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A Two-Layered Diffusion Model Traces the Dynamics of Information Processing in the Valuation-and-Choice Circuit of Decision Making

机译:两层扩散模型跟踪决策的评估和选择电路中信息处理的动态

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摘要

A circuit of evaluation and selection of the alternatives is considered a reliable model in neurobiology. The prominent contributions of the literature to this topic are reported. In this study, valuation and choice of a decisional process during Two-Alternative Forced-Choice (TAFC) task are represented as a two-layered network of computational cells, where information accrual and processing progress in nonlinear diffusion dynamics. The evolution of the response-to-stimulus map is thus modeled by two linked diffusive modules (2LDM) representing the neuronal populations involved in the valuation-and-decision circuit of decision making. Diffusion models are naturally appropriate for describing accumulation of evidence over the time. This allows the computation of the response times (RTs) in valuation and choice, under the hypothesis of ex-Wald distribution. A nonlinear transfer function integrates the activities of the two layers. The input-output map based on the infomax principle makes the 2LDM consistent with the reinforcement learning approach. Results from simulated likelihood time series indicate that 2LDM may account for the activity-dependent modulatory component of effective connectivity between the neuronal populations. Rhythmic fluctuations of the estimate gain functions in the delta-beta bands also support the compatibility of 2LDM with the neurobiology of DM.
机译:评价和选择替代方案的电路被认为是神经生物学中的可靠模型。报告了文献对该主题的杰出贡献。在这项研究中,在“二选一强制选择”(TAFC)任务中对决策过程进行评估和选择表示为两层计算单元网络,其中信息累积和处理在非线性扩散动力学中不断发展。因此,通过两个链接的扩散模块(2LDM)对响应刺激图的演变进行建模,该模块代表参与决策的评估和决策电路的神经元种群。扩散模型自然适合描述一段时间内的证据积累。在前瓦尔德分布的假设下,这允许计算评估和选择中的响应时间(RTs)。非线性传递函数整合了两层的活动。基于infomax原理的输入输出映射使2LDM与强化学习方法一致。模拟似然时间序列的结果表明2LDM可能解释了神经元种群之间有效连接的活动依赖性调节成分。 δ-β带中估计增益函数的节律波动也支持2LDM与DM神经生物学的相容性。

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