• PhilPapers
  • PhilPeople
  • PhilArchive
  • PhilEvents
  • PhilJobs
  • Sign in
PhilPeople
 
  • Sign in
  • News Feed
  • Find Philosophers
  • Departments
  • Radar
  • Help
 
profile-cover
Drag to reposition
profile picture

Zhu Qi

  •  Home
  •  Publications
    8
    • Most Recent
    • Most Downloaded
    • Topics
  •  News and Updates

 More details
  • All publications (8)
  •  35
    Cognitive Driven Multilayer Self-Paced Learning with Misclassified Samples
    with Ning Yuan and Donghai Guan
    Complexity 2019 1-10. 2019.
    In recent years, self-paced learning has attracted much attention due to its improvement to nonconvex optimization based machine learning algorithms. As a methodology introduced from human learning, SPL dynamically evaluates the learning difficulty of each sample and provides the weighted learning model against the negative effects from hard-learning samples. In this study, we proposed a cognitive driven SPL method, i.e., retrospective robust self-paced learning, which is inspired by the followi…Read more
    In recent years, self-paced learning has attracted much attention due to its improvement to nonconvex optimization based machine learning algorithms. As a methodology introduced from human learning, SPL dynamically evaluates the learning difficulty of each sample and provides the weighted learning model against the negative effects from hard-learning samples. In this study, we proposed a cognitive driven SPL method, i.e., retrospective robust self-paced learning, which is inspired by the following two issues in human learning process: the misclassified samples are more impressive in upcoming learning, and the model of the follow-up learning process based on large number of samples can be used to reduce the risk of poor generalization in initial learning phase. We simultaneously estimated the degrees of learning-difficulty and misclassified in each step of SPL and proposed a framework to construct multilevel SPL for improving the robustness of the initial learning phase of SPL. The proposed method can be viewed as a multilayer model and the output of the previous layer can guide constructing robust initialization model of the next layer. The experimental results show that the R2SPL outperforms the conventional self-paced learning models in classification task.
  •  71
    Horizontal Spatial Metaphors for Morality: A Cross-Cultural Study of Han Chinese Students and Ethnic Minority Hui Students in China
    with Rui Chen, Jiao Sai, Renlai Zhou, Peng Li, and Shunchao He
    Frontiers in Psychology 9. 2018.
    Philosophy of Cognitive Science
  •  138
    Increased Posterior Insula-Sensorimotor Connectivity Is Associated with Cognitive Function in Healthy Participants with Sleep Complaints
    with Chun-Hong Liu, Cun-Zhi Liu, Ji-Liang Fang, Shun-Li Lu, Li-Rong Tang, Chuan-Yue Wang, and Qing-Quan Liu
    Frontiers in Human Neuroscience 12. 2018.
    Philosophy of Neuroscience
  •  4
    Automotive Cyber-Physical Systems: A Tutorial Introduction
    with Samarjit Chakraborty, Al Faruque Mohammad Abdullah, Chang Wanli, Dip Goswami, and Marilyn Wolf
  •  9
    Proactive Demand Participation of Smart Buildings in Smart Grid
    with Wei Tianshu and Yu Nanpeng
  •  7
    Cross-Layer Codesign for Secure Cyber-Physical Systems
    with Zheng Bowen, Deng Peng, Rajasekhar Anguluri, and Pasqualetti Fabio
  •  7
    Peak-Aware Online Economic Dispatching for Microgrids
    with Ying Zhang, Mohammad Hajiesmaili, Sinan Cai, and Minghua Chen
  •  33
    The transition in the ventral stream from feature to real-world entity representations
    with Guy A. Orban and Wim Vanduffel
    Frontiers in Psychology 5. 2014.
    Philosophy of Cognitive Science
PhilPeople logo

On this site

  • Find a philosopher
  • Find a department
  • The Radar
  • Index of professional philosophers
  • Index of departments
  • Help
  • Acknowledgments
  • Careers
  • Contact us
  • Terms and conditions

Brought to you by

  • The PhilPapers Foundation
  • The American Philosophical Association
  • Centre for Digital Philosophy, Western University
PhilPeople is currently in Beta Sponsored by the PhilPapers Foundation and the American Philosophical Association
Feedback