Neuroscience-inspired online unsupervised learning algorithms
Abstract
Although the currently popular deep learning networks achieve unprecedented performance on some tasks, the human brain still has a monopoly on general intelligence. Motivated by this and biological implausibility of deep learning networks, we developed a family of biologically plausible artificial neural networks (NNs) for unsupervised learning. Our approach is based on optimizing principled objective functions containing a term that matches the pairwise similarity of outputs to the similarity of inputs, hence the name - similarity-based. Gradient-based online optimization of such similarity-based objective functions can be implemented by NNs with biologically plausible local learning rules. Similarity-based cost functions and associated NNs solve unsupervised learning tasks such as linear dimensionality reduction, sparse and/or nonnegative feature extraction, blind nonnegative source separation, clustering and manifold learning.
Keywords
Cite
@article{arxiv.1908.01867,
title = {Neuroscience-inspired online unsupervised learning algorithms},
author = {Cengiz Pehlevan and Dmitri B. Chklovskii},
journal= {arXiv preprint arXiv:1908.01867},
year = {2019}
}
Comments
Accepted for publication in IEEE Signal Processing Magazine