Dissemination and interpretation of time use data Social and Housing Statistics Section United...

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Dissemination and interpretation of time use data

Social and Housing Statistics SectionUnited Nations Statistics Division

Time Use Statistics workshop for Arabic speaking countries, Amman,25-28 April 2011

Dissemination and interpretation of time use data

Stiglitz commission on the Measurement of Economic Performance and Social progress

Aim 1: Identify the limits of GDP as an indicator of economic performance and social progress

Aim 2: Consider additional information required for the production of a more relevant picture

Dissemination and interpretation of time use data

The 2008 report recommends to take into consideration unpaid activities and more precisely “household production”

Revival of interest for Time use surveys beyond the traditional concern about labor-leisure tradeoff

Time use survey for use in public policy to deal with a large range of social issues (quality of life, gender, work…)

Dissemination and interpretations stages are crucial because they are not regular surveys

Dissemination and interpretation of time use data

1) Modes of dissemination

2) Issues in dissemination of time use data

3) Examples of processing and interpreting time use data

Some key lay-outs from a study carried out based on last French time use survey

Modes of dissemination

Up to the statistical office to assess the suitability of the differing modes of dissemination

• Microdata• Macrodata• Metadata

Suitable combinations of formats and media which meet the differing capabilities of users

Ex: Eurostat

Disclosure control

Disclosure control =measures taken to protect statistical data in such a way as not to violate confidentiality requirements as prescribed or legislated

• Suppression of cells values on the basis of a “sensitivity”criterion

• Table redesign

• Perturbing data through the addition of noise

Examples of processing and interpreting

Introduce a study carried out with some other former colleagues of INSEE

Bringing out how poor people use their time in France: context of “Inactivity Trap”

Not an exhaustive overview of what can be done but examples of different ways of exploiting time use data

Examples of processing and interpreting

• Descriptive statistics

• Timing diagrams

• Econometrics tools

• Optimal matching

Examples of processing and interpreting

• Descriptive statistics

• Timing diagrams

• Econometrics tools

• Optimal matching

Descriptive statistics

At the first stage, the statistician can lay out descriptive statistics:

• On the fact of practicing or not one or some activities

• On the duration of practicing one or some activities

Descriptive statistics

Examples of processing and interpreting

• Descriptive statistics

• Timing diagrams

• Econometrics tools

• Optimal matching

Timing diagrams

People might be interested in having a dynamic perspective

For that, the statistician can set up timing diagrams

Timing diagrams represent the proportion of people practicing an activity for each hour around the clock

Timing diagrams

Examples of processing and interpreting

• Descriptive statistics

• Timing diagrams

• Econometrics tools

• Optimal matching

Econometric tools

Descriptive statistics are not sufficient if you want to work “all else equal”

Given the complexity of time use survey sampling, it is sometimes required to investigate more complicated modeling. The sampling and the social inquiries often induce biases

Econometric tools In our study, regression of duration of practicing an

activity on the poverty status by OLS. However the estimations are biased

Time dedicated to an activity available providing that the respondent did practice it on the sampled day

Actually, the duration of practicing an activity is a censored variable

Tobit model

Econometric tools

• 2nd equation (D): fact of practicing or not a specific activity

• 1st equation (Yi): duration of practicing this activity• Instrument variable

Econometric tools

Examples of processing and interpreting

• Descriptive statistics

• Timing diagrams

• Econometrics tools

• Optimal matching

Optimal matching

• Comparing sequences of activities between all the respondents

• Coming up with homogeneous groups which share similarities in their use of time and representing their “typical” daily schedule

• 2 stages

1st stage

• Computes a distance between every two sequences.

• All the possibilities to convert a sequence to the other via three operations: suppression, substitution or insertion

• Each operation is associated with a cost

• Ends up selecting the minimum general cost as the distance

2nd stage

• Classification of the sequences: the statistician has to choose the most relevant number of groups to describe the heterogeneity of the population.

Graphics

Conclusion

Crucial topic: should be considered as much as collecting and coding stages

TUS are a rich and vast source of data

But underexploited in general

While they are costly