Ming Hu Ha


Ontology type: schema:Person     


Person Info

NAME

Ming Hu

SURNAME

Ha

Publications in SciGraph latest 50 shown

  • 2018-08 Credibility support vector machines based on fuzzy outputs in SOFT COMPUTING
  • 2017-10 Optimization of water allocation decisions under uncertainty: the case of option contracts in JOURNAL OF AMBIENT INTELLIGENCE AND HUMANIZED COMPUTING
  • 2017-03 A portfolio optimization model for minimizing soft margin-based generalization bound in JOURNAL OF INTELLIGENT MANUFACTURING
  • 2016-12 Multi-asset Option Pricing in an Uncertain Financial Market with Jump Risk in JOURNAL OF UNCERTAINTY ANALYSIS AND APPLICATIONS
  • 2016 Pan-uncertain Measure in INTERNATIONAL CONFERENCE ON ORIENTAL THINKING AND FUZZY LOGIC
  • 2016 A Fixed-Length Source Coding Theorem on Quasi-Probability Space in FUZZY SYSTEMS & OPERATIONS RESEARCH AND MANAGEMENT
  • 2016 Distance Measures for Interval-Valued Intuitionistic Hesitant Fuzzy Sets in FUZZY SYSTEMS & OPERATIONS RESEARCH AND MANAGEMENT
  • 2013-11 A new support vector machine based on type-2 fuzzy samples in SOFT COMPUTING
  • 2013-04 The support vector machine based on intuitionistic fuzzy number and kernel function in SOFT COMPUTING
  • 2013-03 Quadratic entropy of uncertain sets in FUZZY OPTIMIZATION AND DECISION MAKING
  • 2012 Information Entropy of Discrete Quasi-random Variables and Its Properties in FUZZY ENGINEERING AND OPERATIONS RESEARCH
  • 2011-10 Constructing composite search directions with parameters in quadratic interpolation models in JOURNAL OF GLOBAL OPTIMIZATION
  • 2010 An Improved Algorithm of Unbalanced Data SVM in FUZZY INFORMATION AND ENGINEERING 2010
  • 2010 The Key Theorem of Learning Theory Based on Sugeno Measure and Fuzzy Random Samples in LIFE SYSTEM MODELING AND INTELLIGENT COMPUTING
  • 2009-09 Linear feature-weighted support vector machine in FUZZY INFORMATION AND ENGINEERING
  • 2009 The Key Theorem of Learning Theory on Uncertainty Space in ADVANCES IN NEURAL NETWORKS – ISNN 2009
  • 2009 Support Vector Machines Based on Sectional Set Fuzzy K-Means Clustering in FUZZY INFORMATION AND ENGINEERING
  • 2009 The Bounds on the Rate of Uniform Convergence of Learning Process on Uncertainty Space in ADVANCES IN NEURAL NETWORKS – ISNN 2009
  • 2008-12 On the properties of sequences of fuzzy-valued Choquet integrable functions in FUZZY OPTIMIZATION AND DECISION MAKING
  • 2007-02 An On-Line Multi-CBR Agent Dispatching Algorithm in SOFT COMPUTING
  • 2007-02 Fuzzy knowledge representation and reasoning using a generalized fuzzy petri net and a similarity measure in SOFT COMPUTING
  • 2007-01 An On-line Multi-CBR Agent Dispatching Algorithm in SOFT COMPUTING
  • 2007 Sequences of Fuzzy-Valued Choquet Integrable Functions in FUZZY INFORMATION AND ENGINEERING
  • 2006-06 The key theorem and the bounds on the rate of uniform convergence of learning theory on Sugeno measure space in SCIENCE IN CHINA SERIES F INFORMATION SCIENCES
  • 2006 Optical Font Recognition of Chinese Characters Based on Texture Features in ADVANCES IN MACHINE LEARNING AND CYBERNETICS
  • 2006 Refinement of Fuzzy Production Rules by Using a Fuzzy-Neural Approach in ADVANCES IN MACHINE LEARNING AND CYBERNETICS
  • Affiliations

  • Hebei University (current)
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