Clustering-Based Approaches for Symbolic Knowledge Extraction

   page       BibTeX_logo.png       attach   
XLoKR 2022 - Third Workshop on Explainable Logic-Based Knowledge Representation
July 2022

Opaque models belonging to the machine learning world are ever more exploited in the most different application areas. These models, acting as black boxes (BB) from the human perspective, cannot be entirely trusted if the application is critical 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 regressors-that is, the creation of rules associated with hypercubic input space regions. We argue that this kind of partitioning may lead to suboptimal solutions when the data set at hand is high-dimensional or does not satisfy symmetric constraints. We then propose a (deep) clustering-based approach to be performed before symbolic knowledge extraction to achieve better performance with data sets of any kind.

keywordsExplainable AI; Symbolic knowledge extraction; Clustering
reference talk
page_white_powerpointClustering-Based Approaches for Symbolic Knowledge Extraction (KR 2022 – ML Session@KR 2022, 31/07/2022) — Roberta Calegari (Federico Sabbatini, Roberta Calegari)
works as
reference publication for talk
page_white_powerpointClustering-Based Approaches for Symbolic Knowledge Extraction (KR 2022 – ML Session@KR 2022, 31/07/2022) — Roberta Calegari (Federico Sabbatini, Roberta Calegari)