Center for Neural Science and Department of Psychology, New York University, New York, NY, USA.
Neuron. 2019 Oct 9;104(1):164-175. doi: 10.1016/j.neuron.2019.09.037.
To understand decision-making behavior in simple, controlled environments, Bayesian models are often useful. First, optimal behavior is always Bayesian. Second, even when behavior deviates from optimality, the Bayesian approach offers candidate models to account for suboptimalities. Third, a realist interpretation of Bayesian models opens the door to studying the neural representation of uncertainty. In this tutorial, we review the principles of Bayesian models of decision making and then focus on five case studies with exercises. We conclude with reflections and future directions.
为了理解简单、受控制环境中的决策行为,贝叶斯模型通常很有用。首先,最优行为总是贝叶斯的。其次,即使行为偏离最优,贝叶斯方法也提供了候选模型来解释次优行为。第三,对贝叶斯模型的现实主义解释为研究不确定性的神经表示打开了大门。在本教程中,我们回顾了决策的贝叶斯模型的原理,然后重点介绍了五个带有练习的案例研究。最后,我们进行了反思并展望了未来的方向。