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Inference and Segmentation in Cortical Processing

机译:皮层处理中的推理和分割

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摘要

We present a modelling framework for cortical processing aimed at understanding how, maintaining biological plausibility, neural network models can: (a) approximate general inference algorithms like belief propagation, combining bottom-up and top-down information, (b) solve Rosenblatt's classical superposition problem, which we link to the binding problem, and (c) do so based on an unsupervised learning approach. The framework leads to two related models: the first model shows that the use of top-down feedback significantly improves the network's ability to perform inference of corrupted inputs; the second model, including oscillatory behavior in the processing units, shows that the superposition problem can be efficiently solved based on the unit's phases.
机译:我们提供了一个皮质处理的建模框架,旨在了解如何保持生物学的合理性,神经网络模型可以:(a)近似一般推理算法,例如信念传播,结合自下而上和自上而下的信息,(b)解决Rosenblatt的经典叠加问题,我们将其链接到绑定问题,并且(c)基于无监督的学习方法来这样做。该框架导致了两个相关的模型:第一个模型表明,使用自上而下的反馈可以显着提高网络执行损坏的输入的推断的能力。第二个模型,包括处理单元中的振荡行为,表明可以基于单元的相位有效地解决叠加问题。

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