张量积特征空间中的特征选择。

Aaron Smalter, Jun Huan, Gerald Lushington
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引用次数: 16

摘要

对从两个或多个域中联合采样的对象进行分类有许多应用。张量积特征空间对于不同域特征集之间的交互建模是有用的,但在张量积特征空间中特征的选择是具有挑战性的。传统的特征选择方法忽略了特征空间的结构,可能无法提供最优的结果。本文提出了在不同域的原始特征空间中选择特征的方法。我们通过两种方法得到稀疏性,一种是用整数二次规划,另一种是用l1范数正则化。生物数据集的实验研究验证了我们的方法。
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Feature Selection in the Tensor Product Feature Space.

Classifying objects that are sampled jointly from two or more domains has many applications. The tensor product feature space is useful for modeling interactions between feature sets in different domains but feature selection in the tensor product feature space is challenging. Conventional feature selection methods ignore the structure of the feature space and may not provide the optimal results. In this paper we propose methods for selecting features in the original feature spaces of different domains. We obtained sparsity through two approaches, one using integer quadratic programming and another using L1-norm regularization. Experimental studies on biological data sets validate our approach.

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