog of Towns, among others).\n\nTHE PRINTED CARTOGRAPHIC PRODUCTS USED WERE:\nState Condensed with Geostatistical Framework\nMunicipal Sketch with Geostatistical Framework\nUrban Location Plan\nUrban Basic Geostatistical Area Plan (AGEB)\nRural Town Plan\n\nGEOGRAPHIC COVERAGE\nThe ENA 2019 had a national geographic coverage and by federal entity. It included a sample of the Production Units that are dedicated to agricultural activities and that have some of the selected products with national and\/or state representation.\n\nThe coverage of municipalities was 1,663, which correspond to the addresses of the total number of producers visited.\n\nRECRUITMENT STRATEGY\nThe recruitment strategy by directed visit was used, which consisted of going to the homes of the producers or suitable informants and, through a direct interview, the data of the producers were corroborated and completed, the location of their production units was confirmed and the variables of interest were captured.\nTo obtain the data from the production units, Mobile Computing Devices were used, which had the Information Capture System installed, which was made up of the following three modules:\n\nOPERATIONAL ROUTINE: it made possible the identification of the producer, the registration and control of the situations presented in the field, capturing the characteristics of how each interview was developed.\n\nCARTOGRAPHIC MODULE: used to visually verify the location of the domiciles of the producers and dotting them on the cartography, which allowed obtaining geographic coordinates of the domiciles, which will be very useful in future statistical projects of the sector.\nDIGITAL QUESTIONNAIRE: made it possible to fill out the questionnaire smoothly, validating the answers at the time of the interview, thus ensuring the quality of the data collected\n\nINFORMATION TRAINING SYSTEM\n\nOPERATING ROUTINE\n- Allows to identify whether or not the producer managed the production unit in the reference period.\n- Takes control of the situations presented in the field with each producer.\n- Prepare follow-up reports.\n\nCARTOGRAPHIC MODULE\n- It allows to georeference the location of the houses of the producers.\n\nQUESTIONNAIRE MODULE\n- Captures the variables of interest.\n- Perform validations to take care of quality.\n- Encodes the variables.\n\nRECRUITMENT PROCESS\nIn this process, we went to the address of each producer registered in the directory to carry out a direct interview; The interviewers inquired to identify the producer or the appropriate informant, that is, who knew the management of the production unit and could answer the interview.\n\nTRAINING\nTraining is of great relevance for any project of this nature, the preparation of the operational personnel, responsible for capturing the data, depends on it. To the extent that the elements of the event are better assimilated, the interviewers will be able to adhere to the guidelines and make decisions in the field that support the quality of the information collected.\n\nIn the ENA 2019 training, knowledge was transmitted about the methodological support, the conceptual framework, the operating procedures, the capture instruments and the management of the capture system.\n\nFor the survey, the face-to-face training strategy was used at two levels: central and state, with the following characteristics:\n- Direct communication between instructor and trainee was promoted, which facilitated continuous feedback.\n- The manuals included the specific functions and procedures to be carried out by each position and, together with the use of presentations, didactic material, classroom exercises and field practices, provided the knowledge and learning required for the development of the activities.\n- The two levels of training were carried out as follows: central instructors to state instructors and state instructors to operational personnel.\n- A total of 1,190 people were trained, of which 882 were interviewers.\n\nMONITORING AND CONTROL\nWith the registration of the situations found in the field during the collection of information, progress reports were prepared, which were generated directly in the DCM, which facilitated the monitoring of progress control during the operation to ensure that, in all planned units, capture the questionnaire or identify the reasons why the data was not captured.\nWith each sending of information that the interviewers made from their DCM, through the Web, the reports were automatically updated for all those responsible for the control and monitoring of the field operation.\n\nThe system developed for the monitoring and control of progress contributed to the immediate solution of the problem, which prevented it from impacting the results and coverage of the ENA 2019.","act_min":"The commitment to obtain reliable information required actions to timely detect and correct inconsistencies in its collection, and thus avoid interference in the quality of the data and in the coverage of the operation.\n\nThe advisory and support activity consisted of going to observe how the interviewers obtained the requested data, to ensure that they adhered to the established methodology, detect deviations and correct them immediately. The record of the detected situations was carried out by means of a certificate.