Weighting Household Surveys By David F. Pearson, Ph.D., P.E. April 2007.

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Presentation transcript:

Weighting Household Surveys By David F. Pearson, Ph.D., P.E. April 2007

Household Surveys in Texas  Small sample  Stratified by household size and income  Telephone recruitment and data retrieval

Sampling Plan  Samples not proportional to population household distribution  Plan uses population household distribution and expected trip making  Survey samples weighted for results to represent population

Household Weight  Based on surveyed households and estimated population of households  Computed for each cell in stratification matrix

Household Weight Example 4,297 is household population of Size 1 with annual income between 0 and $9, is number of households surveyed of Size 1 with annual income between 0 and $9, is weight given to each household surveyed 2003 Smith County Household Weight Factors

Use of Weights - Examples  Estimate population  Estimate number of trips by purpose  Estimate TLFDs by trip purpose  Estimate vehicle availability distribution

Use of Weights - Examples  Estimate employment, including self- employed individuals  Develop household trip rates for use in TDMs  Estimate persons by age and sex, including person trip rates

Results Dilemma  Population estimates did not agree with expected values  Population estimates by age and sex did not agree with expected values  Employed persons were significantly different than estimates from other sources Concern – Potential bias

Revised Approach  Develop additional weight based on results from household weights  Apply additional weight only to person variables

Revised Approach Steps  Estimate number of persons by age cohort and gender using household weights  Compute person factor based on population of persons by age cohort and gender

Calculating Person Weight Factor i-age cohort, e.g., 40-to-44 years of age j-gender, e.g., male or female PW-person weight factor POP-population, i.e., number of persons EST-estimate of number of persons from applying household factor

How It Works  Household variables weighted using household factor Examples of these variables include: - Number of vehicles available - Household income - Number of bicycles available - Household length of residence

How It Works  Person variables weighted using household AND person factor Examples of these variables include: - Person trips - Persons licensed to drive - Persons employed (including occupation and industry) occupation and industry) - Student status - Days worked at home

Area Characteristics

Distribution of Persons by Age

Person Trips per Person by Age

Distribution of Persons by Age

Person Trips per Person by Age

Comparison of Estimates Smith County

Comparison of Estimates Hidalgo County

Comparison of Trip Estimates Smith County

Comparison of Trip Estimates Hidalgo County

Employment Estimate Comparisons

Findings  Use of two-stage weighting procedure – Improves estimates of HBW travel – Improves estimates of employed persons in area

Questions