ML-SPEAK: A theory-guided machine learning method for studying and predicting conversational turn-taking patterns.

IF 6.7 1区 心理学 Q1 PSYCHOLOGY, SOCIAL
Lisa R O'Bryan,Madeline Navarro,Juan Segundo Hevia,Santiago Segarra
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引用次数: 0

Abstract

Predicting team dynamics from personality traits remains a fundamental challenge for the psychological sciences and team-based organizations. Understanding how team composition shapes team processes can significantly advance team-based research along with providing practical guidelines for team staffing and training. Although the input-process-output model has been a useful theoretical framework for studying these connections, the complex nature of team member interactions demands a more dynamic approach. We develop a computational model of conversational turn-taking within self-organized teams that can provide insight into the relationships between team member characteristics and team communication dynamics. We focus on turn-taking patterns between team members, independent of content, which can significantly influence team emergent states and outcomes while being objectively measurable and quantifiable. As our ML-SPEAK model is trained on conversational data from teams of given trait compositions, it can learn the relationships between individual traits and speaking behaviors and predict group-wide patterns of communication based on team trait composition alone. We first evaluate the performance of our model using simulated data and then apply it to real-world data collected from self-organized student teams. In comparison to baselines, our model is more accurate at predicting speaking turn sequences and can reveal new relationships between team members' traits and their communication patterns. Our approach offers a data-driven and dynamic understanding of team processes. By bridging the gap between individual characteristics and team communication patterns, our model has the potential to inform theories of team processes and provide powerful insights into optimizing team staffing and training. (PsycInfo Database Record (c) 2025 APA, all rights reserved).
ML-SPEAK:一种理论指导的机器学习方法,用于研究和预测会话轮流模式。
从人格特征预测团队动态仍然是心理科学和团队型组织面临的一个基本挑战。了解团队组成如何塑造团队过程,可以显著推进基于团队的研究,并为团队人员配备和培训提供实用的指导方针。虽然输入-过程-输出模型是研究这些联系的一个有用的理论框架,但团队成员互动的复杂性需要一个更动态的方法。我们开发了一个自组织团队中会话轮换的计算模型,该模型可以深入了解团队成员特征与团队沟通动态之间的关系。我们专注于团队成员之间的轮流模式,独立于内容,可以显着影响团队的紧急状态和结果,同时客观地可测量和量化。由于我们的ML-SPEAK模型是基于给定特征组成的团队的会话数据进行训练的,因此它可以学习个体特征与说话行为之间的关系,并仅基于团队特征组成来预测整个群体的沟通模式。我们首先使用模拟数据评估模型的性能,然后将其应用于从自组织学生团队收集的真实数据。与基线相比,我们的模型在预测说话回合序列方面更准确,并且可以揭示团队成员特征和他们的沟通模式之间的新关系。我们的方法提供了对团队过程的数据驱动和动态理解。通过弥合个人特征和团队沟通模式之间的差距,我们的模型有可能为团队流程理论提供信息,并为优化团队人员配备和培训提供强有力的见解。(PsycInfo Database Record (c) 2025 APA,版权所有)。
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来源期刊
CiteScore
12.70
自引率
3.90%
发文量
250
期刊介绍: Journal of personality and social psychology publishes original papers in all areas of personality and social psychology and emphasizes empirical reports, but may include specialized theoretical, methodological, and review papers.Journal of personality and social psychology is divided into three independently edited sections. Attitudes and Social Cognition addresses all aspects of psychology (e.g., attitudes, cognition, emotion, motivation) that take place in significant micro- and macrolevel social contexts.
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