Possibilistic Clustering Enabled Neuro Fuzzy Logic

Ruprecht, Blake ; Wu, Wenlong ; Islam, Muhammad Aminul ; Anderson, Derek ; Keller, James ; Scott, Grant ; Davis, Curt ; Petry, Fred ; Elmore, Paul ; Nock, Kristen ; Gilmour, Elizabeth ; Mitra, Sushmita (2020) Possibilistic Clustering Enabled Neuro Fuzzy Logic 2020 IEEE International Conference on Fuzzy Systems (FUZZ-IEEE) . pp. 1-8.

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Official URL: https://doi.org/10.1109/FUZZ48607.2020.9177593

Related URL: http://dx.doi.org/10.1109/FUZZ48607.2020.9177593

Abstract

Artificial neural networks are a dominant force in our modern era of data-driven artificial intelligence. The adaptive neuro fuzzy inference system (ANFIS) is a neural network based on fuzzy logic versus a more traditional premise like convolution. Advantages of ANFIS include the ability to encode and potentially understand machine learned neural information in the pursuit of explainable, interpretable, and ultimately trustworthy artificial intelligence. However, real-world data is almost always imperfect, e.g., incomplete or noisy, and ANFIS is not naturally robust. Specifically, ANFIS is susceptible to over inflated uncertainty, poor antecedent (fuzzy set) data alignment, degenerate optimization conditions, and hard to interpret logic, to name a few factors. Herein, we explore the use of possibilistic clustering to identify outliers, specifically typicality degrees, to increase the robustness of ANFIS; or any fuzzy logic neuron/network. Experiments are presented that demonstrate the need and quality of the proposed solutions in the pursuit of robust interpretable machine learned neuro fuzzy logic solutions.

Item Type:Article
Source:Copyright of this article belongs to Association for Computing Machinery
ID Code:140121
Deposited On:06 Sep 2025 06:08
Last Modified:06 Sep 2025 06:08

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