Fast learning of relational kernels

作者:Niels Landwehr, Andrea Passerini, Luc De Raedt, Paolo Frasconi

摘要

We develop a general theoretical framework for statistical logical learning with kernels based on dynamic propositionalization, where structure learning corresponds to inferring a suitable kernel on logical objects, and parameter learning corresponds to function learning in the resulting reproducing kernel Hilbert space. In particular, we study the case where structure learning is performed by a simple FOIL-like algorithm, and propose alternative scoring functions for guiding the search process. We present an empirical evaluation on several data sets in the single-task as well as in the multi-task setting.

论文关键词:Statistical relational learning, Inductive logic programming, Kernel methods, Dynamic propositionalization, Kernel learning, Multi-task learning

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论文官网地址:https://doi.org/10.1007/s10994-009-5163-1