论文标题

自上而下连接在层次稀疏编码中的影响

Effect of top-down connections in Hierarchical Sparse Coding

论文作者

Boutin, Victor, Franciosini, Angelo, Ruffier, Franck, Perrinet, Laurent

论文摘要

分层稀疏编码(HSC)是一个有效代表多维结构化数据(例如图像)的强大模型。解决此计算困难问题的最简单解决方案是将其分解为独立的层小子问题。但是,神经科学证据将表明与预测性编码(PC)理论中的这些子问题相互联系,该理论增加了连续层之间自上而下的连接。在这项研究中,引入了一个称为2层稀疏预测编码(2L-SPC)的新模型,以评估这种层间反馈连接的影响。特别是,将2L-SPC与由一系列独立的套索层制成的分层拉索(HI-LA)网络进行比较。 2L-SPC和2层HI-LA网络在4个不同的数据库上进行训练,并且每一层具有不同的稀疏参数。首先,我们表明,由于反馈机制在层之间传递了预测误差,因此2L-SPC生成的总体预测误差较低。其次,我们证明2L-SPC的推理阶段比HI-LA模型更快地收敛。第三,我们表明2L-SPC也加速了学习过程。最后,两个模型词典的定性分析在其激活概率的支持下,表明2L-SPC功能更为通用和信息。

Hierarchical Sparse Coding (HSC) is a powerful model to efficiently represent multi-dimensional, structured data such as images. The simplest solution to solve this computationally hard problem is to decompose it into independent layer-wise subproblems. However, neuroscientific evidence would suggest inter-connecting these subproblems as in the Predictive Coding (PC) theory, which adds top-down connections between consecutive layers. In this study, a new model called 2-Layers Sparse Predictive Coding (2L-SPC) is introduced to assess the impact of this inter-layer feedback connection. In particular, the 2L-SPC is compared with a Hierarchical Lasso (Hi-La) network made out of a sequence of independent Lasso layers. The 2L-SPC and the 2-layers Hi-La networks are trained on 4 different databases and with different sparsity parameters on each layer. First, we show that the overall prediction error generated by 2L-SPC is lower thanks to the feedback mechanism as it transfers prediction error between layers. Second, we demonstrate that the inference stage of the 2L-SPC is faster to converge than for the Hi-La model. Third, we show that the 2L-SPC also accelerates the learning process. Finally, the qualitative analysis of both models dictionaries, supported by their activation probability, show that the 2L-SPC features are more generic and informative.

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