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Combining psychological models with machine learning to better predict people’s decisions

机译:将心理模型与机器学习相结合,以更好地预测人们的决策

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摘要

Creating agents that proficiently interact with people is critical for many applications. Towards creating these agents, models are needed that effectively predict people’s decisions in a variety of problems. To date, two approaches have been suggested to generally describe people’s decision behavior. One approach creates a-priori predictions about people’s behavior, either based on theoretical rational behavior or based on psychological models, including bounded rationality. A second type of approach focuses on creating models based exclusively on observations of people’s behavior. At the forefront of these types of methods are various machine learning algorithms.This paper explores how these two approaches can be compared and combined in different types of domains. In relatively simple domains, both psychological models and machine learning yield clear prediction models with nearly identical results. In more complex domains, the exact action predicted by psychological models is not even clear, and machine learning models are even less accurate. Nonetheless, we present a novel approach of creating hybrid methods that incorporate features from psychological models in conjunction with machine learning in order to create significantly improved models for predicting people’s decisions. To demonstrate these claims, we present an overview of previous and new results, taken from representative domains ranging from a relatively simple optimization problem and complex domains such as negotiation and coordination without communication.
机译:对于许多应用程序而言,创建能够与人进行有效交互的代理至关重要。为了创建这些代理,需要模型来有效预测人们在各种问题上的决策。迄今为止,已经提出了两种方法来大致描述人们的决策行为。一种方法是基于理论上的理性行为或基于包括有限理性在内的心理模型来创建有关人们行为的先验预测。第二种方法专注于完全基于对人们行为的观察来创建模型。这些类型的方法的最前沿是各种机器学习算法。本文探讨了如何在不同类型的域中比较和组合这两种方法。在相对简单的领域中,心理模型和机器学习都产生清晰的预测模型,结果几乎相同。在更复杂的领域中,心理模型预测的确切动作甚至还不清楚,机器学习模型的准确性甚至更低。尽管如此,我们还是提出了一种创建混合方法的新颖方法,该方法将心理模型的特征与机器学习相结合,以创建可显着改进的模型来预测人们的决策。为了说明这些主张,我们对以前和新的结果进行了概述,这些结果取自具有代表性的领域,涉及相对简单的优化问题和复杂领域,例如没有沟通的协商和协调。

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