情境依赖决策任务中冲突信息处理的神经计算模型

IF 1.8 4区 生物学 Q3 BIOPHYSICS Journal of Biological Physics Pub Date : 2022-03-08 DOI:10.1007/s10867-021-09601-9
Francisco M. López, Andrés Pomi
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引用次数: 1

摘要

上下文依赖计算是神经系统的一个重要特征,它赋予神经系统自适应地调整行为反应和灵活区分刺激中相关和不相关信息的能力。这种能力在解决相互冲突的任务时尤为突出。计算神经科学中的一个长期存在的问题,即信息的灵活路由,也与执行上下文依赖关联的能力密切相关。在这里,我们提出了一个扩展的情景依赖的联想记忆模型,以实现在冲突和噪声多属性刺激存在的情景依赖的决策。在这些模型中,输入向量通过克罗内克张量积与上下文向量相乘。为了使模型具有噪声动态,我们将上下文相关的联想记忆嵌入到一个泄漏竞争累加器模型中,最后,我们在一个猴子在上下文相关的冲突决策任务中的行为实验中证明了该模型的功能。最后,我们讨论了张量积的神经可行性,并提出了一个暗示性的观察,即张量上下文模型的能力与最近关于大脑组织不同水平的功能灵活性的实验发现惊人地一致。
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A neurocomputational model for the processing of conflicting information in context-dependent decision tasks

Context-dependent computation is a relevant characteristic of neural systems, endowing them with the capacity of adaptively modifying behavioral responses and flexibly discriminating between relevant and irrelevant information in a stimulus. This ability is particularly highlighted in solving conflicting tasks. A long-standing problem in computational neuroscience, flexible routing of information, is also closely linked with the ability to perform context-dependent associations. Here we present an extension of a context-dependent associative memory model to achieve context-dependent decision-making in the presence of conflicting and noisy multi-attribute stimuli. In these models, the input vectors are multiplied by context vectors via the Kronecker tensor product. To outfit the model with a noisy dynamic, we embedded the context-dependent associative memory in a leaky competing accumulator model, and, finally, we proved the power of the model in the reproduction of a behavioral experiment with monkeys in a context-dependent conflicting decision-making task. At the end, we discuss the neural feasibility of the tensor product and made the suggestive observation that the capacities of tensor context models are surprisingly in alignment with the more recent experimental findings about functional flexibility at different levels of brain organization.

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来源期刊
Journal of Biological Physics
Journal of Biological Physics 生物-生物物理
CiteScore
3.00
自引率
5.60%
发文量
20
审稿时长
>12 weeks
期刊介绍: Many physicists are turning their attention to domains that were not traditionally part of physics and are applying the sophisticated tools of theoretical, computational and experimental physics to investigate biological processes, systems and materials. The Journal of Biological Physics provides a medium where this growing community of scientists can publish its results and discuss its aims and methods. It welcomes papers which use the tools of physics in an innovative way to study biological problems, as well as research aimed at providing a better understanding of the physical principles underlying biological processes.
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