Bottom-Up and Top-Down Workflows for Hypercube- and Clustering-based Knowledge Extractors

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Machine learning opaque models, currently exploited to carry out a wide variety of supervised and unsupervised learning tasks, are able to achieve impressive predictive performances. However, they act as black boxes (BBs) from the human standpoint, so they cannot be entirely trusted in critical applications unless there exists a method to extract symbolic and human-readable knowledge out of them.
In this paper we analyse a recurrent design adopted by symbolic knowledge extractors for BB predictors, that is, the creation of rules associated with hypercubic input space regions. We argue that this kind of partitioning may lead to suboptimum solutions when the data set at hand is sparse, high-dimensional, or does not satisfy symmetric constraints. We then propose two different knowledge-extraction workflows involving clustering approaches, highlighting the possibility to outperform existing knowledge-extraction techniques in terms of predictive performance on data sets of any kind.

evento contenitore
worldEXTRAAMAS 2023@AAMAS 2023
pubblicazione di riferimento
page_white_acrobatBottom-Up and Top-Down Workflows for Hypercube- and Clustering-based Knowledge Extractors (articolo in atti, 2023) — Federico Sabbatini, Roberta Calegari
progetto finanziatore
wrenchTAILOR — Foundations of Trustworthy AI – Integrating Reasoning, Learning and Optimization  (01/09/2020–31/08/2024)

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