Liu Yuan Sophie, Yu Angela, Holmes Philip
Department of Physics, Princeton University, Princeton, NJ 08544, USA.
Neural Comput. 2009 Jun;21(6):1520-53. doi: 10.1162/neco.2009.03-07-495.
The Eriksen task is a classical paradigm that explores the effects of competing sensory inputs on response tendencies and the nature of selective attention in controlling these processes. In this task, conflicting flanker stimuli interfere with the processing of a central target, especially on short reaction time trials. This task has been modeled by neural networks and more recently by a normative Bayesian account. Here, we analyze the dynamics of the Bayesian models, which are nonlinear, coupled discrete time dynamical systems, by considering simplified, approximate systems that are linear and decoupled. Analytical solutions of these allow us to describe how posterior probabilities and psychometric functions depend on model parameters. We compare our results with numerical simulations of the original models and derive fits to experimental data, showing that agreements are rather good. We also investigate continuum limits of these simplified dynamical systems and demonstrate that Bayesian updating is closely related to a drift-diffusion process, whose implementation in neural network models has been extensively studied. This provides insight into how neural substrates can implement Bayesian computations.
埃里克森任务是一种经典范式,用于探究竞争性感官输入对反应倾向的影响以及选择性注意在控制这些过程中的本质。在该任务中,相互冲突的侧翼刺激会干扰对中央目标的处理,尤其是在短反应时试验中。此任务已通过神经网络建模,最近又有了规范性贝叶斯解释。在此,我们通过考虑简化的、近似的线性且解耦的系统来分析贝叶斯模型的动力学,这些模型是非线性、耦合离散时间动力系统。这些系统的解析解使我们能够描述后验概率和心理测量函数如何依赖于模型参数。我们将结果与原始模型的数值模拟进行比较,并得出与实验数据的拟合,结果表明一致性相当好。我们还研究了这些简化动力系统的连续极限,并证明贝叶斯更新与漂移扩散过程密切相关,神经网络模型中该过程的实现已得到广泛研究。这为神经基质如何实现贝叶斯计算提供了见解。