CLAINov 16, 2017

FusionNet: Fusing via Fully-Aware Attention with Application to Machine Comprehension

arXiv:1711.07341v2187 citations
Originality Incremental advance
AI Analysis

This addresses the problem of improving attention mechanisms in NLP for researchers and practitioners, though it is incremental as it extends existing attention approaches.

The paper tackles machine comprehension by introducing FusionNet, a neural structure that fuses attention information across multiple levels, achieving top performance on the SQuAD leaderboard with F1 scores of 51.4% on AddSent and 60.7% on AddOneSent.

This paper introduces a new neural structure called FusionNet, which extends existing attention approaches from three perspectives. First, it puts forward a novel concept of "history of word" to characterize attention information from the lowest word-level embedding up to the highest semantic-level representation. Second, it introduces an improved attention scoring function that better utilizes the "history of word" concept. Third, it proposes a fully-aware multi-level attention mechanism to capture the complete information in one text (such as a question) and exploit it in its counterpart (such as context or passage) layer by layer. We apply FusionNet to the Stanford Question Answering Dataset (SQuAD) and it achieves the first position for both single and ensemble model on the official SQuAD leaderboard at the time of writing (Oct. 4th, 2017). Meanwhile, we verify the generalization of FusionNet with two adversarial SQuAD datasets and it sets up the new state-of-the-art on both datasets: on AddSent, FusionNet increases the best F1 metric from 46.6% to 51.4%; on AddOneSent, FusionNet boosts the best F1 metric from 56.0% to 60.7%.

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