\n\nThe supervisors had the instruction to align and redirect the procedures for: the development of the interview, the conformation of the production unit and the application of the questionnaire.","weight":"EXPANSION FACTORS OF PRODUCTION UNITS-PRODUCT\nExpansion factors are defined for each unit of production-product.\n\nPRODUCTION UNIT EXPANSION FACTORS\nExpansion factors are defined for each production unit, based on the design expansion factors for the production-product units.\n\nPRODUCER EXPANSION FACTORS\nExpansion factors are defined for each producer, based on the design expansion factors for the production-product units.\n\n* For more details on the Expansion Factors of the Production-Product Units, Production Units, and Producers, see the document Encuesta Nacional Agropecuaria 2019. ENA. Methodology. Same as found in the External Reference Materials of this documentatio","cleaning_operations":"ANALYSIS AND PROCESSING OF INFORMATION\nThe processing and analysis of the information represents a fundamental part to guarantee the quality, consistency, completeness and timeliness of the information generated in census statistical events or agricultural samples.\n\nFor the 2019 National Agricultural Survey (ENA 2019), specific information processing activities were contemplated in order to guarantee its consistency and quality. The validation and analysis processes were carried out from the moment of the interview with validation criteria in the Mobile Computing Device (DCM) directly with the informant, until the review and presentation of the results.\n\nDue to the above, the information collected in the ENA 2019, was subjected to a set of processes to identify data that does not meet the requirements of logical and arithmetic consistency, completeness and integrity, in order to apply a solution under specific and homogeneous criteria, that ensure the consistency and quality of the information.\n\nWithin the processing of the ENA 2019, various stages were defined to carry out the analysis and validation of the information. The processing stages were as follows:\n- Online validation\n- Monitoring\n- Codification and Normalization\n- Validation within the questionnaire\n- Validation between questionnaires\n- Comparison with internal and external sources\n\nONLINE VALIDATION\nOnline validation is the first stage of the processing and had the purpose of detecting and solving inconsistencies in the information at the time of the interview directly with the informant, this during the application of the questionnaire with the DCM. This validation allowed that once the interviewer has recorded the data provided by the informant, if the system detected any inconsistency, it would send an error message to be corrected at that time with the informant. The online validation criteria were more than 200. These were designed to guarantee that the questionnaire had the minimum necessary information, detect variables without answers, as well as validate the breakdowns of the destination of crop production, livestock stocks, among others.\n\nOnce the capture of the questionnaires was completed, the information was transferred via the Internet to the national capture database of INEGI central offices.\n\nMONITORING\nThe monitoring of the information was carried out at the same time as the field operation and with the information from the capture database. Its objective was to follow up on the information collected in the questionnaires and verify its completeness during the field operation, in order to detect in a timely manner inconsistencies in the collection of information that were not detected during the online validation. In the same way, it served as an alert system to monitor the quality and completeness of the information and offered elements to reinstruct the operational personnel in case of omissions or repetitive failures in the capture of information.\n\nCODING OF CONCEPTS\nFor the generation of statistics, it is necessary that the information collected from each variable is cataloged for its proper classification and is identified for its integration into the database, for its processing, analysis, as well as for an orderly presentation of results.\n\nIn agricultural statistics (censuses and surveys), catalogs are used to classify the response options for each variable contained in the questionnaire; The catalogs contain codified concepts that are developed from the investigation and analysis of each variable, to integrate the answer options, as many as it is feasible for the informants to answer, according to the characteristics of each question in the questionnaire.\nThe first coding was done at the time of the interview, since the mobile computing device had the catalogs integrated, in such a way that, during the interview, the device allowed the catalog to be displayed from which the interviewer could choose the concept according to the response of the producer, when choosing a concept from the catalog integrated into the mobile computing device, at that moment the key of the concept chosen from the catalog was stored. In the cases in which the answer provided by the informant did not coincide with any of the concepts in the catalogue, the capture system made it possible to capture the answer and all these cases were coded once the captured information was integrated into a database, using two processes: electronic coding and manual coding.\n\nThe questionnaires captured in the mobile computing device of each interviewer were transferred weekly to the database concentrated at the state level and each state coordination was transferred in turn to a national database, integrated in the central offices of the Institute.