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Using subspace-based learning methods for medical drug design and characterization

机译:使用基于子空间的学习方法进行医学药物设计和表征

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This paper presents an empirical evaluation of common vector based methods and some extensions in a particular and difficult domain corresponding to the characterization of pharmacological properties from their chemical structure for automatic drug classification problems. Several classic pattern classification methods have already been applied to this problem with promising results. In particular, it has been shown that selection of appropriate variables plays a crucial role. In this work, classification methods that explicitly look for appropriate and reduced representation spaces are considered in this particular context. Comparative experiments considering other state-of-the-art approaches in this domain are carried out.
机译:本文对基于通用载体的方法进行了实证评估,并在一个特殊且困难的领域进行了一些扩展,这些扩展对应于针对自动药物分类问题的药理特性从其化学结构表征而来的特征。几种经典的模式分类方法已经应用于此问题,并取得了可喜的结果。特别是,已经表明,选择适当的变量起着至关重要的作用。在这项工作中,在此特定上下文中考虑了明确寻找适当且缩减的表示空间的分类方法。进行了考虑该领域其他最新技术的比较实验。

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