Electronic Proceedings in Theoretical Computer Science (Aug 2015)

Using a Machine Learning Approach to Implement and Evaluate Product Line Features

  • Davide Bacciu,
  • Stefania Gnesi,
  • Laura Semini

DOI
https://doi.org/10.4204/EPTCS.188.8
Journal volume & issue
Vol. 188, no. Proc. WWV 2015
pp. 75 – 83

Abstract

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Bike-sharing systems are a means of smart transportation in urban environments with the benefit of a positive impact on urban mobility. In this paper we are interested in studying and modeling the behavior of features that permit the end user to access, with her/his web browser, the status of the Bike-Sharing system. In particular, we address features able to make a prediction on the system state. We propose to use a machine learning approach to analyze usage patterns and learn computational models of such features from logs of system usage. On the one hand, machine learning methodologies provide a powerful and general means to implement a wide choice of predictive features. On the other hand, trained machine learning models are provided with a measure of predictive performance that can be used as a metric to assess the cost-performance trade-off of the feature. This provides a principled way to assess the runtime behavior of different components before putting them into operation.