Feed Grain Purchases Survey
Detailed information for August 1, 2019 to July 31, 2020
2 times per year
The purpose of this survey is to address a data gap in the Western provinces regarding the quantity and value of feed grain deliveries.
Data release - These data are released internally to Statistics Canada for other surveys or statistical programs to use as part of their data sources.
The survey data are used to update the quantities and values of feed grain deliveries. Data on quantities are used to provide better estimates of unlicensed grain deliveries in farm supply and disposition tables, which in turn improve the quality of the estimates of crop production and farm stocks. Values are subsequently used to ensure more accurate published farm cash receipts. In addition, the data are used in the Canadian System of National Accounts to calculate gross domestic product.
The information provided may also be used by Statistics Canada for other statistical and research purposes.
The survey is administered as part of the Integrated Business Statistics Program (IBSP). The IBSP has been designed to integrate approximately 200 separate business surveys into a single master survey program. The IBSP aims at collecting industry and product detail at the provincial level while minimizing overlap between different survey questionnaires. The redesigned business survey questionnaires have a consistent look, structure and content.
The integrated approach makes reporting easier for firms operating in different industries because they can provide similar information for each branch operation. This way they avoid having to respond to questionnaires that differ for each industry in terms of format, wording and even concepts. The combined results produce more coherent and accurate statistics on the economy.
Reference period: August 1 to December 31 (to the end of the calendar year) and August 1 to July 31 (to the end of the crop year)
Collection period: Twice a year at the end of the crop year (July 31st) and the calendar year (December 31st).
- Crops and horticulture
Data sources and methodology
The target population consists of feed mills in Western Canada that buy grain directly from farmers or from grain dealers.
This is a census of all known Western Canadian feed mills, as determined by the Animal Nutrition Association of Canada. It excludes feed lots. The total sample size for this survey is approximately 35-40 units.
The electronic questionnaire was designed by Statistics Canada as part of the Integrated Business Statistics Program. This program incorporates business surveys into a single framework, using questionnaires with a consistent look, structure and content.
The questionnaire content was developed by subject matter specialists through consultation with industry experts.
The questionnaire asks for the crop year to-date quantities of feed grains purchased from farmers and grain dealers by grain. The data are requested for grains originating from individual Western provinces, from the total Eastern provinces, from other countries and in total.
This survey is a census with a cross-sectional design.
Data are collected for all units of the target population, therefore no sampling is done.
Responding to this survey is mandatory.
Data are collected directly from survey respondents.
Respondents are contacted by email or letter and given an access code for the electronic questionnaire for the survey, which can be responded to in either official language. Non-response follow-up is conducted via telephone.
The survey, on average, takes respondents 15 minutes to complete.
View the Questionnaire(s) and reporting guide(s) .
Error detection is an integral part of both collection and data processing activities. Edits are applied to data records during processing to identify reporting and capture errors. These edits identify potential errors based on year-over-year changes in key variables, and totals, as well as identify problems in the consistency of collected data (e.g. a total variable does not equal the sum of its parts). During data processing, other edits are used to automatically detect errors or inconsistencies that remain in the data following collection. These edits include value edits (e.g. Value > 0, Value > -500, Value = 0), linear equality edits (e.g. Value1 + Value2 = Total Value), linear inequality edits (e.g. Value1 >= Value2), and equivalency edits (e.g. Value1 = Value2). When errors are found, they can be corrected with manual corrections during collection. Manual review of other units may lead to the identification of outliers. These outliers are excluded from use in the calculation of ratios and trends used for imputation. In general, every effort is made to minimize the non-sampling errors of omission, duplication, misclassification, reporting and processing.
The data reported by each company are verified by comparison to previous reports, by comparing trends between companies, by analysis of the availability of feed in relation to the number of livestock, and by monitoring of industry trends.
When non-response occurs, or when respondents do not completely answer the questionnaire, imputation is used to fill in the missing information. Many methods of imputation may be used to complete a questionnaire, including manual changes made by an analyst. The automated statistical techniques used to impute the missing data include: deterministic imputation, as well as replacement using historical data (with a trend calculated, when appropriate). Usually, key variables are imputed first and are used as anchors in subsequent steps to impute other, related variables. Imputation generates a complete and coherent micro data file that covers all survey variables.
All units in the observed population are being surveyed. Estimation of totals is done by simple aggregation of the values of all estimation units that are found in the domain of estimation. Estimates are computed for domains of estimation such as provinces, based on the most recent classification information available for the estimation unit and the survey reference period.
Prior to the data release, combined survey results are analyzed for comparability; in general, this includes a detailed review of: individual responses (especially for the largest companies), general economic conditions, coherence with results from related economic indicators, historical trends, and information from other external sources (e.g. associations, trade publications, newspaper articles).
Supply and disposition trends, used by government and industry stakeholders, help to confirm the results of the survey. Where anomalies occur they are resolved through analysis at the end of the crop year.
Statistics Canada is prohibited by law from releasing any information it collects which could identify any person, business, or organization, unless consent has been given by the respondent or as permitted by the Statistics Act. Various confidentiality rules are applied to all data that are released or published to prevent the publication or disclosure of any information deemed confidential. If necessary, data are suppressed to prevent direct or residual disclosure of identifiable data.
Revisions and seasonal adjustment
There is no seasonal adjustment. Data from previous years may be revised based on updated information. The survey data are not benchmarked.
This survey is a census of all units in the observed population and is not subject to sampling error. While considerable effort is made to ensure high standards throughout all stages of collection and processing, the resulting estimates are inevitably subject to a certain degree of non-sampling error. Non-sampling error is not related to sampling and may occur for various reasons during the collection and processing of data. To the maximum extent possible, these errors are minimized through careful design of the survey questionnaire, verification of the survey data, and follow-up with non-respondents when needed to maximize response rates. Non-sampling error includes coverage error, data response error, non-response error and processing error.
Coverage errors consist of omissions, erroneous inclusions, duplications and misclassification of units in the survey frame. The Business Register (BR) is the common frame for all surveys using the IBSP model. The BR is a data service centre updated through a number of sources including administrative data files, feedback received from conducting Statistics Canada business surveys, and profiling activities including direct contact with companies to obtain information about their operations and Internet research findings. Using the BR helps ensure quality, while avoiding overlap between surveys and minimizing response burden to the greatest extent possible.
A registry of feed mills in Western Canada is provided annually to Statistics Canada by the Animal Nutrition Association of Canada. This registry is used to update the survey frame, as well as company information in the BR. Since relatively few companies make up the majority of feed purchases, the effect of not including every small mill in the survey is considered to be negligible.
Data response error may be due to questionnaire design, the characteristics of a question, inability or unwillingness of the respondent to provide correct information, misinterpretation of the questions or definitional problems. These errors are controlled through careful questionnaire design and the use of simple concepts and consistency checks.
Non-response error is related to respondents that may refuse to answer, are unable to respond or are too late in reporting. In these cases, data are imputed. This is considered to be the most likely source of error for this survey. When non-response occurs, it is taken into account and the quality of data is reduced based on its importance to the estimate. Efforts are made to obtain as high a response rate as possible while minimizing the response burden. The response rate for this survey is approximately 80%.
Processing error may occur at various stages of processing such as during data entry and tabulation. To the maximum extent possible, these errors are minimized through careful design of the survey questionnaire, verification of the survey data, and follow-up with respondents when needed. Edits are applied to data records during collection to prevent the entry of outliers or inconsistent information by respondents. Data analysis tools within the IBSP permit subject matter analysts to quickly detect apparent anomalies. As such, processing errors are considered to be minimal.