\n\nThe information already concentrated in the central office database was processed by a system and those cases that were not coded at the time of capture because they were not located in the catalog at the time of the interview were electronically coded. that is to say, by means of an automated electronic system, the concepts captured with the contents in the catalogs were compared to make a filter that would allow detecting those cases that were coincidental and that for some reason at the time of the interview were not located, by this means electronically, the cases were automatically coded with those described in the catalogues.\n\nAfter the electronic coding process, the cases that were pending coding are transferred to manual coding. In this process, they are grouped by type of catalog for review and analysis by central office staff, where synonyms with concepts that if they are contained in the catalog or they had an erroneous writing at the time of their capture; these were assigned the corresponding key of the concept contained in the catalogue; on the other hand, the cases that were identified as new, after review, analysis and investigation, including consultations with staff from state offices, were assigned a new code and registered in the corresponding catalog for their coding.\n\nSTANDARDIZATION\nIn Mexico throughout its territory there are various regionalisms and the units of measurement that refer to surface and volume are no exception. The information that is captured in the agricultural statistics and that corresponds to quantitative variables, which refer to extensions of surface or to quantify the capacity or volume. In some cases, agricultural producers express them in measures that are not always of the metric system (meters, hectares, liters, kilograms, tons, etc.), depending on the geographical location in which they are located, they provide regional units that they usually use in their community, such as almud, tarea, media, rope, among other measures.\n\nFor the publication of results it is necessary to homogenize the measurements to the decimal metric system, this homogenization process is called Normalization, in this process the units of measurement other than the decimal metric system are reviewed and analyzed and an equivalence is applied to carry out a conversion to the measurements with which they will be published (hectares, tons, liters, etc.).\nFirst, an electronic normalization is carried out, which, through an automated electronic process, converts the units of measurement that are of fixed equivalence (square meter, yard, acre, pound, gallon, etc.), to units of measurement that are presented in the published results: liter, meter or hectare, kilogram or ton, depending on the variable in question such as the planted area, harvested area or production.\n\nOn the other hand, in manual normalization, all captured units that do not correspond to the decimal metric system and that do not have an established equivalence are analyzed and investigated, since their value can vary, depending on the region where they have been captured. In these cases, once their equivalence is determined through an exhaustive investigation and having verified their consistency with other variables, their value is converted to publishable measurement units, thus homogenizing the values \u200b\u200bto be able to add the information and present it in the results. of the poll.\n\nVALIDATION INSIDE THE QUESTIONNAIRE\nThe validation within the questionnaire guarantees the consistency of the information within it, verifying the congruence between related variables. For this, there was a significant number of logical validations that were applied to each of the questionnaires. This process was carried out once the previous coding and normalization processes were released. Therefore, the validation within the questionnaire, and for each one of them, began with the standardized information and was executed until no questionnaire presented errors or discrepancies according to the established criteria. In ENA 2019, 157 validation criteria were developed.\n\nFor the validation within questionnaires, it was established that the 'theoretical vectors' method was used, in which functions were previously defined where their dependent variables were assigned values \u200b\u200baccording to the questions and answers of each chapter of the questionnaire. . From these values, the functions provided a set of 'images' that corresponded to all the possible combinations of answers to the questions under study, each image identifying one and only one combination. Subsequently, each image was subjected to an analysis and correction methodology for any inconsistencies that could arise, in such a way that the records that did not meet the established criteria would be automatically corrected in some cases and in others diagnosed for manual debugging. \n\nVALIDATION BETWEEN QUESTIONNAIRES\nThe validation processing stage between questionnaires had as objective that the information was consistent in a grouped way. For this, an analysis was carried out between different groups defined according to the main activity or the size of the production unit, etc.; such as, for example: corn production units or livestock production units with an affinity for some species, with this it was possible to