How Much Data is Enough? A Statistical Approach with Case Study on Longitudinal Driving Behavior
June 23, 2017 ยท Declared Dead ยท ๐ IEEE Transactions on Intelligent Vehicles
"No code URL or promise found in abstract"
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Authors
Wenshuo Wang, Chang Liu, Ding Zhao
arXiv ID
1706.07637
Category
cs.LG: Machine Learning
Citations
85
Venue
IEEE Transactions on Intelligent Vehicles
Last Checked
4 months ago
Abstract
Big data has shown its uniquely powerful ability to reveal, model, and understand driver behaviors. The amount of data affects the experiment cost and conclusions in the analysis. Insufficient data may lead to inaccurate models while excessive data waste resources. For projects that cost millions of dollars, it is critical to determine the right amount of data needed. However, how to decide the appropriate amount has not been fully studied in the realm of driver behaviors. This paper systematically investigates this issue to estimate how much naturalistic driving data (NDD) is needed for understanding driver behaviors from a statistical point of view. A general assessment method is proposed using a Gaussian kernel density estimation to catch the underlying characteristics of driver behaviors. We then apply the Kullback-Liebler divergence method to measure the similarity between density functions with differing amounts of NDD. A max-minimum approach is used to compute the appropriate amount of NDD. To validate our proposed method, we investigated the car-following case using NDD collected from the University of Michigan Safety Pilot Model Deployment (SPMD) program. We demonstrate that from a statistical perspective, the proposed approach can provide an appropriate amount of NDD capable of capturing most features of the normal car-following behavior, which is consistent with the experiment settings in many literatures.
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