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Multi-label Few/Zero-shot Learning with Knowledge Aggregated from Multiple Label Graphs

Jueqing Lu, Lan Du, Ming Liu, Joanna F. Dipnall

202032 citationsDOIOpen Access PDF

Abstract

Few/Zero-shot learning is a big challenge of many classifications tasks, where a classifier is required to recognise instances of classes that have very few or even no training samples. It becomes more difficult in multilabel classification, where each instance is la-belled with more than one class. In this paper, we present a simple multi-graph aggregation model that fuses knowledge from multiple label graphs encoding different semantic label relationships in order to study how the aggregated knowledge can benefit multi-label zero/few-shot document classification. The model utilises three kinds of semantic information, i.e., the pre-trained word embeddings, label description, and pre-defined label relations. Experimental results derived on two large clinical datasets (i.e., MIMIC-II and MIMIC-III) and the EU legislation dataset show that methods equipped with the multi-graph knowledge aggregation achieve significant performance improvement across almost all the measures on few/zero-shot labels.

Topics & Concepts

Computer scienceMulti-label classificationKnowledge graphArtificial intelligenceGraphClassifier (UML)Machine learningZero (linguistics)Pattern recognition (psychology)Natural language processingInformation retrievalTheoretical computer scienceLinguisticsPhilosophyDomain Adaptation and Few-Shot LearningText and Document Classification TechnologiesMultimodal Machine Learning Applications
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