Presentation is loading. Please wait.

Presentation is loading. Please wait.

Impact of using fiscal data on the imputation strategy of the Unified Enterprise Survey of Statistics Canada Ryan Chepita, Yi Li, Jean-Sébastien Provençal,

Similar presentations


Presentation on theme: "Impact of using fiscal data on the imputation strategy of the Unified Enterprise Survey of Statistics Canada Ryan Chepita, Yi Li, Jean-Sébastien Provençal,"— Presentation transcript:

1 Impact of using fiscal data on the imputation strategy of the Unified Enterprise Survey of Statistics Canada Ryan Chepita, Yi Li, Jean-Sébastien Provençal, Chi Wai Yeung Statistics Canada ICES III, Montréal, June 2007

2 Goals To illustrate the challenges of applying a centralized E and I strategy to a broad range of industrial sectors To discuss the changes put in place due to the increasing use of fiscal data To discuss one approach used to quantify the overall E and I effect

3 Outline Overview of the Unified Enterprise Survey (UES) Survey content Imputation strategy Use of fiscal data Challenges Diagnostic tool Conclusion

4 Overview of the UES Annual business survey Initiated with 7 industries in 1997 Presently integrates over 40 industries covering the major sectors of the economy –950K establishments in the population –127K establishments in the sample

5 Overview of the UES Stratified sampling design –NAICS, province, and size in terms of revenue Data collection –Mail out survey, fax and phone follow-up Edit and Imputation Estimation –H.-T. for totals and provincial and industrial breakdowns

6 Survey content 2 or 3 Key variables –Total revenue and total expenses –Similar concepts from one industry to another A lot of details (over 50 variables) –Totals breakdowns –By province, type of expenses or source of revenue –Industry specific Can be revised from year to year

7 Survey content Example : manufacturing sector VARIABLES Sales oth. Goods and serv. produced Total sales of goods purch for resale Amount received for custom work Amount received for repair work Stumpage sales Total sales of goods and services produced Sales of logs and wood residue Total sales Key Details

8 Imputation Strategy Categories of non-response –Category 1: Partial response with at least 1 key variable reported –Category 2: Total non-response with historical data –Category 3: Total non-response without historical data

9 Imputation Strategy Historical data for some records –Records sampled the year before –Same questionnaire Administrative data for all records –Stratification information –NAICS, province, size in terms of revenue

10 Imputation Strategy Type 1 and type 2 non-response Missing key variables –Historical Trend –Ratio using current survey information Missing details –Historical distribution –Distribution from all respondent within a homogeneous group –Distribution from a single donor

11 Imputation Strategy Type 3 non-response Donor imputation Closest neighbour based on administrative data

12 Use of fiscal data Use fiscal data as a proxy value for total non- response Use fiscal data as a proxy value for simple units randomly selected at the sampling stage Use to update the initial size in terms of revenue Number of survey variables for which we use fiscal data as proxy range from 7 to 25

13 Challenges Conceptual differences – Questionnaire content review Variables for which there is no proxy value on the fiscal data base –Modeling Industry specific needs –Tailored strategy

14 Challenges Monitoring the effect –Creation of a distinct path for records where we used fiscal data (category 4 of non-response) –Creation of a diagnostic tool

15 Diagnostic tool Identification section –Industry, province, variable description Weighted sums, share and percentages by category of non-response Share60%10% 20%100% Variable XResp.Cat.2Cat.3Cat.4Total Sums30M5M 10M50M Percentages20% 25%18%20% Variable Y (Total) 150M 25M 20M 55M 250M

16 Conclusion Centralized E and I strategy vs industry specific needs Diagnostic tool Modeling

17 Thank you! Questions?


Download ppt "Impact of using fiscal data on the imputation strategy of the Unified Enterprise Survey of Statistics Canada Ryan Chepita, Yi Li, Jean-Sébastien Provençal,"

Similar presentations


Ads by Google