Leveraging explainable artificial intelligence in understanding public transportation usage rates for sustainable development

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Date

2024

Authors

Gorkem Sariyer
Sachin Kumar Mangla
Mert Erkan Sozen
Guo Li
Yigit Kazancoglu

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Volume Title

Publisher

PERGAMON-ELSEVIER SCIENCE LTD

Open Access Color

Green Open Access

No

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No
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Top 10%
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Average
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Top 10%

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Abstract

Public transportation usage prediction is valuable for the sustainable development of transportation systems particularly in crowded megacities. Machine learning technologies are of great interest for predicting public transportation usage. While these technologies outperform many other techniques they suffer from limited interpretability. Explainable artificial intelligence (XAI) tools and techniques that offer post -hoc explanations of the obtained predictions are gaining popularity. This paper proposes an advanced tree-based ensemble algorithm for public transportation usage rate prediction. We aim to explain the predictions both with the most widely used technique of XAI Shapley additive explanation (SHAP) and in the light of the rules presented. To predict the total public transportation usage the proposed model combines all types of public transportation categorized as ferry railway and bus unlike most existing studies focusing on a single kind of public transport. Besides the sort of transportation the day of the week whether the day is special and the daily ratio of passenger types were identified as model features for predicting the daily usage of each type of public transportation. We tested the proposed model using an open data set from Izmir City Turkey. While the model had superior prediction performance the explanations showed that the type of public transportation weekday and the ratio of full-fare passengers have the highest SHAP values and the model features have many interactions. We also validated our results using an online data set showing Google search trends.

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Keywords

Public transportation usage, Machine learning, SHAP, XAI, Rule-based explanation, BUS PASSENGER FLOW, SYSTEM, SHAP, XAI, Public Transportation Usage, Rule-Based Explanation, Machine Learning

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OpenCitations Citation Count
6

Source

Omega

Volume

127

Issue

Start Page

103105

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Scopus : 11

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Mendeley Readers : 53

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