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PyTSK: A Python Toolbox for TSK Fuzzy Systems

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arxiv 2206.03310 v1 pith:TPZBWDAE submitted 2022-06-07 cs.LG

PyTSK: A Python Toolbox for TSK Fuzzy Systems

classification cs.LG
keywords fuzzypytsksystemsalgorithmstoolboxdevelopingpythonallows
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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This paper presents PyTSK, a Python toolbox for developing Takagi-Sugeno-Kang (TSK) fuzzy systems. Based on scikit-learn and PyTorch, PyTSK allows users to optimize TSK fuzzy systems using fuzzy clustering or mini-batch gradient descent (MBGD) based algorithms. Several state-of-the-art MBGD-based optimization algorithms are implemented in the toolbox, which can improve the generalization performance of TSK fuzzy systems, especially for big data applications. PyTSK can also be easily extended and customized for more complicated algorithms, such as modifying the structure of TSK fuzzy systems, developing more sophisticated training algorithms, and combining TSK fuzzy systems with neural networks. The code of PyTSK can be found at https://github.com/YuqiCui/pytsk.

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