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The Computational Complexity of Concise Hypersphere Classification

Authors :
Eiben, Eduard
Ganian, Robert
Kanj, Iyad
Ordyniak, Sebastian
Szeider, Stefan
Eiben, Eduard
Ganian, Robert
Kanj, Iyad
Ordyniak, Sebastian
Szeider, Stefan
Publication Year :
2023

Abstract

Hypersphere classification is a classical and foundational method that can provide easy-to-process explanations for the classification of real-valued and binary data. However, obtaining an (ideally concise) explanation via hypersphere classification is much more difficult when dealing with binary data than real-valued data. In this paper, we perform the first complexity-theoretic study of the hypersphere classification problem for binary data. We use the fine-grained parameterized complexity paradigm to analyze the impact of structural properties that may be present in the input data as well as potential conciseness constraints. Our results include stronger lower bounds and new fixed-parameter algorithms for hypersphere classification of binary data, which can find an exact and concise explanation when one exists.<br />Comment: Short version appeared at ICML 2023

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1438507180
Document Type :
Electronic Resource