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Abductive Learning with Ground Knowledge Base

Le-Wen Cai, Wang-Zhou Dai, Yuxuan Huang, Yu-Feng Li, Stephen Muggleton, Yuan Jiang

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Abstract

Abductive Learning is a framework that combines machine learning with first-order logical reasoning. It allows machine learning models to exploit complex symbolic domain knowledge represented by first-order logic rules. However, it is challenging to obtain or express the ground-truth domain knowledge explicitly as first-order logic rules in many applications. The only accessible knowledge base is implicitly represented by groundings, i.e., propositions or atomic formulas without variables. This paper proposes Grounded Abductive Learning (GABL) to enhance machine learning models with abductive reasoning in a ground domain knowledge base, which offers inexact supervision through a set of logic propositions. We apply GABL on two weakly supervised learning problems and found that the model's initial accuracy plays a crucial role in learning. The results on a real-world OCR task show that GABL can significantly reduce the effort of data labeling than the compared methods.

Topics & Concepts

Abductive reasoningComputer scienceArtificial intelligenceExploitDomain (mathematical analysis)Knowledge baseMachine learningDomain knowledgeGround truthSet (abstract data type)Task (project management)Inductive logic programmingProgramming languageMathematicsEngineeringSystems engineeringMathematical analysisComputer securityTopic ModelingNatural Language Processing TechniquesData Quality and Management
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