Active Learning in Cost - Sensitive Environments

نویسندگان

  • J. K. Aggarwal
  • Lizy Kurian John
  • Cheryl Martin
  • Maytal Saar-Tsechansky
چکیده

Active learning techniques aim to reduce the amount of labeled data required for a supervised learner to achieve a certain level of performance. This can be very useful in domains where unlabeled data is easy to obtain but labelling data is costly. In this dissertation, I introduce methods of creating computationally efficient active learning techniques that handle different misclassification costs, different evaluation metrics, and different label acquisition costs. This is accomplished in part by developing techniques from utility-based data mining typically not studied in conjunction with active learning. I first address supervised learning problems where labeled data may be scarce, especially for one particular class. I revisit claims about resampling, a particularly

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تاریخ انتشار 2009