2024
DOI: 10.6339/24-jds1140
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A Two-Stage Classification for Dealing with Unseen Clusters in the Testing Data

Jung Wun Lee,
Ofer Harel

Abstract: Classification is an important statistical tool that has increased its importance since the emergence of the data science revolution. However, a training data set that does not capture all underlying population subgroups (or clusters) will result in biased estimates or misclassification. In this paper, we introduce a statistical and computational solution to a possible bias in classification when implemented on estimated population clusters. An unseen-cluster problem denotes the case in which the training data… Show more

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