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首页> 外文期刊>Journal of Computer-Aided Molecular Design >Impact of distance-based metric learning on classification and visualization model performance and structure–activity landscapes
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Impact of distance-based metric learning on classification and visualization model performance and structure–activity landscapes

机译:基于距离的度量学习对分类和可视化模型性能以及结构活动图景的影响

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This study concerns large margin nearest neighbors classifier and its multi-metric extension as the efficient approaches for metric learning which aimed to learn an appropriate distance/similarity function for considered case studies. In recent years, many studies in data mining and pattern recognition have demonstrated that a learned metric can significantly improve the performance in classification, clustering and retrieval tasks. The paper describes application of the metric learning approach to in silico assessment of chemical liabilities. Chemical liabilities, such as adverse effects and toxicity, play a significant role in drug discovery process, in silico assessment of chemical liabilities is an important step aimed to reduce costs and animal testing by complementing or replacing in vitro and in vivo experiments. Here, to our knowledge for the first time, a distance-based metric learning procedures have been applied for in silico assessment of chemical liabilities, the impact of metric learning on structure– activity landscapes and predictive performance of developed models has been analyzed, the learned metric was used in support vector machines. The metric learning results have been illustrated using linear and non-linear data visualization techniques in order to indicate how the change of metrics affected nearest neighbors relations and descriptor space.
机译:这项研究涉及大余量最近邻分类器及其多度量扩展,这是度量学习的有效方法,旨在学习适当的距离/相似度函数以进行案例研究。近年来,有关数据挖掘和模式识别的许多研究表明,学习的度量可以显着提高分类,聚类和检索任务的性能。本文介绍了度量学习方法在化学负债的计算机评估中的应用。化学作用,例如不良作用和毒性,在药物发现过程中起着重要作用,化学作用的计算机模拟评估是旨在通过补充或替代体外和体内实验来降低成本和动物试验的重要步骤。在此,据我们所知,基于距离的度量学习程序已首次应用于化学负债的计算机评估中,分析了度量学习对结构-活动态势和已开发模型的预测性能的影响,度量标准用于支持向量机。度量学习结果已使用线性和非线性数据可视化技术进行了说明,以指示度量的变化如何影响最近的邻居关系和描述符空间。

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