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Discovering Compact and Highly Discriminative Features or Feature Combinations of Drug Activities Using Support Vector Machines

机译:发现使用支持向量机器的紧凑且高度辨别的功能或药物活动的特征组合

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Nowadays, high throughput experimental techniques make it feasible to examine and collect massive data at the molecular level. These data, typically mapped to a very high dimensional feature space, carry rich information about functionalities of certain chemical or biological entities and can be used to infer valuable knowledge for the purposes of classification and prediction. Typically, a small number of features or feature combinations may play determinant roles in functional discrimination. The identification of such features or feature combinations is of great importance. In this paper, we study the problem of discovering compact and highly discriminative features or feature combinations from a rich feature collection. We employ the support vector machine as the classification means and aim at finding compact feature combinations. Comparing to previous methods on feature selection, which identify features solely based on their individual roles in the classification, our method is able to identify minimal feature combinations that ultimately have determinant roles in a systematic fashion. Experimental study on drug activity data shows that our method can discover descriptors that are not necessarily significant individually but are most significant collectively.
机译:如今,高吞吐量实验技术使得在分子水平处检查和收集大规模数据的可行性。这些数据通常映射到非常高的维度特征空间,携带有关某些化学或生物实体功能的丰富信息,并且可用于推断出于分类和预测目的的宝贵知识。通常,少量特征或特征组合可以在功能辨别中播放确定性角色。识别这些特征或特征组合具有重要意义。在本文中,我们研究了从丰富的功能集合中发现紧凑且高度辨别的特征或特征组合的问题。我们使用支持向量机作为分类方式,并瞄准查找紧凑的功能组合。与以前的特征选择方法相比,该方法仅基于分类中的个人角色来识别特征,我们的方法能够识别最终具有系统时尚具有决定因素的最小特征组合。药物活动数据的实验研究表明,我们的方法可以发现不一定单独略有的描述符,但最重要的是。

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