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Generative Fuzzy System for Sequence-to-Sequence Learning via Rule-Based Inference
Journal article   Peer reviewed

Generative Fuzzy System for Sequence-to-Sequence Learning via Rule-Based Inference

Hailong Yang, Zhaohong Deng, Wei Zhang, Zhuangzhuang Zhao, Guanjin Wang and Kup-Sze Choi
IEEE transaction on neural networks and learning systems, Early Access
2025
PMID: 41150248

Abstract

Codes Computational modeling Electronic mail Fuzzy sets Fuzzy system Fuzzy systems generative model (GM) Learning systems Machine translation sequence-to-sequence tokenizer Training transformer Transformers Voting
Generative models (GMs), particularly large language models (LLMs), have garnered significant attention in machine learning and artificial intelligence for their ability to generate new data by learning the statistical properties of training data and creating data that resemble the original data. This capability offers a wide range of applications across various domains. However, the complex structures and numerous model parameters of GMs obscure the input-output processes and complicate the understanding and control of the outputs. Moreover, the purely data-driven learning mechanism limits GMs' abilities to acquire broader knowledge. There remains substantial potential for enhancing the robustness and generalization capabilities of GMs. In this work, we leverage fuzzy system, a classical modeling method, to combine both data-driven and knowledge-driven mechanisms for generative tasks. We propose a novel generative fuzzy system framework, named GenFS, which integrates the deep learning capabilities of GMs with the term-based interpretability and dual-driven mechanisms of fuzzy systems. Specifically, we propose an end-to-end GenFS-based model for sequence generation, called FuzzyS2S. A series of test studies were conducted on 12 datasets, covering three distinct categories of generative tasks: machine translation, code generation, and summary generation. The results demonstrate that FuzzyS2S outperforms the transformer in terms of accuracy and fluency. Furthermore, it exhibits better performance than state-of-the-art models T5 and CodeT5 for some application scenarios.

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Collaboration types
Domestic collaboration
International collaboration
Citation topics
4 Electrical Engineering, Electronics & Computer Science
4.61 Artificial Intelligence & Machine Learning
4.61.493 Neural-Fuzzy Integration
Web Of Science research areas
Computer Science, Artificial Intelligence
Computer Science, Hardware & Architecture
Computer Science, Theory & Methods
Engineering, Electrical & Electronic
ESI research areas
Computer Science
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