Learning deep kernels in the space of dot product polynomials

被引:14
|
作者
Donini, Michele [1 ]
Aiolli, Fabio [2 ]
机构
[1] Ist Italiano Tecnol, Computat Stat & Machine Learning, Via Morego 30, I-16163 Genoa, Italy
[2] Univ Padua, Dept Math, Via Trieste 63, I-35121 Padua, Italy
关键词
Multiple kernel learning; Kernel learning; Deep kernel; RECOGNITION;
D O I
10.1007/s10994-016-5590-8
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Recent literature has shown the merits of having deep representations in the context of neural networks. An emerging challenge in kernel learning is the definition of similar deep representations. In this paper, we propose a general methodology to define a hierarchy of base kernels with increasing expressiveness and combine them via multiple kernel learning (MKL) with the aim to generate overall deeper kernels. As a leading example, this methodology is applied to learning the kernel in the space of Dot-Product Polynomials (DPPs), that is a positive combination of homogeneous polynomial kernels (HPKs). We show theoretical properties about the expressiveness of HPKs that make their combination empirically very effective. This can also be seen as learning the coefficients of the Maclaurin expansion of any definite positive dot product kernel thus making our proposed method generally applicable. We empirically show the merits of our approach comparing the effectiveness of the kernel generated by our method against baseline kernels (including homogeneous and non homogeneous polynomials, RBF, etc...) and against another hierarchical approach on several benchmark datasets.
引用
收藏
页码:1245 / 1269
页数:25
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