Negotiation is a complex social interaction that encapsulates emotional encounters in human decision-making. Virtual agents that can negotiate with humans are useful in pedagogy and conversational AI. To advance the development of such agents, we explore the prediction of two important subjective goals in a negotiation - outcome satisfaction and partner perception. Specifically, we analyze the extent to which emotion attributes extracted from the negotiation help in the prediction, above and beyond the individual difference variables. We focus on a recent dataset in chat-based negotiations, grounded in a realistic camping scenario. We study three degrees of emotion dimensions - emoticons, lexical, and contextual by leveraging affective lexicons and a state-of-the-art deep learning architecture. Our insights will be helpful in designing adaptive negotiation agents that interact through realistic communication interfaces.
翻译:谈判是一种复杂的社会互动,它包含了人类决策中的情感经历。可以与人类谈判的虚拟工具在教学和对话AI中很有用。为了推动这些工具的发展,我们探索了在谈判中预测两个重要的主观目标:结果满意度和伙伴感。具体地说,我们分析了从谈判中提取的情感属性在多大程度上有助于预测,超越和超越个别差异变量。我们侧重于基于聊天谈判的最新数据集,以现实的露营情景为基础。我们研究了三种程度的情感层面――表情学、词汇学和背景学,利用影响性词典和最先进的深层次学习结构。我们的见解将有助于设计适应性谈判工具,通过现实的沟通界面进行互动。