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What Did You Say? Task-Oriented Dialog Datasets Are Not Conversational!?

Authors :
Jakobovits, Alice Shoshana
Piccinno, Francesco
Altun, Yasemin
Publication Year :
2022

Abstract

High-quality datasets for task-oriented dialog are crucial for the development of virtual assistants. Yet three of the most relevant large scale dialog datasets suffer from one common flaw: the dialog state update can be tracked, to a great extent, by a model that only considers the current user utterance, ignoring the dialog history. In this work, we outline a taxonomy of conversational and contextual effects, which we use to examine MultiWOZ, SGD and SMCalFlow, among the most recent and widely used task-oriented dialog datasets. We analyze the datasets in a model-independent fashion and corroborate these findings experimentally using a strong text-to-text baseline (T5). We find that less than 4% of MultiWOZ's turns and 10% of SGD's turns are conversational, while SMCalFlow is not conversational at all in its current release: its dialog state tracking task can be reduced to single exchange semantic parsing. We conclude by outlining desiderata for truly conversational dialog datasets.<br />Comment: 12 pages, 3 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2203.03431
Document Type :
Working Paper