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Generalized Multiple Kernel Learning With Data-Dependent Priors

机译:具有数据相关先验的广义多核学习

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摘要

Multiple kernel learning (MKL) and classifier ensemble are two mainstream methods for solving learning problems in which some sets of features/views are more informative than others, or the features/views within a given set are inconsistent. In this paper, we first present a novel probabilistic interpretation of MKL such that maximum entropy discrimination with a noninformative prior over multiple views is equivalent to the formulation of MKL. Instead of using the noninformative prior, we introduce a novel data-dependent prior based on an ensemble of kernel predictors, which enhances the prediction performance of MKL by leveraging the merits of the classifier ensemble. With the proposed probabilistic framework of MKL, we propose a hierarchical Bayesian model to learn the proposed data-dependent prior and classification model simultaneously. The resultant problem is convex and other information (e.g., instances with either missing views or missing labels) can be seamlessly incorporated into the data-dependent priors. Furthermore, a variety of existing MKL models can be recovered under the proposed MKL framework and can be readily extended to incorporate these priors. Extensive experiments demonstrate the benefits of our proposed framework in supervised and semisupervised settings, as well as in tasks with partial correspondence among multiple views.
机译:多核学习(MKL)和分类器集成是解决学习问题的两种主流方法,在这些学习方法中,某些功能/视图集比其他功能/视图更具信息性,或者给定集内的功能/视图不一致。在本文中,我们首先介绍MKL的一种新的概率解释,这样,在多个视图上具有非先验信息的最大熵判别等同于MKL的表述。代替使用非信息先验,我们基于核预测器的集合引入一种新的数据相关先验,它利用分类器集合的优点来增强MKL的预测性能。借助提出的MKL概率框架,我们提出了一个层次贝叶斯模型来同时学习所提出的与数据相关的先验和分类模型。所产生的问题是凸的,并且可以将其他信息(例如,具有丢失的视图或丢失的标签的实例)无缝地合并到依赖于数据的先验中。此外,可以在建议的MKL框架下恢复各种现有的MKL模型,并且可以轻松扩展以合并这些先验知识。大量的实验证明了我们提出的框架在监督和半监督环境中以及在多视图之间具有部分对应关系的任务中的好处。

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