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Graph-Based Semi-Supervised Learning for Natural Language Understanding

2019-11-01WS 2019Unverified0· sign in to hype

Zimeng Qiu, Eunah Cho, Xiaochun Ma, William Campbell

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Abstract

Semi-supervised learning is an efficient method to augment training data automatically from unlabeled data. Development of many natural language understanding (NLU) applications has a challenge where unlabeled data is relatively abundant while labeled data is rather limited. In this work, we propose transductive graph-based semi-supervised learning models as well as their inductive variants for NLU. We evaluate the approach's applicability using publicly available NLU data and models. In order to find similar utterances and construct a graph, we use a paraphrase detection model. Results show that applying the inductive graph-based semi-supervised learning can improve the error rate of the NLU model by 5\%.

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