Explainable Clustering with CREAM

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Pierre Marquis, Tran Cao Son, Gabriele Kern-Isberner (a cura di)
20th International Conference on Principles of Knowledge Representation and Reasoning, pp. 593–603
IJCAI Organization
agosto 2023

This paper proposes CREAM, a new explainable clustering technique based on decision tree induction, providing human-interpretable clusters by performing hypercubic approximations of the input feature space. CREAM may also be applied to data sets describing classification and regression tasks, given that the algorithm discriminates amongst input and output features. We also present OrCHiD, an automated tuning procedure to select the optimum CREAM parameter. Experiments demonstrating the effectiveness of CREAM in clustering, classification, and regression tasks are reported here, in comparison with other state-of-the-art techniques used as benchmarks.

parole chiaveExplainable AI, Applications that combine KR with machine learning, Integrating knowledge representation and machine learning, KR and machine learning, inductive logic programming, knowledge acquisition
presentazione di riferimento
page_white_powerpointExplainable Clustering with CREAM (KR 2023, 07/09/2023) — Federico Sabbatini (Federico Sabbatini, Roberta Calegari)
evento origine
progetto finanziatore
wrenchTAILOR — Foundations of Trustworthy AI – Integrating Reasoning, Learning and Optimization  (01/09/2020–31/08/2024)
funge da
pubblicazione di riferimento per presentazione
page_white_powerpointExplainable Clustering with CREAM (KR 2023, 07/09/2023) — Federico Sabbatini (Federico Sabbatini, Roberta Calegari)