Visible to the public Bayesian Pruned Random Rule Foams for XAI

TitleBayesian Pruned Random Rule Foams for XAI
Publication TypeConference Paper
Year of Publication2021
AuthorsPanda, Akash Kumar, Kosko, Bart
Conference Name2021 IEEE International Conference on Fuzzy Systems (FUZZ-IEEE)
Date PublishedJuly 2021
PublisherIEEE
ISBN Number978-1-6654-4407-1
Keywordsadditive fuzzy systems, Bayes methods, Bayesian rule posteriors, Computational modeling, Conferences, Data models, fuzzy systems, generalized mixtures, Gray-scale, pubcrawl, resilience, Resiliency, rule foam, Scalability, Uncertainty, xai
AbstractA random rule foam grows and combines several independent fuzzy rule-based systems by randomly sampling input-output data from a trained deep neural classifier. The random rule foam defines an interpretable proxy system for the sampled black-box classifier. The random foam gives the complete Bayesian posterior probabilities over the foam subsystems that contribute to the proxy system's output for a given pattern input. It also gives the Bayesian posterior over the if-then fuzzy rules in each of these constituent foams. The random foam also computes a conditional variance that describes the uncertainty in its predicted output given the random foam's learned rule structure. The mixture structure leads to bootstrap confidence intervals around the output. Using the Bayesian posterior probabilities to prune or discard low-probability sub-foams improves the system's classification accuracy. Simulations used the MNIST image data set of 60,000 gray-scale images of ten hand-written digits. Dropping the lowest-probability foams per input pattern brought the pruned random foam's classification accuracy nearly to that of the neural classifier. Posterior pruning outperformed simple accuracy pruning of a random foam and outperformed a random forest trained on the same neural classifier.
URLhttps://ieeexplore.ieee.org/document/9494525
DOI10.1109/FUZZ45933.2021.9494525
Citation Keypanda_bayesian_2021