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Learning deep kernels in the space of monotone conjunctive polynomials

机译:在单调结合多项式的空间中学习深核

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Dot-product kernels is a large family of kernel functions based on dot-product between examples. A recent result states that any dot-product kernel can be decomposed as a non-negative linear combination of homogeneous polynomial kernels of different degrees, and it is possible to learn the coefficients of the combination by exploiting the Multiple Kernel Learning (MKL) paradigm. In this paper it is proved that, under mild conditions, any homogeneous polynomial kernel defined on binary valued data can be decomposed in a parametrized finite linear non-negative combination of monotone conjunctive kernels. MKL has been employed to learn the parameters of the combination. Furthermore, we show that our solution produces a deep kernel whose feature space consists of hierarchically organized features of increasing complexity. We also emphasize the connection between our solution and existing deep kernel learning frameworks. A wide empirical assessment is presented to evaluate the proposed framework, and to compare it against the baselines on several categorical and binary datasets. (C) 2020 Elsevier B.V. All rights reserved.
机译:DOT-Product Kernels是基于示例之间的点产品的大型内核功能。最近的结果表明任何点产品内核都可以被分解为不同程度的均匀多项式内核的非负线性组合,并且可以通过利用多个内核学习(MKL)范例来学习组合的系数。在本文中,证明,在温和条件下,在二元值数据上定义的任何均匀多项式内核都可以以单调结膜核的参数化有限的线性非负组合分解。 MKL已被用于学习组合的参数。此外,我们表明我们的解决方案产生了一个深入的内核,其特征空间由分层组织的特征提高了复杂性的分层组织。我们还强调了我们的解决方案与现有深井学习框架之间的联系。提出了广泛的实证评估以评估所提出的框架,并将其与基于基线上的基线进行比较。 (c)2020 Elsevier B.v.保留所有权利。

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