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Integrating linear discriminant analysis, polynomial basis expansion, and genetic search for two-group classification

机译:整合线性判别分析,多项式基础扩张和遗传搜索的两组分类

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摘要

We propose a hybrid two-group classification method that integrates linear discriminant analysis, a polynomial expansion of the basis (or variable space), and a genetic algorithm with multiple crossover operations to select variables from the expanded basis. Using new product launch data from the biochemical industry, we found that the proposed algorithm offers mean percentage decreases in the misclassification error rate of 50%, 56%, 59%, 77%, and 78% in comparison to a support vector machine, artificial neural network, quadratic discriminant analysis, linear discriminant analysis, and logistic regression, respectively. These improvements correspond to annual cost savings of $4.40-$25.73 million.
机译:我们提出了一种混合的双组分类方法,其集成了线性判别分析,基础(或可变空间)的多项式扩展,以及具有多个交叉操作的遗传算法,以从扩展的基础上选择变量。使用生物化学行业的新产品推出数据,我们发现所提出的算法提供平均百分比,误差误差率为50%,56%,59%,77%和78%与支持向量机,人为相比神经网络,二次判别分析,线性判别分析和逻辑回归。这些改进对应于每年节省4.40- $ 257.3万美元。

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