Using particle swarms for the development of QSAR models based on K-nearest neighbor and kernel regression

被引:0
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作者
Walter Cedeño
Dimitris K. Agrafiotis
机构
[1] 3-Dimensional Pharmaceuticals,
[2] Inc.,undefined
关键词
computer-assisted drug design; QSAR; feature selection; feature weighting; particle swarm; simulated annealing; k-nearest neighbors; kernel regression; optimization;
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摘要
We describe the application of particle swarms for the development of quantitative structure-activity relationship (QSAR) models based on k-nearest neighbor and kernel regression. Particle swarms is a population-based stochastic search method based on the principles of social interaction. Each individual explores the feature space guided by its previous success and that of its neighbors. Success is measured using leave-one-out (LOO) cross validation on the resulting model as determined by k-nearest neighbor kernel regression. The technique is shown to compare favorably to simulated annealing using three classical data sets from the QSAR literature.
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页码:255 / 263
页数:8
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