Abstract
In this talk I will focus on discussing deep learning models that can find semantically meaningful representations of words, learn to read documents and answer questions about their content. First, I will introduce the Gated-Attention (GA) Reader model, that integrates a multi-hop architecture with a novel attention mechanism, which is based on multiplicative interactions between the query embedding and the intermediate states of a recurrent neural network document reader. This enables the reader to build query-specific representations of tokens in the document for accurate answer selection. Second, I will next introduce a two-step learning system to question answering from unstructured text, consisting of a retrieval step and a reading comprehension step. Finally, I will discuss a fine-grained gating mechanism to dynamically combine word-level and character-level representations based on properties of the words. I will show that on several tasks, these models significantly improve upon many of the existing techniques.
Joint work with with Bhuwan Dhingra, Zhilin Yang, Yusuke Watanabe, Hanxiao Liu, Ye Yuan, Junjie Hu, and William W. Cohen