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Sparse Coding Models Can Exhibit Decreasing Sparseness while Learning Sparse Codes for Natural Images

机译:稀疏编码模型可以在学习自然图像的稀疏代码时表现出稀疏性

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摘要

The sparse coding hypothesis has enjoyed much success in predicting response properties of simple cells in primary visual cortex (V1) based solely on the statistics of natural scenes. In typical sparse coding models, model neuron activities and receptive fields are optimized to accurately represent input stimuli using the least amount of neural activity. As these networks develop to represent a given class of stimulus, the receptive fields are refined so that they capture the most important stimulus features. Intuitively, this is expected to result in sparser network activity over time. Recent experiments, however, show that stimulus-evoked activity in ferret V1 becomes less sparse during development, presenting an apparent challenge to the sparse coding hypothesis. Here we demonstrate that some sparse coding models, such as those employing homeostatic mechanisms on neural firing rates, can exhibit decreasing sparseness during learning, while still achieving good agreement with mature V1 receptive field shapes and a reasonably sparse mature network state. We conclude that observed developmental trends do not rule out sparseness as a principle of neural coding per se: a mature network can perform sparse coding even if sparseness decreases somewhat during development. To make comparisons between model and physiological receptive fields, we introduce a new nonparametric method for comparing receptive field shapes using image registration techniques.
机译:仅基于自然场景的统计信息,稀疏编码假设在预测初级视觉皮层(V1)中简单细胞的响应特性方面已经取得了很大的成功。在典型的稀疏编码模型中,对模型神经元活动和感受野进行了优化,以使用最少的神经活动量来准确表示输入刺激。随着这些网络发展成代表给定类别的刺激,接受场得到了完善,从而它们捕获了最重要的刺激特征。直观上,随着时间的推移,这将导致网络活动稀疏。然而,最近的实验表明,雪貂V1中刺激诱发的活动在发育过程中变得稀疏,这对稀疏编码假设提出了明显的挑战。在这里,我们证明了一些稀疏编码模型,例如在神经激发速率上采用稳态机制的那些,在学习过程中可以表现出稀疏性的降低,同时仍与成熟的V1接收场形状和合理稀疏的成熟网络状态保持良好的一致性。我们得出的结论是,观察到的发展趋势并不排除稀疏性是神经编码本身的原理:即使在开发过程中稀疏性有所降低,成熟的网络也可以执行稀疏编码。为了在模型和生理感受野之间进行比较,我们引入了一种新的非参数方法,用于使用图像配准技术比较感受野的形状。

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