Publication | Closed Access
Ontology-based Interpretable Machine Learning for Textual Data
13
Citations
31
References
2020
Year
Unknown Venue
EngineeringKnowledge ExtractionTextual DataSemanticsSemantic WebText MiningNatural Language ProcessingData ScienceComputational LinguisticsInterpretabilityOntology LearningInterpretable ModelLanguage StudiesOntology-based Sampling TechniqueLearnable Anchor AlgorithmKnowledge DiscoveryMachine-readable RepresentationExplanation-based LearningSemantic Representation
In this paper, we introduce a novel interpreting framework that learns an interpretable model based on an ontology-based sampling technique to explain agnostic prediction models. Different from existing approaches, our algorithm considers contextual correlation among words, described in domain knowledge ontologies, to generate semantic explanations. To narrow down the search space for explanations, which is a major problem of long and complicated text data, we design a learnable anchor algorithm, to better extract explanations locally. A set of regulations is further introduced, regarding combining learned interpretable representations with anchors to generate comprehensible semantic explanations. An extensive experiment conducted on two real-world datasets shows that our approach generates more precise and insightful explanations compared with baseline approaches.
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