基于遗传算法的回归树集合多目标优化

Qian Wan, R. Pal
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引用次数: 1

摘要

我们考虑了一个基于多元回归树集合的多输出响应预测问题。将最优集成的选择表述为一个多目标优化问题,并采用遗传算法求解。我们说明了我们的方法在药物敏感性预测问题上的应用,其中所提出的方法在预测灵敏度和实验灵敏度之间的相关系数方面优于常规多变量随机森林。我们还证明,生成帕累托最优前沿为我们提供了不同优化目标的集成选择。
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Multi-objective optimization of ensemble of regression trees using genetic algorithms
We consider a prediction problem with multiple output responses based on an ensemble of multivariate regression trees. The selection of the optimal ensemble is formulated as a multi-objective optimization problem and solved using genetic algorithms. We illustrate the application of our approach on drug sensitivity prediction problem where the proposed methodology outperforms regular multivariate random forests in terms of correlation coefficients between predicted and experimental sensitivities. We also demonstrate that generating the Pareto-optimal front provides us a choice of ensembles for different optimization objectives.
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