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Multi-source Meta Transfer for Low Resource Multiple-Choice Question Answering

Ming Yan, Hao Zhang, Di Jin, Joey Tianyi Zhou

202021 citationsDOIOpen Access PDF

Abstract

Multiple-choice question answering (MCQA) is one of the most challenging tasks in machine reading comprehension since it requires more advanced reading comprehension skills such as logical reasoning, summarization, and arithmetic operations. Unfortunately, most existing MCQA datasets are small in size, which increases the difficulty of model learning and generalization. To address this challenge, we propose a multi-source meta transfer (MMT) for low-resource MCQA. In this framework, we first extend meta learning by incorporating multiple training sources to learn a generalized feature representation across domains. To bridge the distribution gap between training sources and the target, we further introduce the meta transfer that can be integrated into the multi-source meta training. More importantly, the proposed MMT is independent of backbone language models. Extensive experiments demonstrate the superiority of MMT over state-of-the-arts, and continuous improvements can be achieved on different backbone networks on both supervised and unsupervised domain adaptation settings.

Topics & Concepts

Computer scienceAutomatic summarizationQuestion answeringMeta learning (computer science)GeneralizationTransfer of learningArtificial intelligenceBridge (graph theory)Adaptation (eye)Feature (linguistics)Reading (process)Natural language processingMachine learningReading comprehensionTask (project management)Political scienceMathematicsOpticsEconomicsManagementMedicinePhysicsLinguisticsPhilosophyInternal medicineLawMathematical analysisTopic ModelingMultimodal Machine Learning ApplicationsDomain Adaptation and Few-Shot Learning
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