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Learning Structural Kernels for Natural Language Processing

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arxiv 1508.02131 v1 pith:5MCMCHPM submitted 2015-08-10 cs.CL cs.LG

Learning Structural Kernels for Natural Language Processing

classification cs.CL cs.LG
keywords kernelsmethodsstructuralgridkernel-basedlanguagelearningmodel
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Structural kernels are a flexible learning paradigm that has been widely used in Natural Language Processing. However, the problem of model selection in kernel-based methods is usually overlooked. Previous approaches mostly rely on setting default values for kernel hyperparameters or using grid search, which is slow and coarse-grained. In contrast, Bayesian methods allow efficient model selection by maximizing the evidence on the training data through gradient-based methods. In this paper we show how to perform this in the context of structural kernels by using Gaussian Processes. Experimental results on tree kernels show that this procedure results in better prediction performance compared to hyperparameter optimization via grid search. The framework proposed in this paper can be adapted to other structures besides trees, e.g., strings and graphs, thereby extending the utility of kernel-based methods.

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