Traditional models of opinion dynamics provide a simple approach to understanding human behavior in basic social scenarios. However, when it comes to issues such as polarization and extremism, we require a more nuanced understanding of human biases and cognitive tendencies. In this paper, we propose an approach to modeling opinion dynamics by integrating mental models and assumptions of individuals agents using Bayesian-inspired methods. By exploring the relationship between human rationality and Bayesian theory, we demonstrate the efficacy of these methods in describing how opinions evolve. Our analysis leverages the Continuous Opinions and Discrete Actions (CODA) model, applying Bayesian-inspired rules to account for key human behaviors such as confirmation bias, motivated reasoning, and our reluctance to change opinions. Through this, we obtain update rules that offer deeper insights into the dynamics of extreme opinions. Our work sheds light on the role of human biases in shaping opinion dynamics and highlights the potential of Bayesian-inspired modeling to provide more accurate predictions of real-world scenarios. Keywords: Opinion dynamics, Bayesian methods, Cognition, CODA, Agent-based models
翻译:传统观点动态模型提供了一种简单的方法来理解基本社会情景中的人类行为。然而,当涉及到两极分化和极端主义等问题时,我们需要更细致地理解人类偏见和认知倾向。在本文中,我们提出一种方法来模拟观点动态,方法是利用巴伊西亚人启发的方法整合个人行为主体的心理模式和假设。通过探索人类理性与巴伊西亚理论之间的关系,我们展示了这些方法在描述观点如何演变方面的有效性。我们的分析利用了持续观点和分解行动模式,运用了巴伊西亚人启发型规则来解释关键人类行为,如确认偏见、动机推理和我们不愿改变观点。我们通过这一方法更新了规则,更深入地了解极端观点的动态。我们的工作揭示了人类偏见在塑造观点动态中的作用,并凸显了巴伊西亚人启发型模型在提供更准确真实世界情景预测方面的潜力。关键词:观点动态、巴伊西亚方法、科尼蒂、CIDA、代理基础模型。</s>