Towards Stable and Personalised Profiles for Lexical Alignment in Spoken Human-Agent Dialogue
Towards Stable and Personalised Profiles for Lexical Alignment in Spoken Human-Agent Dialogue
A recent study published on arXiv explores lexical alignment in spoken dialogue between humans and conversational agents, underscoring its significance for effective communication. The research highlights the importance of developing personalized conversational agents to enhance interaction quality. This focus on personalization is particularly relevant given the rapid advancements in large language models, which provide new opportunities for creating more natural and adaptive dialogues. By leveraging these models, agents can better align their lexical choices with those of human users, potentially improving mutual understanding. The study situates itself within ongoing discussions about the role of large language models in conversational AI, emphasizing the need for stable and individualized user profiles. Such profiles could enable agents to maintain consistency and personalization over time, fostering more engaging and efficient human-agent interactions. This work contributes to the broader effort to refine AI communication by integrating linguistic alignment strategies with cutting-edge language modeling technologies.

