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A Computational Model for a Multi-Goal Spatial Navigation Task inspired by Rodent Studies

机译:受啮齿动物研究启发的多目标空间导航任务的计算模型

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We present a biologically-inspired computational model of the rodent hippocampus based on recent studies of the hippocampus showing that its longitudinal axis is involved in complex spatial navigation. While both poles of the hippocampus, i.e. septal (dorsal) and temporal (ventral), encode spatial information; the septal area has traditionally been attributed more to navigation and action selection; whereas the temporal pole has been more involved with learning and motivation. In this work we hypothesize that the septal-temporal organization of the hippocampus axis also provides a multi-scale spatial representation that may be exploited during complex rodent navigation. To test this hypothesis, we developed a multi-scale model of the hippocampus evaluated it with a simulated rat on a multi-goal task, initially in a simplified environment, and then on a more complex environment where multiple obstacles are introduced. In addition to the hippocampus providing a spatial representation of the environment, the model includes an actor-critic framework for the motivated learning of the different tasks.
机译:我们基于最近对海马的研究显示了啮齿动物海马的生物学启发的计​​算模型,表明其纵轴参与了复杂的空间导航。而海马的两个极点,即中隔(背侧)和颞侧(腹侧),都对空间信息进行编码;传统上,间隔区域更多地归因于导航和动作选择;而颞极则更多地参与了学习和动机。在这项工作中,我们假设海马轴的时空组织也提供了多尺度的空间表示,可在复杂的啮齿动物导航期间加以利用。为了检验该假设,我们开发了海马的多尺度模型,该模型是用模拟大鼠在多目标任务中对其进行评估的,首先是在简化的环境中,然后是在引入多个障碍的更复杂的环境中。除了海马提供环境的空间表示之外,该模型还包括一个参与者批判性框架,用于主动学习不同的任务。

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