Publications

Task-Driven and Experience-Based Question Answering Corpus for In-Home Robot Application in the House3D Virtual Environment

Published

International Conference on Language Resources and Evaluation (LREC)

Date

2022.10.01

Research Areas

Abstract

At present, more and more work has begun to pay attention to the long-term housekeeping robot scene. Naturally, we wonder whether the robot can answer the questions raised by the owner according to the actual situation at home. These questions usually do not have a clear text context, are directly related to the actual scene, and it is difficult to find the answer from the general knowledge base (such as Wikipedia). Therefore, the experience accumulated from the task seems to be a more natural choice. We present a corpus called TEQA (task-driven and experience-based question answering) in the long-term household task. Based on a popular in-house virtual environment and agent task experiences, We design six types of questions along with answering including 24 question templates and 37 answer templates, and nearly 10k different questions answering pairs. Our dataset aims at investigating the ability of task experience understanding of agents for the daily question and answering scenario