detect records that showed different behavior in certain variables with respect to the group to which they belong. This was done by applying statistical tools to grouped data such as multivariate and univariate analysis. For the univariate analysis, the intervals between which the data of these variables could fluctuate without departing from the average behavior of the others were statistically defined. The intervals were used to detect all those production units that recorded atypical data when leaving the delimited fluctuation, that is, all those data whose dimension was higher or lower than what is recorded by the predetermined average behavior of the others. On the other hand, for the multivariate analysis, the variables that were correlated and dependent on each other were defined; Based on this, the production units with atypicalities in the grouped behavior of said variables were detected.\n\nThe validation between questionnaires was carried out by having all the questionnaires coded and standardized. This stage was developed at the same time as the validation within the questionnaires, as the entire base was standardized, and continued until the end of the processing. In the cases that were inconsistent, a report was prepared to analyze their automatic or manual debugging if necessary.\n\nDuring the internal validation stages and between questionnaires, a re-consultation system was available, which allowed an exchange of information to be carried out between the central and state levels, in relation to the cases reported as inconsistent so that they could be analyzed by the state. and if it was considered necessary to reconsult them in the field directly with the informant, to ratify the data or apply adjustments to them.\n\nCOMPARISON WITH INTERNAL AND EXTERNAL SOURCES\nIn order to guarantee the quality of the information captured by the ENA 2019, it was important to carry out a comparison of information with that generated by other sources, both internal and from institutions related to the Agricultural Sector. The sources of consultation used were the following:\n\nINTERNAL SOURCES: information from the 2007 census and 2012, 2014 and 2017 Agricultural Surveys.\n\nEXTERNAL SOURCES: information from SIAP-SADER, SEMARNAT, CONAGUA, RAN, etc.\n\nThe aforementioned confrontation was carried out at two levels, national and state, based on the priority given to certain variables, such as: area, crops, production, yields, cattle head inventories, etc.\n\nFor the above, it was necessary to have the diagnostic or preliminary tabulations, which would allow carrying out the corresponding analysis in terms of corroborating the expanded sample figures, as well as carrying out re-consultations with the producers, in order to determine if the information was correct. or the pertinent adjustments had to be made and, in the last case, the corresponding justification should be made.\n\nFinally, this activity made it possible to detect similarities and\/or differences in the expanded statistical data, or to determine if these differences were due to conceptual or operational aspects.","method_notes":"The organizational structure of INEGI is oriented towards the development of regulations at the central level and to delegate the execution of statistical programs at the regional and state levels.\n\nThe sample for ENA 2019 was obtained from the universe of production units resulting from the Update of the 2016 Agricultural Census Framework and ENA 2017. The information was collected with an operational structure made up of Interviewers (ENT) and Interviewer Supervisors. (SENT).\n\nThe planning constituted a basic process, since it allowed calculating the staff of operational and control personnel necessary for the collection of information; as well as defining and equitably distributing the workloads through the conformation of geographical areas of responsibility, in this way the necessary material resources were determined and for the purposes of establishing an adequate organization of work and optimizing the control of the field operation.\n\nThe general planning of the field operation was based on the calculation of human resources necessary to satisfy the needs of the Survey, the operational planning was defined based on the size of the sample and the dispersion of the localities where the domicile of the producers was located. , accessibility, average identification time, total land and conformation of the Production Unit; In addition, other variables are considered, such as the number of days of the field operation and the average number of questionnaires per day that the Interviewer would apply; With these elements, the loads and work areas were defined, which determined the number of Interviewer\nIn the first planning phase, the universe of locations to be surveyed was indicated and the factors and criteria considered in the planning system for calculating the fraction of Interviewers and Interviewers Supervisors required by location are described.\n\nIn the second planning phase, the criteria and guidelines for the formation of the Interviewers and Interviewers Supervisor Areas were detailed, which were described in the reports generated by the system for the assignment of workloads of these figures.\n\nAdditionally, a reinforcement session was held in the field, with the purpose of providing feedback to the staff regarding possible inconsistencies. The session consisted of the application of the question: \u201cHow many lands do I manage in this municipality?