Nonparametric identification of daily activity durations using kernel density estimators

Modeling of activity duration has become an important aspect in characterizing activity and travel patterns. The standard approach for analyzing activity duration is to use hazard-based models to account for the duration dependence within an activity while estimating covariate effects and heterogene...

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Bibliographic Details
Published inTransportation research. Part B: methodological Vol. 36; no. 1; pp. 59 - 82
Main Authors Kharoufeh, Jeffrey P., Goulias, Konstadinos G.
Format Journal Article
LanguageEnglish
Published Kidlington Elsevier Ltd 2002
Elsevier
SeriesTransportation Research Part B: Methodological
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Summary:Modeling of activity duration has become an important aspect in characterizing activity and travel patterns. The standard approach for analyzing activity duration is to use hazard-based models to account for the duration dependence within an activity while estimating covariate effects and heterogeneity. The effects of covariates and heterogeneity on duration have been modeled using parametric and nonparametric regression techniques. In this paper, we present a nonparametric pattern recognition approach that can precede hazard-based duration modeling to identify heterogeneity patterns that may undermine duration modeling if not detected. The technique utilizes a kernel estimate of the probability density function (pdf) of various activity durations and allows for statistical comparison of distributions to evaluate differences between groups of individuals. Preliminary testing on the first wave of a panel survey indicates that the approach is insightful in evaluating covariate effects while allowing visual inspection of heterogeneity in the data.
ISSN:0191-2615
1879-2367
DOI:10.1016/S0191-2615(00)00038-2