We've had this conversation before: A Novel Approach to Measuring Dialog
Similarity
- URL: http://arxiv.org/abs/2110.05780v1
- Date: Tue, 12 Oct 2021 07:24:12 GMT
- Title: We've had this conversation before: A Novel Approach to Measuring Dialog
Similarity
- Authors: Ofer Lavi, Ella Rabinovich, Segev Shlomov, David Boaz, Inbal Ronen,
Ateret Anaby-Tavor
- Abstract summary: We propose a novel adaptation of the edit distance metric to the scenario of dialog similarity.
Our approach takes into account various conversation aspects such as utterance semantics, conversation flow, and the participants.
- Score: 9.218829323265371
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Dialog is a core building block of human natural language interactions. It
contains multi-party utterances used to convey information from one party to
another in a dynamic and evolving manner. The ability to compare dialogs is
beneficial in many real world use cases, such as conversation analytics for
contact center calls and virtual agent design.
We propose a novel adaptation of the edit distance metric to the scenario of
dialog similarity. Our approach takes into account various conversation aspects
such as utterance semantics, conversation flow, and the participants. We
evaluate this new approach and compare it to existing document similarity
measures on two publicly available datasets. The results demonstrate that our
method outperforms the other approaches in capturing dialog flow, and is better
aligned with the human perception of conversation similarity.
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