\u201d, if the number that was stated was equal to the one that was registered, the application of the questionnaire continued; If the number did not match, only the amount of land that the informant claimed to own was noted.\n\nFinally, progress reports were prepared, generated with information stored in the DCM and transferred to the Management System for Control and Monitoring of Operational Processes (SACSPO) via the Web, with the purpose of maintaining control over the degree of progress of the activities developed in each area of \u200b\u200bresponsibility in the entities and accordingly, draw up the pertinent measures in those cases in which they were considered necessary.\n\nThe organizational structure of ENA 2019 was defined, depending on the workloads, as follows:\nControl Chief (JC)\nResponsible for planning the operation, coordinating, advising, supervising and supporting the tasks carried out by the personnel under his charge, monitoring and resolving situations in accordance with the guidelines that have been established, in order to ensure planning, training, monitoring control of the operation, as well as the requirement of financial and material resources. In addition, it carries out the coordination of support, dissemination of the project with municipal authorities and local leaders for its development; and, the hiring of operational personnel participating in the survey.\n\nInformatic support\nHe is in charge of the system administrator for the operation of mobile computing devices, he is in charge of advising and supporting the NCDs, for sending DCM information through the Web; It also provides advice to staff on the use and management of the device, upon request from the JC.\nLastly, he was in charge of generating follow-up reports for the weekly meetings or when they were required by the JC.\n\nAgricultural Instructor (IA)\nHe was in charge of providing training to operational personnel such as: SENT, ENT, AI, Zone Administrative Assistant (AA), he also trained the personnel hired to replace vacancies due to resignations of operational personnel. The IA carries out supervision activities of the field operation, that is, the SENT and the ENT; In addition, it supports the JC in the activities it carries out in the event that it so requests.\nInformation Analyst (AI)\nAmong the activities carried out was to review and analyze the analysis reports with possible inconsistencies generated by the automated Monitoring and Validation systems, which make the JC aware, in the case of information inconsistencies to which a solution was given both both in the field and in the office, they must be registered in the Reconsultation Module, until corroborating that when they returned they contained the correct information, which is why communication with the Reconsultation System was direct.\n\nInterviewer Supervisor (SENT)\nResponsible for supervising that the TNCs carry out recruitment activities properly. Delivers the DCM loaded with the ENA 2019 Information Capture System. Provides the necessary materials (control, support, auxiliary and office) for the performance of the activities. Assign the initial charge. Together with the NCDs, it establishes the weekly schedule of visits to producers. Advise and support in solving the problem. Supervises the correct capture of information from the selected production units (UP). Review the progress of the operation based on the analysis of the follow-up reports. Verifies that information is sent through the Web in a complete and timely manner.\n\nInterviewer (ENT)\nIn charge of capturing, through a direct interview, the information from the observation units assigned in their area of \u200b\u200bresponsibility, based on the planning and strategy stipulated in the interviewer's manual for the generation of survey information."},"analysis_info":{"response_rate":"The response rate for the different types of domains such as: national level (product), state product-federal entity, product-federative entity-size of production unit per area of \u200b\u200blarge producers; for livestock products in the domain of large, medium and small producers; The calculation was performed independently for each domain, taking a confidence level of 95%, a relative error of 9% and an Expected Non-Response Rate (NRR) of 30%, using the expression in stratified sampling. to estimate a total.\n\nFor the product-federative entity-size of production unit per surface area of \u200b\u200bthe domain of small and medium-sized producers, taking a confidence level of 95%, a relative error of 12%, a proportion of 50% and TNR of 15%, using the use of the expression in stratified sampling to estimate a proportion."}},"data_access":{"dataset_use":{"conf_dec":[{"txt":"Conforme  a  las  disposiciones  de  la  Ley  del  Sistema  Nacional de Informaci\u00f3n Estad\u00edstica y Geogr\u00e1fica en vigor:\n\nART\u00cdCULO 37.- \"Los datos que proporcionen para fines estad\u00edsticos los Informantes del Sistema a las Unidades en t\u00e9rminos de la presente Ley, ser\u00e1n estrictamente confidenciales y bajo ninguna circunstancia podr\u00e1n utilizarse para otro fin que no sea el estad\u00edstico.\nEl Instituto no deber\u00e1 proporcionar a persona alguna, los datos a que se refiere este art\u00edculo para fines fiscales, judiciales, administrativos o de cualquier otra \u00edndole.\"\n\nART\u00cdCULO 38.