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Efficient probabilistic inference in generic neural networks trained with non-probabilistic feedback

机译:经过非概率反馈训练的通用神经网络中的有效概率推理

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摘要

Animals perform near-optimal probabilistic inference in a wide range of psychophysical tasks. Probabilistic inference requires trial-to-trial representation of the uncertainties associated with task variables and subsequent use of this representation. Previous work has implemented such computations using neural networks with hand-crafted and task-dependent operations. We show that generic neural networks trained with a simple error-based learning rule perform near-optimal probabilistic inference in nine common psychophysical tasks. In a probabilistic categorization task, error-based learning in a generic network simultaneously explains a monkey’s learning curve and the evolution of qualitative aspects of its choice behavior. In all tasks, the number of neurons required for a given level of performance grows sublinearly with the input population size, a substantial improvement on previous implementations of probabilistic inference. The trained networks develop a novel sparsity-based probabilistic population code. Our results suggest that probabilistic inference emerges naturally in generic neural networks trained with error-based learning rules.
机译:动物在广泛的心理生理任务中执行接近最佳概率的推断。概率推论要求对与任务变量相关的不确定性进行从试验到试验的表示,并随后使用该表示。先前的工作已使用具有人工制作和与任务相关的操作的神经网络实现了此类计算。我们表明,使用简单的基于错误的学习规则训练的通用神经网络在九种常见的心理物理任务中执行了接近最佳的概率推理。在概率分类任务中,通用网络中基于错误的学习同时解释了猴子的学习曲线以及其选择行为的定性方面的演变。在所有任务中,给定性能水平所需的神经元数量随输入人口规模的增加而呈线性下降,这是对以前概率推断实现的显着改进。受过训练的网络开发了一种新颖的基于稀疏性的概率人口代码。我们的结果表明,概率推理自然会在使用基于错误的学习规则训练的通用神经网络中出现。

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