Cost-Sensitive Learning with Conditional Markov Networks

Publication
Jan 1, 2006
Abstract

Abstract:
There has been a recent, growing interest in classification and link prediction in structured domains. Methods such as CRFs and RMNs support flexible mechanismsfor modeling correlations due to the link structure. In addition, in many structured domains, there is an interesting structure in the risk or cost function associated with different misclassifications. There is a rich tradition of cost-sensitive learning applied to unstructured (IID) data. Here we propose a general framework which can capture correlations in the link structure and handle structured cost functions. Wepresent a novel cost-sensitive structured classifier based on Maximum Entropy principles that directly determines the cost-sensitive classification. We contrast this with an approach which employs a standard 0/1 loss structured classifier followed by minimization of the expected cost of misclassification. We demonstrate the utility of our proposed classifier with experiments on both synthetic and real-world data.


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  • International Conference on Machine Learning

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