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Random set framework for multiple instance learning
Authors:Jeremy Bolton  Paul Gader  Pete Torrione
Affiliation:a University of Florida, Gainesville, FL 32611, United States
b University of Louisville, KY 40292, United States
c Duke University, Durham, NC 27708, United States
Abstract:Multiple instance learning (MIL) is a technique used for learning a target concept in the presence of noise or in a condition of uncertainty. While standard learning techniques present the learner with individual samples, MIL alternatively presents the learner with sets of samples. Although sets are the primary elements used for analysis in MIL, research in this area has focused on using standard analysis techniques. In the following, a random set framework for multiple instance learning (RSF-MIL) is proposed that can directly perform analysis on sets. The proposed method uses random sets and fuzzy measures to model the MIL problem, thus providing a more natural mathematical framework, a more general MIL solution, and a more versatile learning tool. Comparative experimental results using RSF-MIL are presented for benchmark data sets. RSF-MIL is further compared to the state-of-the-art in landmine detection using ground penetrating radar data.
Keywords:Multiple instance learning  Noisy OR-Gate  Random set framework  Lattice operators  Landmine detection
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