- \"Los datos e informes que los Informantes del Sistema proporcionen para fines estad\u00edsticos y que provengan de registros administrativos, ser\u00e1n manejados observando los principios de confidencialidad y reserva, por lo que no podr\u00e1n divulgarse en ning\u00fan caso en forma nominativa o individualizada, ni har\u00e1n prueba ante autoridad judicial o administrativa, incluyendo la fiscal, en juicio o fuera de \u00e9l.\nCuando se deba divulgar la informaci\u00f3n a que se refiere el p\u00e1rrafo anterior, \u00e9sta deber\u00e1 estar agregada de tal manera que no se pueda identificar a los Informantes del Sistema y, en general, a las personas f\u00edsicas o morales objeto de la informaci\u00f3n.\nEl Instituto expedir\u00e1 las normas que aseguren la correcta difusi\u00f3n y el acceso del p\u00fablico a la Informaci\u00f3n, con apego a lo dispuesto en este art\u00edculo\".\n\nART\u00cdCULO 45.- \"Los Informantes del Sistema estar\u00e1n obligados a proporcionar, con veracidad y oportunidad, los datos e informes que les soliciten las autoridades competentes para fines estad\u00edsticos, censales y geogr\u00e1ficos, y prestar\u00e1n apoyo a las mismas.\nLa participaci\u00f3n y colaboraci\u00f3n de los habitantes de la Rep\u00fablica en el levantamiento de los censos, ser\u00e1 obligatoria y gratuita en los t\u00e9rminos se\u00f1alados en el art\u00edculo 5o. de la Constituci\u00f3n Pol\u00edtica de los Estados Unidos Mexicanos.\nLos propietarios, poseedores o usufructuarios de predios ubicados en el territorio nacional, prestar\u00e1n apoyo en los trabajos de campo que realicen las autoridades para captar Informaci\u00f3n.\"\n\nART\u00cdCULO 47.- \"Los datos que proporcionen los Informantes del Sistema, ser\u00e1n confidenciales en t\u00e9rminos de esta Ley y de las reglas generales que conforme a ella dicte el Instituto.\nLa Informaci\u00f3n no queda sujeta a la Ley Federal de Transparencia y Acceso a la Informaci\u00f3n P\u00fablica Gubernamental, sino que se dar\u00e1 a conocer y se conservar\u00e1 en los t\u00e9rminos previstos en la presente Ley.\nSin perjuicio de lo se\u00f1alado en el p\u00e1rrafo anterior, el Instituto, respecto de la informaci\u00f3n correspondiente a su gesti\u00f3n administrativa, quedar\u00e1 sujeto a lo dispuesto en la Ley Federal de\nTransparencia y Acceso a la Informaci\u00f3n P\u00fablica Gubernamental.\"","required":"yes","form_no":"","uri":""}],"contact":[{"name":"INEGI","affiliation":"Organismo Aut\u00f3nomo del Gobierno Federal","email":"atencion.usuarios@inegi.org.mx","uri":"www.inegi.org.mx"}],"cit_req":"INEGI. Encuesta Nacional Agropecuaria 2019.","conditions":"There is no access to microdata publicly or by agreement. However, INEGI provides several ways to access the microdata, as well as the descriptor file that provides the necessary information for the management of the databases, through the following link:\n\nhttps:\/\/www.inegi.org.mx\/datos\/default.html#Microdatos","disclaimer":"NOTICE TO THE USER\n\nBy using the information from the National Institute of Statistics and Geography (INEGI), you expressly accept the following:\n\nFREE USE TERMS OF INEGI INFORMATION\n\n1. The user:\n\na) You can make and distribute copies of the information, without altering or deleting its metadata.\n\nb) You can disseminate and publish the information.\n\nc) You can adapt and rearrange the information.\n\nd) You can extract all or part of the information.\n\ne) You can commercially exploit the information, using it as an input to generate other products or services.\n\nf) You must grant the corresponding credits to INEGI as author, and when technically possible, mention the source of the information extraction as follows: \"Source: INEGI, name of the product from which the information is extracted\" and, where appropriate. update date, example: \"Source: INEGI, ENA 2017\".\n\ng) You must not use the information in order to deceive or confuse the population, changing its original meaning and its veracity.\n\nh) It must not appear that the use made of the information represents an official position of INEGI or that it is endorsed, integrated, sponsored or supported by the source of origin.\n\n2. INEGI will not be responsible for the interpretation and application that the user makes of the results obtained through the use of the information; therefore, any decision based on its interpretation excludes INEGI from any responsibility. Likewise, INEGI will not be responsible for the differences obtained due to precisions, rounding or numerical truncation, as well as for technical or technological changes that may affect such results.\n\n3. The validity of these Terms of Free Use is for an indefinite period provided that the previous provisions are not contravened.\n\n4. The unauthorized use in contravention of these Terms of Free Use, may be penalized in accordance with the applicable current legislation.\n\n5. These Terms of Free Use are governed by the Law of the National System of Statistical and Geographic Information, as well as by the applicable regulations in the matter, in case of controversy, the user expressly agrees to submit to the jurisdiction and competence of the Federal Courts of Mexico City, Federal District, waiving the jurisdiction that may correspond to him by reason of present or future domicile or any other cause.\n\n6. INEGI reserves the right to modify these Terms of Free Use at any time."}}},"schematype":"survey"}