Epileptic Seizure Detection With Permutation Fuzzy Entropy Using Robust Machine Learning Techniques
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Rui Cao | Jie Xiang | Bin Wang | Yuan Gao | Muhammad Shahid Iqbal | Yan Niu | Xin Wang | Jie Sun | Muhammad Shahid Iqbal | Waqar Hussain | Qionghui Zhan | Zhou Mengni | Bin Wang | Jie Xiang | Xin Wang | Yan Niu | R. Cao | Waqar Hussain | Jie Sun | Qionghui Zhan | Yuan Gao | Zhou Mengni
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