Real-valued multiple-instance learning with queries

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摘要

While there has been a significant amount of theoretical and empirical research on the multiple-instance learning model, most of this research is for concept learning. However, for the important application area of drug discovery, a real-valued classification is preferable. In this paper we initiate a theoretical study of real-valued multiple-instance learning. We prove that the problem of finding a target point consistent with a set of labeled multiple-instance examples (or bags) is NP-complete, and that the problem of learning from real-valued multiple-instance examples is as hard as learning DNF. Another contribution of our work is in defining and studying a multiple-instance membership query (MI-MQ). We give a positive result on exactly learning the target point for a multiple-instance problem in which the learner is provided with a MI-MQ oracle and a single adversarially selected bag.

论文关键词:Learning theory,Multiple-instance learning,On-line learning,Membership queries

论文评审过程:Received 22 March 2005, Revised 24 May 2005, Available online 10 August 2005.

论文官网地址:https://doi.org/10.1016/j.jcss.2005.06.002