
Reducing high-frequency time series data in driving studies
Author(s) -
Jeffrey D. Dawson,
Amy O’Shea,
Joyee Ghosh
Publication year - 2019
Language(s) - English
Resource type - Conference proceedings
DOI - 10.52041/srap.19201
Subject(s) - computer science , offset (computer science) , position (finance) , series (stratigraphy) , time series , post hoc , machine learning , medicine , paleontology , dentistry , finance , economics , biology , programming language
Driving behavior studies often capture electronic measures at 1-30 Hz for long intervals. It is important to find stochastic models that describe such data, with parameters that can be interpreted and accurately estimated. In this report, we review a family of models that are useful in describing the lateral position of a vehicle in a simulator. These models consist of “projection” and “signed error” pieces, with the latter containing a parameter representing the tendency for drivers to return the vehicles to a central position. We use ad hoc and likelihood-based methods to fit these models, but these all result in biased estimates. Fortunately, in two-group studies, simulations suggest that such biases may offset each other and hence that two-group comparisons may have acceptable accuracy. If we can resolve the bias issue, electronic data from a vehicle might be useful in predicting future errors and crashes.