Advancing Spectral Clustering for Categorical and Mixed-Type Data: Insights and Applications

MATHEMATICS(2024)

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Abstract
This study focuses on adapting spectral clustering, a numeric data-clustering technique, for categorical and mixed-type data. The method enhances spectral clustering for categorical and mixed-type data with novel kernel functions, showing improved accuracy in real-world applications. Despite achieving better clustering for datasets with mixed variables, challenges remain in identifying suitable kernel functions for categorical relationships.
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Key words
spectral clustering,categorical data,mixed-type data,kernel functions,6207,6209
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