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Learning to represent visual input

机译:学习表现视觉输入

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摘要

One of the central problems in computational neuroscience is to understand how the object-recognition pathway of the cortex learns a deep hierarchy of nonlinear feature detectors. Recent progress in machine learning shows that it is possible to learn deep hierarchies without requiring any labelled data. The feature detectors are learned one layer at a time and the goal of the learning procedure is to form a good generative model of images, not to predict the class of each image. The learning procedure only requires the pairwise correlations between the activations of neuron-like processing units in adjacent layers. The original version of the learning procedure is derived from a quadratic ‘energy’ function but it can be extended to allow third-order, multiplicative interactions in which neurons gate the pairwise interactions between other neurons. A technique for factoring the third-order interactions leads to a learning module that again has a simple learning rule based on pairwise correlations. This module looks remarkably like modules that have been proposed by both biologists trying to explain the responses of neurons and engineers trying to create systems that can recognize objects.
机译:计算神经科学的中心问题之一是了解皮质的对象识别路径如何学习非线性特征检测器的深层次结构。机器学习的最新进展表明,无需任何标记数据即可学习深层次结构。一次学习一层特征检测器,学习过程的目标是形成良好的图像生成模型,而不是预测每个图像的类别。学习过程仅要求相邻层中的神经元样处理单元的激活之间成对相关。学习过程的原始版本源自二次方“能量”函数,但可以扩展为允许三阶乘法相互作用,其中神经元控制其他神经元之间的成对相互作用。用于分解三阶交互的技术导致学习模块再次具有基于成对相关性的简单学习规则。这个模块看起来非常类似于生物学家试图解释神经元反应和工程师试图创建可以识别物体的系统所提出的模块。

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