Conversational Alignment with Artificial Intelligence in Context
Conversational Alignment with Artificial Intelligence in Context
The development of sophisticated artificial intelligence (AI) conversational agents based on large language models raises important questions about the relationship between human norms, values, and practices and AI design and performance. This article explores what it means for AI agents to be conversationally aligned to human communicative norms and practices for handling context and common ground and proposes a new framework for evaluating developers' design choices. We begin by drawing on the philosophical and linguistic literature on conversational pragmatics to motivate a set of desiderata, which we call the CONTEXT-ALIGN framework, for conversational alignment with human communicative practices. We then suggest that current large language model (LLM) architectures, constraints, and affordances may impose fundamental limitations on achieving full conversational alignment.
Rachel Katharine Sterken、James Ravi Kirkpatrick
University of Hong KongUniversity of Oxford and Magdalen College, Oxford
计算技术、计算机技术
Rachel Katharine Sterken,James Ravi Kirkpatrick.Conversational Alignment with Artificial Intelligence in Context[EB/OL].(2025-05-28)[2025-06-08].https://arxiv.org/abs/2505.22907.点此复制
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