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对话分析:机器能否在实时战略对话中读懂言外之意?

Conversation Analytics: Can Machines Read Between the Lines in Real-Time Strategic Conversations?

Information Systems Research · 2024
被引 7
人大 AFT50UTD24ABS 4*

中文导读

用机器学习方法衡量战略对话中信息优势方的回避和不连贯程度,通过财报电话会议验证,为信息劣势方提供识别工具,提升决策质量。

Abstract

This paper introduces machine learning–based methods designed to measure the evasiveness and incoherence of responses from more-informed individuals during real-time strategic conversations. It tests the efficacy of these methods using the question-and-answer segments of earnings conference calls, where managers are subjected to scrutiny by analysts. The article underscores the largely untapped potential for extracting valuable financial insights from the dialogues between managers and analysts during these calls—a data source that current fintech solutions have largely ignored. Furthermore, the research breaks new ground by integrating machine learning with asset pricing, a promising avenue in light of rapid technological advances in artificial intelligence. From a practical standpoint, the study provides less-informed participants in strategic conversations with tools to identify when their more-informed counterparts are being evasive or incoherent. This ability allows them to pose more incisive questions, leading to better-informed decisions in various fields, including investing and hiring. Moreover, the paper contends that as AI technology continues to evolve, it will compel more-informed parties to adopt greater transparency. This shift will enhance both the efficiency and the transparency of markets and institutions, ultimately benefiting society as a whole.

机器学习金融科技资产定价对话分析战略沟通