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Improving Natural Language Processing Tasks with Human Gaze-Guided Neural Attention (2010.07891v2)

Published 15 Oct 2020 in cs.CL and cs.LG

Abstract: A lack of corpora has so far limited advances in integrating human gaze data as a supervisory signal in neural attention mechanisms for natural language processing(NLP). We propose a novel hybrid text saliency model(TSM) that, for the first time, combines a cognitive model of reading with explicit human gaze supervision in a single machine learning framework. On four different corpora we demonstrate that our hybrid TSM duration predictions are highly correlated with human gaze ground truth. We further propose a novel joint modeling approach to integrate TSM predictions into the attention layer of a network designed for a specific upstream NLP task without the need for any task-specific human gaze data. We demonstrate that our joint model outperforms the state of the art in paraphrase generation on the Quora Question Pairs corpus by more than 10% in BLEU-4 and achieves state of the art performance for sentence compression on the challenging Google Sentence Compression corpus. As such, our work introduces a practical approach for bridging between data-driven and cognitive models and demonstrates a new way to integrate human gaze-guided neural attention into NLP tasks.

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Authors (4)
  1. Ekta Sood (7 papers)
  2. Simon Tannert (2 papers)
  3. Philipp Mueller (2 papers)
  4. Andreas Bulling (81 papers)
Citations (65)

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