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M-FCCL: : Memory-based concept-cognitive learning for dynamic fuzzy data classification and knowledge fusion

Published: 01 December 2023 Publication History

Abstract

Concept-cognitive learning (CCL) is an emerging field for studying the representation and processing of knowledge embedded in data. Many efforts are focused on this field due to the interpretability and effectiveness of the formal concept (not pseudo concept). However, the standard CCL methods cannot tackle continuous data directly. Although the current fuzzy-based CCL (FCCL) is a straightforward approach to discovering the knowledge embedded in continuous data, it does not sufficiently utilize the native advantage of concepts in simulating the cognitive mechanism. Then it causes it to be incomplete and complex cognition. Inspired by the memory mechanism, this paper combines the recalling and forgetting mechanisms with CCL, called memory-based concept-cognitive learning (M-FCCL). Specifically, a cosine measure is introduced to describe the relationship of samples and construct cosine-similar granules to learn the concept. Subsequently, a fuzzy three-way concept based on the cosine similar granules is defined to represent and discover knowledge. Furthermore, two memory mechanisms are borrowed for the process of concept cognition for dynamic data classification and knowledge fusion: concept-recalling can enhance the effectiveness of concept learning, and concept-forgetting can effectively reduce the complexity of concept cognition. Finally, some experiments are compared with other methods on 16 benchmark datasets to show that M-FCCL achieves superior performance. Specifically, on these datasets, the proposed M-FCCL method achieves 17.02% and 18.54% classification accuracy gain compared with some advanced CCL mechanisms and popular classification methods.

Highlights

A novel memory-based concept-cognitive learning model is established.
The fuzzy three-way concept based on cosine similarity granule is defined to represent knowledge.
A concept-recalling mechanism enhances the performance of concept learning.
A concept-forgetting mechanism is utilized to reduce the complexity of concept cognitive.
Extensive experiments show that the proposed approach is effective.

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Published In

cover image Information Fusion
Information Fusion  Volume 100, Issue C
Dec 2023
963 pages

Publisher

Elsevier Science Publishers B. V.

Netherlands

Publication History

Published: 01 December 2023

Author Tags

  1. Concept-cognitive learning
  2. Dynamic data classification
  3. Knowledge fusion
  4. Granular computing
  5. Three-way decision

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  • (2024)Optimal scale selection approach for classification based on generalized multi-scale formal contextApplied Soft Computing10.1016/j.asoc.2024.111277152:COnline publication date: 1-Feb-2024
  • (2024)Semi-supervised feature selection by minimum neighborhood redundancy and maximum neighborhood relevancyApplied Intelligence10.1007/s10489-024-05578-954:17-18(7750-7764)Online publication date: 1-Sep-2024
  • (2024)Multi-view key information representation and multi-modal fusion for single-subject routine action recognitionApplied Intelligence10.1007/s10489-024-05319-y54:4(3222-3244)Online publication date: 1-Feb-2024

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