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Main Authors: Yousif, Yasin, Müller, Jörg
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2402.03457
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author Yousif, Yasin
Müller, Jörg
author_facet Yousif, Yasin
Müller, Jörg
contents Developing accurate models for traffic trajectory predictions is crucial for achieving fully autonomous driving. Various deep neural network models have been employed to address this challenge, but their black-box nature hinders transparency and debugging capabilities in a deployed system. Glass-box models offer a solution by providing full interpretability through methods like \ac{GAM}. In this study, we evaluate an efficient additive model called \ac{EBM} for traffic prediction on three popular mixed traffic datasets: \ac{SDD}, \ac{InD}, and Argoverse. Our results show that the \ac{EBM} models perform competitively in predicting pedestrian destinations within \ac{SDD} and \ac{InD} while providing modest predictions for vehicle-dominant Argoverse dataset. Additionally, our transparent trained models allow us to analyse feature importance and interactions, as well as provide qualitative examples of predictions explanation. The full training code will be made public upon publication.
format Preprint
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institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Efficient and Interpretable Traffic Destination Prediction using Explainable Boosting Machines
Yousif, Yasin
Müller, Jörg
Machine Learning
Artificial Intelligence
Developing accurate models for traffic trajectory predictions is crucial for achieving fully autonomous driving. Various deep neural network models have been employed to address this challenge, but their black-box nature hinders transparency and debugging capabilities in a deployed system. Glass-box models offer a solution by providing full interpretability through methods like \ac{GAM}. In this study, we evaluate an efficient additive model called \ac{EBM} for traffic prediction on three popular mixed traffic datasets: \ac{SDD}, \ac{InD}, and Argoverse. Our results show that the \ac{EBM} models perform competitively in predicting pedestrian destinations within \ac{SDD} and \ac{InD} while providing modest predictions for vehicle-dominant Argoverse dataset. Additionally, our transparent trained models allow us to analyse feature importance and interactions, as well as provide qualitative examples of predictions explanation. The full training code will be made public upon publication.
title Efficient and Interpretable Traffic Destination Prediction using Explainable Boosting Machines
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2402.03457