From Shallow to Deep Interactions Between Knowledge Representation, Reasoning and Machine Learning (Kay R. Amel group)
December 13, 2019 Β· Declared Dead Β· π arXiv.org
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Authors
Zied Bouraoui, Antoine CornuΓ©jols, Thierry DenΕux, SΓ©bastien Destercke, Didier Dubois, Romain Guillaume, JoΓ£o Marques-Silva, JΓ©rΓ΄me Mengin, Henri Prade, Steven Schockaert, Mathieu Serrurier, Christel Vrain
arXiv ID
1912.06612
Category
cs.AI: Artificial Intelligence
Citations
14
Venue
arXiv.org
Last Checked
4 months ago
Abstract
This paper proposes a tentative and original survey of meeting points between Knowledge Representation and Reasoning (KRR) and Machine Learning (ML), two areas which have been developing quite separately in the last three decades. Some common concerns are identified and discussed such as the types of used representation, the roles of knowledge and data, the lack or the excess of information, or the need for explanations and causal understanding. Then some methodologies combining reasoning and learning are reviewed (such as inductive logic programming, neuro-symbolic reasoning, formal concept analysis, rule-based representations and ML, uncertainty in ML, or case-based reasoning and analogical reasoning), before discussing examples of synergies between KRR and ML (including topics such as belief functions on regression, EM algorithm versus revision, the semantic description of vector representations, the combination of deep learning with high level inference, knowledge graph completion, declarative frameworks for data mining, or preferences and recommendation). This paper is the first step of a work in progress aiming at a better mutual understanding of research in KRR and ML, and how they could cooperate.
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