ACL2024
KEEP CHATTING! An Attractive Dataset for Continuous Conversation Agents
Yihe Wang, Jin Liu, Yao Wan, Yitong Li, Zifeng Liu, Weipeng Chen
Abstract
Ongoing conversation is crucial for conversational agents to build long-term connections with users. However, users tend to quickly lose interest if the conversational agent's responses are not engaging enough. In this paper, we introduce a novel task aimed at increasing users' willingness to continue interacting with the agent. We create a dataset named CONTINUOUSCHAT by: (i) collecting and revising personas, then expanding them into detailed personas through experiences, daily life, future plans, or interesting stories; (ii) transforming detailed personas into dialogues infused with emotions and feelings; (iii) rewriting the dialogues in specific styles using few-shot prompts, conditioned on handwritten style-specific examples. We benchmark Large Language Models (LLMs) on the CONTINU-OUSCHAT dataset using both fine-tuning and in-context learning settings. Experiments with publicly available models show that while there is substantial room for improvement in generating style-specific dialogues, our CONTINU-OUSCHAT dataset is valuable for guiding conversational agents to produce more engaging dialogues and increase users' willingness to continue conversations. 1