A Nonparametric Framework for Quantifying Generative Inference on Neuromorphic Systems
Abstract
Restricted Boltzmann Machines and Deep Belief Networks have been successfully used in probabilistic generative model applications such as image occlusion removal, pattern completion and motion synthesis. Generative inference in such algorithms can be performed very efficiently on hardware using a Markov Chain Monte Carlo procedure called Gibbs sampling, where stochastic samples are drawn from noisy integrate and fire neurons implemented on neuromorphic substrates. Currently, no satisfactory metrics exist for evaluating the generative performance of such algorithms implemented on high-dimensional data for neuromorphic platforms. This paper demonstrates the application of nonparametric goodness-of-fit testing to both quantify the generative performance as well as provide decision-directed criteria for choosing the parameters of the neuromorphic Gibbs sampler and optimizing usage of hardware resources used during sampling.
Cite
@article{arxiv.1602.05996,
title = {A Nonparametric Framework for Quantifying Generative Inference on Neuromorphic Systems},
author = {Ojash Neopane and Srinjoy Das and Ery Arias-Castro and Kenneth Kreutz-Delgado},
journal= {arXiv preprint arXiv:1602.05996},
year = {2016}
}
Comments
Accepted for lecture presentation at ISCAS 2016