Structure learning for relational logistic regression: an ensemble approach

被引:0
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作者
Nandini Ramanan
Gautam Kunapuli
Tushar Khot
Bahare Fatemi
Seyed Mehran Kazemi
David Poole
Kristian Kersting
Sriraam Natarajan
机构
[1] Indiana University,
[2] The University of Texas at Dallas,undefined
[3] Allen Institute for Artificial Intelligence,undefined
[4] University of British Columbia,undefined
[5] TU Dortmund University,undefined
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关键词
Statistical relational learning; Boosting; Relational models; Functional Gradient Boosting; Probabilistic Machine Learning;
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摘要
We consider the problem of learning Relational Logistic Regression (RLR). Unlike standard logistic regression, the features of RLR are first-order formulae with associated weight vectors instead of scalar weights. We turn the problem of learning RLR to learning these vector-weighted formulae and develop a learning algorithm based on the recently successful functional-gradient boosting methods for probabilistic logic models. We derive the functional gradients and show how weights can be learned simultaneously in an efficient manner. Our empirical evaluation on standard data sets demonstrates the superiority of our approach over other methods for learning RLR.
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页码:2089 / 2111
页数:22
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