papers AI Learner
The Github is limit! Click to go to the new site.

RAP-Net: Recurrent Attention Pooling Networks for Dialogue Response Selection

2019-03-21
Chao-Wei Huang, Ting-Rui Chiang, Shang-Yu Su, Yun-Nung Chen

Abstract

The response selection has been an emerging research topic due to the growing interest in dialogue modeling, where the goal of the task is to select an appropriate response for continuing dialogues. To further push the end-to-end dialogue model toward real-world scenarios, the seventh Dialog System Technology Challenge (DSTC7) proposed a challenging track based on real chatlog datasets. The competition focuses on dialogue modeling with several advanced characteristics: (1) natural language diversity, (2) capability of precisely selecting a proper response from a large set of candidates or the scenario without any correct answer, and (3) knowledge grounding. This paper introduces recurrent attention pooling networks (RAP-Net), a novel framework for response selection, which can well estimate the relevance between the dialogue contexts and the candidates. The proposed RAP-Net is shown to be effective and can be generalized across different datasets and settings in the DSTC7 experiments.

Abstract (translated by Google)
URL

http://arxiv.org/abs/1903.08905

PDF

http://arxiv.org/pdf/1903.08905


Similar Posts

Comments