We propose the predictive forward-forward (PFF) algorithm for conducting credit assignment in neural systems. Specifically, we design a novel, dynamic recurrent neural system that learns a directed generative circuit jointly and simultaneously with a representation circuit. Notably, the system integrates learnable lateral competition, noise injection, and elements of predictive coding, an emerging and viable neurobiological process theory of cortical function, with the forward-forward (FF) adaptation scheme. Furthermore, PFF efficiently learns to propagate learning signals and updates synapses with forward passes only, eliminating key structural and computational constraints imposed by backpropagation-based schemes. Besides computational advantages, the PFF process could prove useful for understanding the learning mechanisms behind biological neurons that use local signals despite missing feedback connections. We run experiments on image data and demonstrate that the PFF procedure works as well as backpropagation, offering a promising brain-inspired algorithm for classifying, reconstructing, and synthesizing data patterns.
翻译:我们提出了用于神经系统中进行信用分配的预测前向前向(PFF)算法。具体来说,我们设计了一种新颖的动态循环神经系统,在表示电路中同时学习有向生成电路。值得注意的是,该系统使用可学习的横向竞争、噪声注入和预测编码的元素集成了前向前向(FF)适应方案。此外,PFF有效地学习了如何通过前向传递传播信息信号并仅通过前向传递更新突触,消除了反向传播算法方案所施加的关键结构和计算约束。除了计算优势之外,PFF过程可能有助于理解使用本地信号的生物神经元背后的学习机制,尽管缺少反馈连接。我们在图像数据上进行实验,证明PFF过程可以像反向传播一样有效,为分类、重建和合成数据模式提供了有前途的基于大脑的算法。