Continuous Fuzzy Transform as Integral Operator
Giuseppe Patan\`e

TL;DR
This paper introduces the continuous Fuzzy transform as an integral operator, leveraging data-driven membership functions to adapt to data structure and improve computational efficiency in various applications.
Contribution
It generalizes the Fuzzy transform through an integral operator framework and proposes a data-driven approach to define membership functions based on the Laplace-Beltrami spectrum.
Findings
The continuous Fuzzy transform inherits properties like continuity and symmetry from membership functions.
A data-driven method for defining membership functions improves adaptivity and reduces computational costs.
The space of continuous Fuzzy transforms facilitates comparison and efficient computation.
Abstract
The Fuzzy transform is ubiquitous in different research fields and applications, such as image and data compression, data mining, knowledge discovery, and the analysis of linguistic expressions. As a generalisation of the Fuzzy transform, we introduce the continuous Fuzzy transform and its inverse, as an integral operator induced by a kernel function. Through the relation between membership functions and integral kernels, we show that the main properties (e.g., continuity, symmetry) of the membership functions are inherited by the continuous Fuzzy transform. Then, the relation between the continuous Fuzzy transform and integral operators is used to introduce a data-driven Fuzzy transform, which encodes intrinsic information (e.g., structure, geometry, sampling density) about the input data. In this way, we avoid coarse fuzzy partitions, which group data into large clusters that do not…
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