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Change-based Inference For Invariant Discrimination

机译:基于变化的不变歧视推理

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Under a conventional view of information processing in recurrently connected populations of neurons, computations consist in mapping inputs onto terminal attractor states of the dynamical interactions. However, there is evidence that substantial information representation and processing can occur over the course of the initial evolution of the dynamical states of such populations, a possibility that has attractive computational properties. Here, we suggest a model that explores one such property, namely, the invariance to an irrelevant feature dimension that arises from monitoring not the state of the population, but rather (a statistic of) the change in this state over time. We illustrate our proposal in the context of the bisection task, a paradigmatic example of perceptual learning for which an attractor-state recurrent model has previously been suggested. We show a change-based inference scheme that achieves near optimal performance in the task (with invariance to translation), is robust to high levels of dynamical noise and variations of the synaptic weight matrix, and indeed admits a computationally straightforward learning rule.
机译:在递归连接的神经元群体中信息处理的传统观点下,计算包括将输入映射到动态相互作用的末端吸引子状态。但是,有证据表明,在此类种群的动态状态的初始演化过程中,可能会发生大量的信息表示和处理,这种可能性具有吸引人的计算特性。在这里,我们建议一种模型,该模型探索一种这样的属性,即对不相关的特征维的不变性,是由于不监视总体状态,而是监视此状态随时间的变化而产生的(统计)。我们在二等分任务的背景下说明了我们的建议,这是感知学习的范式示例,以前已经提出了针对其的吸引子状态递归模型。我们展示了一个基于更改的推理方案,该方案在任务中具有接近最佳的性能(不变翻译),对高水平的动态噪声和突触权重矩阵的变化具有鲁棒性,并且确实接受了计算简单的学习规则。

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