Advancements in Communication and Systems 2024
DOI: 10.56155/978-81-955020-7-3-6
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A Novel Statistical Theoretical Split Metric for Decision Tree Classification

Mainak Biswas

Abstract: Decision trees (DTs) are a significant category of logical tools in machine learning (ML), used to classify both text and numerical data. Over the years, two primary criteria for splitting DTs have been prevalent: information gain, which hinges on Shannon’s entropy, and the Gini index. Both these criteria rely on the empirical probabilities of classes within the attribute space of the dataset. In this study, a novel split criteria is introduced, rooted in the principles of statistical mechanics. This measure d… Show more

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