Brain-like Flexible Visual Inference by Harnessing Feedback-Feedforward Alignment.

Advances in neural information processing systems Pub Date : 2023-12-01 Epub Date: 2024-05-30
Tahereh Toosi, Elias B Issa
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Abstract

In natural vision, feedback connections support versatile visual inference capabilities such as making sense of the occluded or noisy bottom-up sensory information or mediating pure top-down processes such as imagination. However, the mechanisms by which the feedback pathway learns to give rise to these capabilities flexibly are not clear. We propose that top-down effects emerge through alignment between feedforward and feedback pathways, each optimizing its own objectives. To achieve this co-optimization, we introduce Feedback-Feedforward Alignment (FFA), a learning algorithm that leverages feedback and feedforward pathways as mutual credit assignment computational graphs, enabling alignment. In our study, we demonstrate the effectiveness of FFA in co-optimizing classification and reconstruction tasks on widely used MNIST and CIFAR10 datasets. Notably, the alignment mechanism in FFA endows feedback connections with emergent visual inference functions, including denoising, resolving occlusions, hallucination, and imagination. Moreover, FFA offers bio-plausibility compared to traditional back-propagation (BP) methods in implementation. By repurposing the computational graph of credit assignment into a goal-driven feedback pathway, FFA alleviates weight transport problems encountered in BP, enhancing the bio-plausibility of the learning algorithm. Our study presents FFA as a promising proof-of-concept for the mechanisms underlying how feedback connections in the visual cortex support flexible visual functions. This work also contributes to the broader field of visual inference underlying perceptual phenomena and has implications for developing more biologically inspired learning algorithms.

利用 "反馈-前馈对齐 "实现类脑灵活视觉推理
在自然视觉中,反馈连接支持多方面的视觉推理能力,如理解被遮挡或嘈杂的自下而上的感官信息,或介导纯粹的自上而下的过程,如想象。然而,反馈通路通过何种机制学会灵活地产生这些能力,目前尚不清楚。我们提出,自上而下的效果是通过前馈和反馈通路之间的协调产生的,每个通路都在优化自己的目标。为了实现这种共同优化,我们引入了反馈-前馈配准(FFA),这是一种学习算法,它利用反馈和前馈途径作为相互信用分配计算图,从而实现配准。在研究中,我们在广泛使用的 MNIST 和 CIFAR10 数据集上证明了 FFA 在共同优化分类和重建任务方面的有效性。值得注意的是,FFA 中的配准机制赋予反馈连接以新兴的视觉推理功能,包括去噪、解决遮挡、幻觉和想象。此外,与传统的反向传播(BP)方法相比,FFA 在实现上具有生物可信性。通过将学分分配的计算图转化为目标驱动的反馈路径,FFA 缓解了 BP 中遇到的权重传输问题,增强了学习算法的生物拟真性。我们的研究证明,FFA 是视觉皮层中反馈连接如何支持灵活的视觉功能的一种很有前景的概念证明。这项工作还有助于为感知现象提供基础的视觉推理这一更广阔的领域,并对开发更具生物启发的学习算法具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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