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Proceedings ArticleDOI

Effects of Clustering Feature Vectors on Bus Travel Time Prediction: A Case Study

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TLDR
In this article, the authors analyzed the use of different feature vectors for clustering and the effect on travel time predictions and showed that the prediction accuracy is highest when only travel times are used as a clustering feature vector.
Abstract
Improving the accuracy of travel time predictions depends on providing the correct inputs as well as the prediction algorithm used. Clustering algorithms can be used to identify the patterns in the data, which can improve the inputs to the prediction algorithm. The feature vectors used for clustering greatly affect the clusters formed and, ultimately, the prediction performance. Clustering being an unsupervised learning technique, the accuracy or correctness of the cluster formed can not be evaluated directly. A possible solution for this would be to link the problem with prediction accuracy and choose the feature vector combination with maximum prediction accuracy. The present study analyses the use of different feature vectors for clustering and the effect on travel time predictions. Here, three cases, namely, travel time alone, travel time along with features such as time of the day, section index, and day of the week as numerical features and as a mix of categorical and numerical feature vectors, are studied. The effects of using each of these cases as clustering feature vectors on travel time predictions are evaluated. It is observed that the prediction accuracy is the highest when only travel times are used as a clustering feature vector. The study demonstrates the importance of choosing the correct feature vectors for clustering and its effect on a final application, namely, travel time prediction.

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References
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Journal Article

Real-Time Bus Arrival Information Systems

TL;DR: The report describes the state of the practice, including both U.S. and international experience, as well as interviews with key personnel at agencies that have, or are in the process of, implementing real-time bus arrival information systems.
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Book ChapterDOI

A New Travel Time Prediction Method for Intelligent Transportation Systems

TL;DR: This paper proposes a new method to predict travel times using Naive Bayesian Classification (NBC) model and illustrates the practicability of applying NBC in travel time prediction and proves that NBC is suitable and performs well for traffic data analysis.
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Evaluation of Clustering Algorithms for the Prediction of Trends in Bus Travel Time

TL;DR: This study explores the use of data-driven approaches, primarily clustering, to address the challenges for the prediction of bus travel time trends in India by searching for similar cluster patterns within the historical database using pattern sequence-based forecasting (PSF).
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