Bootstrap FDA for counting positives accurately in imprecise environments

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摘要

Many real-world classification tasks involve discriminations between two unbalanced classes in imprecise environments, in which either the training data do not represent a random sample of the target population or the class distribution may shift over time in the target population. In such situations, in order to minimize the misclassification costs, the class distribution in target population must be known for selecting the optimal threshold. Forman has presented a method, based on the distribution generated on training data and the distribution on unlabeled test data, for estimating the number of positives in target population. However, when the data size is small, it is difficult to reliably generate these distributions for estimating the number of positives. This paper presents a novel algorithm to generate these distributions based on the bootstrap and Fisher discriminant analysis. Experiment results on five UCI data sets demonstrate its effectiveness.

论文关键词:Bootstrap,Small sample,Binary classification,Fisher discriminant analysis

论文评审过程:Received 20 February 2006, Revised 7 February 2007, Accepted 20 February 2007, Available online 12 March 2007.

论文官网地址:https://doi.org/10.1016/j.patcog.2007.02.017