Representativity Indicators for Survey Quality - PowerPoint PPT Presentation

1 / 11
About This Presentation
Title:

Representativity Indicators for Survey Quality

Description:

... Quality. Programme: Cooperation. Theme: Socio-economic sciences and Humanities. Activity: Socio-economic and scientific indicators ... – PowerPoint PPT presentation

Number of Views:62
Avg rating:3.0/5.0
Slides: 12
Provided by: NS65
Category:

less

Transcript and Presenter's Notes

Title: Representativity Indicators for Survey Quality


1
  • Representativity Indicators for Survey Quality
  • Programme Cooperation
  • Theme Socio-economic sciences and Humanities
  • Activity Socio-economic and scientific
    indicators
  • Area Provision for underlying official
    statistics
  • Costs 827,000
  • Length 28 months (from 1-3-2008 to 30-06-2010)

2
Is the response rate a good quality indicator?
3
Is more response always better?
  • The accuracy of survey estimates is determined by
    the precision (variance) and the bias of
    estimators.
  • A higher response rate is only better if the bias
    is smaller. This is not always the case!
  • Integrated Survey on Household Living Conditions
    1998
  • The composition of the sample deteriorated in
    month 2.

4
Is more response always better?
  • Other examples
  • The composition of the response deteriorates
    after a call-back survey among non-respondents.
  • The composition of the response may deteriorate
    if incentives are used to increase response.

5
There is a need for better quality indicators
  • Such quality indicators should reflect how well
    the composition of the survey response reflects
    the population (or complete sample).
  • The RISQ project intends to develop and test such
    indicators.
  • These indicators will be called R-indicators
    (short for Representativity Indicators).
  • Such indicators should be comparable over space
    (countries, regions) and time.
  • They should be useful in the data collection
    phase and the analysis phase of the survey.
  • They should also be useful for processing
    register data.
  • They should not depend on the survey variables.

6
An example of an R-indicator
  • The bias (due to non-response) of the response
    mean is equal to
  • Y is the survey variable and ? is the response
    probability.
  • Cor(Y, ?) is the correlation between Y and ?.
  • S(Y) and S(?) are the standard deviations of Y
    and ?.
  • The bias vanishes if all response probabilities
    are equal. Then

7
An example of an R-indicator (continued)
  • Definition of an indicator
  • M(?) 1 All response probabilities are equal.
    The response is representative.
  • M(?) 0 Maximum possible deviation from
    representativity.
  • Computation of M(?)
  • Required auxiliary variables.
  • Fit logit (or other) model for response
    probabilities.
  • Estimate response probabilities.

8
Research issues
  • Development of R-indicators based on variance of
    response probabilities.
  • Development of R-indicators based on g-weights.
  • Analysis of dependency on sample size.
  • Analysis of dependency on auxiliary variables.
  • Estimation of response probabilities if only
    population distribution of auxiliary variables is
    available.
  • Development of partial R-indicators to identify
    groups at risk.
  • Use of paradata (fieldwork data) in response
    probability models.

9
An example of an R-indicator (continued)
  • Example Dutch Labour Force Survey.
  • Sample of non-respondents re-approached
    (call-back) with complete questionnaire.
  • Sample of non-respondents re-approached with
    small questionnaire (basic question approach).
  • The composition of the response improves more
    after the call-back approach.

10
The RISQ Project
  • Objectives of the project
  • Develop R-indicators based on variance of
    response probabilities and g-weights.
  • Determine statistical properties of indicators.
  • Develop tools to compute indicators.
  • Explore use for monitoring data collection.
  • Explore use for controlling data collection.
  • Explore use in correction (selection of weighting
    variables).
  • Explore use in analysis (space and time).
  • Test on real data sets (surveys and registers).
  • Social and economic surveys.

11
The RISQ Project
  • Project partners
  • Statistics Netherlands (Netherlands,
    co-ordinator)
  • University of Southampton (UK)
  • Statistics Norway (Norway)
  • University of Leuven (Belgium)
  • Statistical Office of the Republic of Slovenia
    (Slovenia)
  • Website
  • www.r-indicator.eu
Write a Comment
User Comments (0)
About PowerShow.com