Agrafiotis Dimitris K, Cedeño Walter
3-Dimensional Pharmaceuticals, Inc., 665 Stockton Drive, Exton, Pennsylvania 19341, USA.
J Med Chem. 2002 Feb 28;45(5):1098-107. doi: 10.1021/jm0104668.
We present a new feature selection algorithm for structure-activity and structure-property correlation based on particle swarms. Particle swarms explore the search space through a population of individuals that adapt by returning stochastically toward previously successful regions, influenced by the success of their neighbors. This method, which was originally intended for searching multidimensional continuous spaces, is adapted to the problem of feature selection by viewing the location vectors of the particles as probabilities and employing roulette wheel selection to construct candidate subsets. The algorithm is applied in the construction of parsimonious quantitative structure-activity relationship (QSAR) models based on feed-forward neural networks and is tested on three classical data sets from the QSAR literature. It is shown that the method compares favorably with simulated annealing and is able to identify a better and more diverse set of solutions given the same amount of simulation time.
我们提出了一种基于粒子群的用于结构活性和结构性质相关性的新特征选择算法。粒子群通过一群个体探索搜索空间,这些个体通过随机返回先前成功的区域来适应,受到其邻居成功的影响。这种方法最初旨在搜索多维连续空间,通过将粒子的位置向量视为概率并采用轮盘赌选择来构建候选子集,从而适用于特征选择问题。该算法应用于基于前馈神经网络的简约定量构效关系(QSAR)模型的构建,并在QSAR文献中的三个经典数据集上进行了测试。结果表明,该方法与模拟退火相比具有优势,并且在相同的模拟时间内能够识别出更好且更多样化的一组解决方案。