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  1.  30
    Multiobjective Personalized Recommendation Algorithm Using Extreme Point Guided Evolutionary Computation.Qiuzhen Lin, Xiaozhou Wang, Bishan Hu, Lijia Ma, Fei Chen, Jianqiang Li & Carlos A. Coello Coello - 2018 - Complexity 2018:1-18.
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  2.  23
    Evolutionary Search with Multiple Utopian Reference Points in Decomposition-Based Multiobjective Optimization.Wu Lin, Qiuzhen Lin, Zexuan Zhu, Jianqiang Li, Jianyong Chen & Zhong Ming - 2019 - Complexity 2019:1-22.
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  3.  17
    A Constrained Solution Update Strategy for Multiobjective Evolutionary Algorithm Based on Decomposition.Yuchao Su, Qiuzhen Lin, Jia Wang, Jianqiang Li, Jianyong Chen & Zhong Ming - 2019 - Complexity 2019:1-11.
    This paper proposes a constrained solution update strategy for multiobjective evolutionary algorithm based on decomposition, in which each agent aims to optimize one decomposed subproblem. Different from the existing approaches that assign one solution to each agent, our approach allocates the closest solutions to each agent and thus the number of solutions in an agent may be zero and no less than one. Regarding the agent with no solution, it will be assigned one solution in priority, once offspring are generated (...)
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    On Stability of Multi-Valued Nonlinear Feedback Shift Registers.Haiyan Wang, Qiuzhen Lin, Jianyong Chen, Jianqiang Li, Jianghua Zhong, Dongdai Lin, Jia Wang & Lijia Ma - 2019 - Complexity 2019:1-11.
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    Dynamic Multiobjective Optimization with Multiple Response Strategies Based on Linear Environment Detection.Qiyuan Yu, Shen Zhong, Zun Liu, Qiuzhen Lin & Peizhi Huang - 2020 - Complexity 2020:1-26.
    Dynamic multiobjective optimization problems bring more challenges for multiobjective evolutionary algorithm due to its time-varying characteristic. To handle this kind of DMOPs, this paper presents a dynamic MOEA with multiple response strategies based on linear environment detection, called DMOEA-LEM. In this approach, different types of environmental changes are estimated and then the corresponding response strategies are activated to generate an efficient initial population for the new environment. DMOEA-LEM not only detects whether the environmental changes but also estimates the types of (...)
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