Skip to main navigation
Skip to search
Skip to main content
Lingnan Scholars Home
Help & FAQ
Home
Researcher Profiles
Departments / Units
Research Outputs
Projects / Grants
Research Activities
Impacts
Prizes
Press/Media
Datasets
Student theses
Facilities / Equipments
Search by expertise, name or affiliation
A jumping gene paradigm for evolutionary multiobjective optimization
T. M. CHAN
, K. F. MAN
,
S. KWONG
, K. S. TANG
Research output
:
Journal Publications
›
Journal Article (refereed)
›
peer-review
92
Citations (Scopus)
Overview
Fingerprint
Fingerprint
Dive into the research topics of 'A jumping gene paradigm for evolutionary multiobjective optimization'. Together they form a unique fingerprint.
Sort by
Weight
Alphabetically
Mathematics
Multiobjective Optimization
100%
Evolutionary Computing
100%
Algorithm
66%
Evolutionary Algorithm
33%
Computational
33%
Largest Number
33%
test function φ
33%
Measures
33%
Computer Science
Computing
100%
evolutionary multiobjective optimization
100%
Algorithms
33%
Multiobjective
33%
Classification Algorithm
33%
Functions
33%
Accuracy
33%
Procedures
33%
Evolutionary Algorithms
33%
Physics
Optimization
100%
Gene
100%
Algorithms
25%
Performance
25%
Plant
25%
Work
25%
Speed
25%
Corn
25%