4.8 Article

Interactive Transfer Learning-Assisted Fuzzy Neural Network

Journal

IEEE TRANSACTIONS ON FUZZY SYSTEMS
Volume 30, Issue 6, Pages 1900-1913

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TFUZZ.2021.3070156

Keywords

Fuzzy neural networks; Neurons; Transfer learning; Uncertainty; Neural networks; Learning systems; Knowledge engineering; Fuzzy neural network (FNN); generalization performance; interactive transfer learning (ITL); negative transfer

Funding

  1. National Science Foundation of China [2018YFC1900800-5]
  2. Beijing Outstanding Young Scientist Program [61890930-5, 61903010, 62021003]
  3. Beijing Natural Science Foundation [BJJWZYJH01201910005020]
  4. [KZ202110005009]

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This article introduces an interactive transfer learning (ITL) algorithm to improve the learning performance of fuzzy neural network (FNN). Through knowledge filtering, self-balancing mechanism, and structural competition algorithm, ITL-FNN can achieve effective knowledge transfer and optimize learning performance between different scenes.
Transfer learning algorithm can provide a framework to utilize the previous knowledge to train fuzzy neural network (FNN). However, the performance of TL-based FNN will be destroyed by the knowledge over-fitting problem in the learning process. To solve this problem, an interactive transfer learning (ITL) algorithm, which can alleviate the negative transfer among different domains to improve the learning performance of FNN, is designed and analyzed in this article. This ITL-assisted FNN (ITL-FNN) contains the following advantages. First, a knowledge filter algorithm is developed to reconstruct the knowledge in source scene by balancing the matching accuracy and diversity. Then, the knowledge from source scene can fit the instance of target scene with suitable accuracy. Second, a self-balancing mechanism is designed to balance the driven information between the source and target scenes. Then, the knowledge can be refitted to reduce the useless information. Third, a structural competition algorithm is proposed to adjust the knowledge of FNN. Then, the proposed ITL-FNN can achieve compact structure to improve the generalization performance. Finally, some benchmark problems and industrial applications are provided to demonstrate the merits of ITL-FNN.

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