Special Session & Competitions on Real-Parameter Single Objective Optimization (4 Different Cases)
at CEC-2016, Vancouver, Canada, 25-29 July 2016
Organizers: P N Suganthan, Mostafa Z Ali, Qin Chen
J J Liang, and B Y Qu.
https://github.com/P-N-Suganthan
If you face any difficulties, please inform me ( epnsugan@ntu.edu.sg ).
1.
Q. Chen, B.
Liu, Q. Zhang, J. J. Liang, P. N. Suganthan, B. Y. Qu, "Problem
Definition and Evaluation Criteria for CEC 2015 Special Session and Competition
on Bound Constrained Single-Objective Computationally Expensive Numerical
Optimization", Technical
Report,
Computational Intelligence Laboratory, Zhengzhou University, Zhengzhou, China and Technical Report,
Nanyang Technological University, Singapore, Nov 2014. (Computationally expensive case)
2. J. J. Liang, B. Y. Qu, P. N. Suganthan, Q. Chen, "Problem
Definitions and Evaluation Criteria for the CEC 2015 Competition on
Learning-based Real-Parameter Single Objective Optimization", Technical
Report, Computational Intelligence Laboratory, Zhengzhou University, Zhengzhou, China and Technical Report, Nanyang Technological University, Singapore,
Nov 2014. (Learning-based case)
3.
B. Y. Qu, J. J.
Liang, Z. Y. Wang, Q. Chen, P. N. Suganthan, "Novel Benchmark Functions
for Continuous Multimodal Optimization with Comparative Results," Swarm
and Evolutionary Computation, doi:10.1016/j.swevo.2015.07.003. (Final
Solution Submission Format for a conference paper is Given Here) (Multi-solution niching case)
4. J. J. Liang, B-Y. Qu, P. N. Suganthan, "Problem Definitions and Evaluation Criteria for the CEC 2014 Special Session and Competition on Single Objective Real-Parameter Numerical Optimization", Technical Report 201311, Computational Intelligence Laboratory, Zhengzhou University, Zhengzhou, China and Technical Report, Nanyang Technological University, Singapore, December 2013. (Single parameter-operator set based case)
This round, we are making use of the older problems developed for CEC 2015 and CEC 2014. The distinction between #2 and #4 is that #2 allows you to tune parameters separately for each problem while #4 requires you to use the same parameter setting for all problems. Authors are asked to participate in each of the above separately, i.e. a single paper is expected to tackle only one class of problems above.
Software and Data: https://github.com/P-N-Suganthan
Comparative Analysis Slides: https://github.com/P-N-Suganthan
Papers
Using CEC 2014 Benchmarks (Single Parameter and Operator Set)
UMOEAII |
Testing United Multi operator
Evolutionary AlgorithmsII on Single Objective
Optimization Problems, Saber Elsayed, Noha
Hamza and Ruhul Sarker (Joint-Winner) |
LSHADE_EpSin |
An Ensemble Sinusoidal Parameter
Adaptation incorporated with L-SHADE for solving CEC 2014 problems, Noor
Awad, Mostafa Ali, Ponnuthurai Suganthan and Robert Reynolds (Joint-Winner) |
MC-SHADE |
Success History Based Adaptive
Differential Evolution Algorithm with Multi Chaotic Framework for Parent
Selection Performance, Adam Viktorin, Michal Pluhacek
and Roman Senkerik |
iLSHADE |
Improved LSHADE Algorithm for Single
Objective Real Parameter Optimization, Janez
Brest, Mirjam Sepesy Maucec and Borko Boskovic |
SSEABC |
Self
adaptive Search Equation based Artificial Bee Colony Algorithm on the CEC 2014
Benchmark Functions, Gurcan Yavuz, Dogan Aydin and Thomas Stuetzle |
SPMGTLO |
Single Phase Multi-Group Teaching Learning
Algorithm, Remya Kommadath, Sivadurgaprasad Chinta and
Prakash Kotecha |
AEPDJADE |
Differential Evolution with Auto enhanced Population Diversity: the
Experiments on the CEC'2016 Competition, Ming Yang, Jing Guan and Li Changhe |
SHADE4 |
Evaluating the Performance of SHADE with Competing Strategies on
CEC 2014 Single Parameter Test Suite, Petr
Bujok, Josef Tvrdik and Radka Polakova |
LSHADE44 |
Evaluating the Performance of LSHADE with Competing Strategies on
CEC2014 Single Parameteroperator Test Suite, Radka Polakova, Josef Tvrdik
and Petr Bujok |
Papers Using CEC 2015 Benchmarks (Learning-Based, Tunable for each Problem)
MVMO |
Solving the CEC2016 Real-Parameter Single Objective Optimization
Problems through MVMO-PHM (Technical Report), José L. Rueda, István Erlich (Winner) |
CCLSHADE |
Cooperative Co-evolution using
LSHADE with Restarts For The CEC15 Benchmarks, Mohammed ElAbd |
LSHADE44 |
LSHADE with Competing Strategies Applied to CEC2015 Learning based Test Suite, Radka Polakova, Josef Tvrdik and Petr Bujok |
AsAMP–dD |
An Asynchronous Adaptive Multi
population Model for Distributed Differential Evolution, Ivanoe De Falco,
Antonio Della Cioppa, Umberto Scafuri
and Ernesto Tarantino |
SOMA |
Competition On Learning-based
Real-Parameter Single Objective Optimization by SOMA Swarm Based Algorithm
with SOMARemove Strategy, Ivan Zelinka
and Lukas Tomaszek |
Papers Using CEC 2015 Expensive Benchmarks
MVMO |
Solving the CEC2016 Real-Parameter Single
Objective Optimization Problems through MVMO-PHM (Technical Report), José L. Rueda, István
Erlich (Winner) |
SPMGTLO |
Single Phase MultiGroup
Teaching Learning Algorithm for Computationally Expensive Numerical
Optimization, Remya Kommadath, Sivadurgaprasad Chinta and Prakash Kotecha |
AsBeC_tuned |
A hybrid ABC for expensive optimizations: CEC 2016 competition benchmark, Enrico Ampellio and Luca Vassio |
SHTS |
Simultaneous Heat Transfer Search
for Computationally Expensive Numerical Optimization, Debasis Maharana and Prakash Kotecha |
RYYPO |
Reduced YinYang
Pair Optimization and its Performance on the CEC 2016 Expensive Case, Varun Punnathanam
and Prakash Kotecha |
BaMSOO |
Analysis of the Bayesian Multi-Scale
Optimistic Optimization on the CEC2016 and BBOB Testbeds, Abdullah AlDujaili and Suresh Sundaram |
Paper Submission
Authors must strictly follow the manuscript preparation instructions: http://www.wcci2016.org/submission.php
When submitting, please make sure that you select "CEC42: Special Session Associated with Competition on Bound Constrained Single Objective Numerical Optimization" as the "Main Research Topic" for all papers making use of these benchmarks.
Paper Submission Deadline
We will follow the extended deadlines as determined by WCCI 2016.
Request for Feedback
If you have suggestions to improve the technical report or if you find any potential bug in the codes, please inform us ( epnsugan@ntu.edu.sg ).