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TaskDiff: A Similarity Metric for Task-Oriented Conversations

Authors :
Bhaumik, Ankita
Venkateswaran, Praveen
Rizk, Yara
Isahagian, Vatche
Publication Year :
2023

Abstract

The popularity of conversational digital assistants has resulted in the availability of large amounts of conversational data which can be utilized for improved user experience and personalized response generation. Building these assistants using popular large language models like ChatGPT also require additional emphasis on prompt engineering and evaluation methods. Textual similarity metrics are a key ingredient for such analysis and evaluations. While many similarity metrics have been proposed in the literature, they have not proven effective for task-oriented conversations as they do not take advantage of unique conversational features. To address this gap, we present TaskDiff, a novel conversational similarity metric that utilizes different dialogue components (utterances, intents, and slots) and their distributions to compute similarity. Extensive experimental evaluation of TaskDiff on a benchmark dataset demonstrates its superior performance and improved robustness over other related approaches.<br />Comment: Accepted to the main conference at EMNLP 2023

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2310.15298
Document Type :
Working Paper