AIJan 15, 2023

Max-min Learning of Approximate Weight Matrices from Fuzzy Data

arXiv:2301.06141v23 citationsh-index: 4
AI Analysis

This work addresses incremental improvements in fuzzy systems and possibilistic rule-based systems for applications in approximate reasoning and data modeling.

The paper tackles the problem of learning approximate weight matrices from fuzzy data using max-min fuzzy relational equations, by computing the Chebyshev distance and describing the structure of approximate solution sets, with results including an explicit formula for minimal learning error and a method to construct minimal-error weight matrices.

In this article, we study the approximate solutions set $Λ_b$ of an inconsistent system of $\max-\min$ fuzzy relational equations $(S): A \Box_{\min}^{\max}x =b$. Using the $L_\infty$ norm, we compute by an explicit analytical formula the Chebyshev distance $Δ~=~\inf_{c \in \mathcal{C}} \Vert b -c \Vert$, where $\mathcal{C}$ is the set of second members of the consistent systems defined with the same matrix $A$. We study the set $\mathcal{C}_b$ of Chebyshev approximations of the second member $b$ i.e., vectors $c \in \mathcal{C}$ such that $\Vert b -c \Vert = Δ$, which is associated to the approximate solutions set $Λ_b$ in the following sense: an element of the set $Λ_b$ is a solution vector $x^\ast$ of a system $A \Box_{\min}^{\max}x =c$ where $c \in \mathcal{C}_b$. As main results, we describe both the structure of the set $Λ_b$ and that of the set $\mathcal{C}_b$. We then introduce a paradigm for $\max-\min$ learning weight matrices that relates input and output data from training data. The learning error is expressed in terms of the $L_\infty$ norm. We compute by an explicit formula the minimal value of the learning error according to the training data. We give a method to construct weight matrices whose learning error is minimal, that we call approximate weight matrices. Finally, as an application of our results, we show how to learn approximately the rule parameters of a possibilistic rule-based system according to multiple training data.

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