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Semi-Supervised Abductive Learning and Its Application to Theft Judicial Sentencing

Yuxuan Huang, Wang-Zhou Dai, Jian Yang, Le-Wen Cai, Shaofen Cheng, Ruizhang Huang, Yufeng Li, Zhi‐Hua Zhou

202034 citationsDOI

Abstract

In many practical tasks, there are usually two kinds of common information: cheap unlabeled data and domain knowledge in the form of symbols. There are some attempts using one single information source, such as semi-supervised learning and abductive learning. However, there is little work to use these two kinds of information sources at the same time, because it is very difficult to combine symbolic logical representation and numerical model optimization effectively. The learning becomes even more challenging when the domain knowledge is insufficient. In this paper, we present an attempt-Semi-Supervised ABductive Learning (SS-ABL) framework. In this framework, semi-supervised learning is trained via pseudo labels of unlabeled data generated by abductive learning, and the background knowledge is refined via the label distribution predicted by semi-supervised learning. The above framework can be optimized iteratively and can be naturally interpretable. The effectiveness of our framework has been fully verified in the theft judicial sentencing of real legal documents. In the case of missing sentencing elements and mixed legal rules, our framework is apparently superior to many existing baseline practices, and provides explanatory assistance to judicial sentencing.

Topics & Concepts

Computer scienceArtificial intelligenceMachine learningRepresentation (politics)Domain (mathematical analysis)Supervised learningBaseline (sea)Semi-supervised learningDomain knowledgeAbductive reasoningArtificial neural networkMathematicsLawPoliticsMathematical analysisPolitical scienceTopic ModelingArtificial Intelligence in LawImbalanced Data Classification Techniques