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A Bayesian decision theory approach to variable selection for discrimination

机译:区分变量选择的贝叶斯决策理论方法

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Motivated by examples in spectroscopy, we study variable selection for discrimination in problems with very many predictor variables. Assuming multivariate normal distributions with common variance for the predictor variables within groups, we develop a Bayesian decision theory approach that balances costs for variables against a loss due to classification errors. The approach is computationally intensive, requiring a simulation to approximate the intractable expected loss and a search, using simulated annealing, over a large space of possible subsets of variables. It is illustrated by application to a spectroscopic example with 3 groups, 100 variables, and 71 training cases, where the approach finds subsets of between 5 and 14 variables whose discriminatory power is comparable with that of linear discriminant analysis using principal components derived from the full 100 variables. We study both the evaluation of expected loss and the tuning of the simulated annealing for the example, and conclude that computational effort should be concentrated on the search.
机译:借助光谱学中的示例,我们研究了变量选择以区分具有很多预测变量的问题。假设组内的预测变量具有共同方差的多元正态分布,我们开发了一种贝叶斯决策理论方法,该方法可以平衡变量成本与归因于分类错误的损失。该方法是计算密集型的,需要进行模拟以近似难处理的预期损失,并使用模拟退火在可能的变量子集的较大空间上进行搜索。通过将其应用于具有3组,100个变量和71个训练案例的光谱示例进行说明,其中该方法找到5到14个变量的子集,这些子集的判别力与使用从全部分量中得出的主成分进行线性判别分析的判别力相当。 100个变量。对于示例,我们研究了预期损失的评估和模拟退火的调整,并得出结论,计算工作应集中在搜索上。

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