Community-Guided Learning: Exploiting Mobile Sensor Users to Model Human Behavior

Authors

  • Daniel Peebles Dartmouth College
  • Hong Lu Dartmouth College
  • Nicholas Lane Dartmouth College
  • Tanzeem Choudhury Dartmouth College
  • Andrew Campbell Dartmouth College

DOI:

https://doi.org/10.1609/aaai.v24i1.7731

Keywords:

machine learning, community, labeling

Abstract

Modeling human behavior requires vast quantities of accurately labeled training data, but for ubiquitous people-aware applications such data is rarely attainable. Even researchers make mistakes when labeling data, and consistent, reliable labels from low-commitment users are rare. In particular, users may give identical labels to activities with characteristically different signatures (e.g., labeling eating at home or at a restaurant as "dinner") or may give different labels to the same context (e.g., "work" vs. "office"). In this scenario, labels are unreliable but nonetheless contain valuable information for classification. To facilitate learning in such unconstrained labeling scenarios, we propose Community-Guided Learning (CGL), a framework that allows existing classifiers to learn robustly from unreliably-labeled user-submitted data. CGL exploits the underlying structure in the data and the unconstrained labels to intelligently group crowd-sourced data. We demonstrate how to use similarity measures to determine when and how to split and merge contributions from different labeled categories and present experimental results that demonstrate the effectiveness of our framework.

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Published

2010-07-05

How to Cite

Peebles, D., Lu, H., Lane, N., Choudhury, T., & Campbell, A. (2010). Community-Guided Learning: Exploiting Mobile Sensor Users to Model Human Behavior. Proceedings of the AAAI Conference on Artificial Intelligence, 24(1), 1600-1606. https://doi.org/10.1609/aaai.v24i1.7731