Neural Langevin Machine: a local asymmetric learning rule can be creative
read the original abstract
Fixed points of recurrent neural networks can be leveraged to store and generate information. These fixed points can be captured by the Boltzmann-Gibbs measure, which leads to neural Langevin dynamics that can be used to find them for generative learning of a real dataset. We call this type of generative model a neural Langevin machine, which derives an asymmetric and firing-rate-speed adjusted learning rule requiring only local neural signals, thereby bearing biological relevance in terms of local predictive learning. An interesting out-of-equilibrium regime of the generative process is revealed, together with a memorization-to-generalization transition with increasing training data size. The neuro-inspired machine can also realize a continuous exploration of the phase space for different kinds of generative images and can denoise a corrupted image as well.
This paper has not been read by Pith yet.
Forward citations
Cited by 1 Pith paper
-
Chaos in high-dimensional dynamical systems with tunable non-reciprocity
Any non-reciprocal component in high-dimensional dynamical systems drives the dynamics onto a chaotic attractor, with maximal Lyapunov exponent non-monotonic in the non-reciprocity degree.
discussion (0)
Sign in with ORCID, Apple, or X to comment. Anyone can read and Pith papers without signing in.