What makes a good conversation? How controllable attributes affect human judgments
Abstract
A good conversation requires balance -- between simplicity and detail; staying on topic and changing it; asking questions and answering them. Although dialogue agents are commonly evaluated via human judgments of overall quality, the relationship between quality and these individual factors is less well-studied. In this work, we examine two controllable neural text generation methods, conditional training and weighted decoding, in order to control four important attributes for chitchat dialogue: repetition, specificity, response-relatedness and question-asking. We conduct a large-scale human evaluation to measure the effect of these control parameters on multi-turn interactive conversations on the PersonaChat task. We provide a detailed analysis of their relationship to high-level aspects of conversation, and show that by controlling combinations of these variables our models obtain clear improvements in human quality judgments.
Cite
@article{arxiv.1902.08654,
title = {What makes a good conversation? How controllable attributes affect human judgments},
author = {Abigail See and Stephen Roller and Douwe Kiela and Jason Weston},
journal= {arXiv preprint arXiv:1902.08654},
year = {2019}
}
Comments
Accepted to NAACL 2019