Bogdan Maksak

1paper

1 Paper

CLJul 5, 2017
An Attention Mechanism for Answer Selection Using a Combined Global and Local View

Yoram Bachrach, Andrej Zukov-Gregoric, Sam Coope et al.

We propose a new attention mechanism for neural based question answering, which depends on varying granularities of the input. Previous work focused on augmenting recurrent neural networks with simple attention mechanisms which are a function of the similarity between a question embedding and an answer embeddings across time. We extend this by making the attention mechanism dependent on a global embedding of the answer attained using a separate network. We evaluate our system on InsuranceQA, a large question answering dataset. Our model outperforms current state-of-the-art results on InsuranceQA. Further, we visualize which sections of text our attention mechanism focuses on, and explore its performance across different parameter settings.