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首页> 外文期刊>Frontiers in Neuroscience >Modeling Dynamic Allocation of Effort in a Sequential Task Using Discounting Models
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Modeling Dynamic Allocation of Effort in a Sequential Task Using Discounting Models

机译:使用折扣模型在顺序任务中建模动态分配

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摘要

Most rewards in our lives require effort to obtain them. It is known that effort is seen by humans as carrying an intrinsic disutility which devalues the obtainable reward. Established models for effort discounting account for this by using participant-specific discounting parameters inferred from experiments. These parameters offer only a static glance into the bigger picture of effort exertion. The mechanism underlying the dynamic changes in a participant's willingness to exert effort is still unclear and an active topic of research. Here, we modeled dynamic effort exertion as a consequence of effort- and probability-discounting mechanisms during goal reaching, sequential behavior. To do this, we developed a novel sequential decision-making task in which participants made binary choices to reach a minimum number of points. Importantly, the time points and circumstances of effort allocation were decided by participants according to their own preferences and not imposed directly by the task. Using the computational model to analyze participants' choices, we show that the dynamics of effort exertion arise from a combination of changing task needs and forward planning. In other words, the interplay between a participant's inferred discounting parameters is sufficient to explain the dynamic allocation of effort during goal reaching. Using formal model comparison, we also inferred the forward-planning strategy used by participants. The model allowed us to characterize a participant's effort exertion in terms of only a few parameters. Moreover, the model can be adapted to a number of tasks used in establishing the neural underpinnings of forward-planning behavior and meta-control, allowing for the characterization of behavior in terms of model parameters.
机译:我们生活中的大多数奖励需要努力获得它们。众所周知,人类看到努力,携带内在的宿舍,这些宿舍缺乏可获得的奖励。通过使用实验推断的参与者特定的折扣参数,建立了努力折扣账户的模型。这些参数只能将静态浏览到努力努力的较大图景中。参与者的动态变化的机制仍然不明确,并积极研究了研究。在这里,我们在目标达到的努力和概率贴现机制的结果中建模了动态努力,持续的行为。为此,我们开发了一种新的连续决策任务,其中参与者使二元选择达到最小数量。重要的是,根据自己的偏好,参与者决定努力分配的时间点和情况,而不是直接由任务直接征收。使用计算模型来分析参与者的选择,我们表明,努力努力的动态来自不断变化的任务需求和前瞻性规划。换句话说,参与者推断折扣参数之间的相互作用足以解释目标到达期间的动态努力。使用正式模型比较,我们还推断参与者使用的前瞻性规划策略。该模型允许我们在仅少数参数方面表征参与者的努力。此外,该模型可以适用于在建立正向规划行为和元控制的神经支撑的许多任务,允许在模型参数方面表征行为。

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