Talking to myself: self-dialogues as data for conversational agents
Fainberg, Joachim, Krause, Ben, Dobre, Mihai, Damonte, Marco, Kahembwe, Emmanuel, Duma, Daniel, Webber, Bonnie, Fancellu, Federico
–arXiv.org Artificial Intelligence
Conversational agents are gaining popularity with the increasing ubiquity of smart devices. However, training agents in a data driven manner is challenging due to a lack of suitable corpora. This paper presents a novel method for gathering topical, unstructured conversational data in an efficient way: self-dialogues through crowd-sourcing. Alongside this paper, we include a corpus of 3.6 million words across 23 topics. We argue the utility of the corpus by comparing self-dialogues with standard two-party conversations as well as data from other corpora.
arXiv.org Artificial Intelligence
Sep-19-2018
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