Collaborative Learning-Based Clustered Support Vector Machine for Modeling of Nonlinear Processes Subject to Noise
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Li Ming | Bin Fan | XinJiang Lu | Te-Te Hu | Xinjiang Lu | Bin Fan | Tete Hu | Li Ming
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