Title | Forward learning with top-down feedback: empirical and analytical characterization |
Publication Type | Journal Article |
Year of Publication | 2023 |
Authors | Srinivasan, RFrancesco, Mignacco, F, Sorbaro, M, Refinetti, M, Kreiman, G, Dellaferrera, G |
Journal | arXiv |
Date Published | 02/2023 |
Abstract | “Forward-only” algorithms, which train neural networks while avoiding a backward pass, have recently gained attention as a way of solving the biologically unrealistic aspects of backpropagation. Here, we first discuss the similarities between two “forward-only” algorithms, the Forward- Forward and PEPITA frameworks, and demonstrate that PEPITA is equivalent to a Forward- Forward framework with top-down feedback connections. Then, we focus on PEPITA to address compelling challenges related to the “forward- only” rules, which include providing an analytical understanding of their dynamics and reducing the gap between their performance and that of backpropagation. We propose a theoretical analysis of the dynamics of PEPITA. In particular, we show that PEPITA is well-approximated by an “adaptive-feedback-alignment” algorithm and we analytically track its performance during learning in a prototype high-dimensional setting. Finally, we develop a strategy to apply the weight mirroring algorithm on “forward-only” algorithms with top-down feedback and we show how it impacts PEPITA’s accuracy and convergence rate. |
URL | https://arxiv.org/abs/2302.05440 |
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