ABSTRACT
This paper presents a hierarchical cooperative artificial bee colony algorithm based on divide-and-conquer decomposition strategy (HCABC-D), for fashion color forecast in clothing. In the proposed algorithm, classical artificial bee colony is extended to cooperative and hierarchical structure. The top level is responsible for information aggregation from lower level and information exchange based on crossover operator. In the bottom level, each sub-population also adopts the canonical ABC algorithm to search the part-dimensional landscape. Furthermore, HCABC-D and ABC are applied in forecasting fashion color in clothing. The results show that HCABC-D provides extremely competitive performance. The comparison between forecasting results and ones issued by PANTONE Inc. demonstrates its performance superiority.
- C.M. Svensson, S. Coombes, J.W. Peirce, "Using Evolutionary Algorithms for Fitting High-Dimensional Models to Neuronal Data", Neuroinformatics, vol.10, no.2, pp. 199--218, 2012.Google ScholarCross Ref
- Y. Cong, J. Wang, X. Li, "Traffic Flow Forecasting by a Least Squares Support Vector Machine with a Fruit Fly Optimization Algorithm", Procedia Engineering, vol.137, pp.59--68, 2016.Google ScholarCross Ref
- Y.R., Naidu, A.K. Ojha, "Solving Multiobjective Optimization Problems Using Hybrid Cooperative Invasive Weed Optimization With Multiple Populations", IEEE Transactions on Systems Man & Cybernetics Systems, vol. PP, no. 99, pp. 1--12, 2016.Google Scholar
- X. Cai, X. Cheng, Z. Fan, E. Goodman, L. Wang, "An adaptive memetic framework for multi-objective combinatorial optimization problems: studies on software next release and travelling salesman problems", Soft Computing, vol.21, no.9, pp.1--22, 2017. Google ScholarDigital Library
- Y. Chen, J.K. Hao, F. Glover, "A hybrid metaheuristic approach for the capacitated arc routing problem", European Journal of Operational Research, vol.253, no.1, pp.25--39, 2016.Google ScholarCross Ref
- I. Zelinka, "A survey on evolutionary algorithms dynamics and its complexity - Mutual relations, past, present and future", Swarm & Evolutionary Computation, vol.25, pp.2--14, 2015.Google ScholarCross Ref
- X. Cai, X. Cheng, Z. Fan, E. Goodman, L. Wang, "An adaptive memetic framework for multi-objective combinatorial optimization problems: studies on software next release and travelling salesman problems", Soft Computing, vol.21, no.9, pp.1--22, 2017. Google ScholarDigital Library
- Y. Chen, J.K. Hao, F. Glover, "A hybrid metaheuristic approach for the capacitated arc routing problem", European Journal of Operational Research, vol.253, no.1, pp.25--39, 2016.Google ScholarCross Ref
- R.S.S. Prasanth, K.H. Raj, "Optimization of Straight Cylindrical Turning Using Artificial Bee Colony (ABC) Algorithm", Journal of the Institution of Engineers, vol.98, no.2, pp.171--177, 2017.Google Scholar
- W.F. Gao, L.L. Huang, J. Wang, S.Y. Liu, C.D. Qin, "Enhanced artificial bee colony algorithm through differential evolution", Applied Soft Computing, vol.48, pp.137--150, 2016. Google ScholarDigital Library
- M.S. Kiran, O. Findik, "A directed artificial bee colony algorithm", Applied Soft Computing Journal, vol.26, pp.454--462, 2015. Google ScholarDigital Library
- C. Ozturk, D. Karaboga, B. Gorkemli, "Artificial bee colony algorithm for dynamic deployment of wireless sensor networks", Turkish Journal of Electrical Engineering & Computer Sciences, vol.20, no.2, pp.255--262, 2012.Google Scholar
- J. A. Rodger, "A fuzzy nearest neighbor neural network statistical model for predicting, demand for natural gas and energy cost savings in public buildings", Expert Systems with Applications, vol.41, no.4, pp.1813--1829, 2014. Google ScholarDigital Library
- M. Jansegers, C. Vanderschueren, R Enghels, "Hierarchical grouping to optimize an objective function", Cognitive Linguistics, vol.58, no.301, pp.236--244, 2015.Google Scholar
- J. A. Rodger, "A fuzzy nearest neighbor neural network statistical model for predicting, demand for natural gas and energy cost savings in public buildings", Expert Systems with Applications, vol.41, no.4, pp.1813--1829, 2014. Google ScholarDigital Library
- R.Z. Farahani, A. Hassani, S.M. Mousavi, M.B. Baygi, "A hybrid artificial bee colony for disruption in a hierarchical maximal covering location problem", Computers & Industrial Engineering, vol.75, pp.129--141, 2014.Google ScholarCross Ref
- L. Chang, W. Gao, R. Pan, J. Liu, "Hue prediction on Inter color for women's spring/summer using GM(1,1) models", Journal of Textile Research, vol.36, no.10, pp.134--140, 2Google Scholar
Index Terms
- A Cooperative Artificial Bee Colony Algorithm and its application to Fashion Color Forecast in Clothing
Recommendations
Development and investigation of efficient artificial bee colony algorithm for numerical function optimization
Artificial bee colony algorithm (ABC), which is inspired by the foraging behavior of honey bee swarm, is a biological-inspired optimization. It shows more effective than genetic algorithm (GA), particle swarm optimization (PSO) and ant colony ...
Artificial bee colony algorithm with memory
Graphical abstractDisplay Omitted HighlightsArtificial bee colony with memory algorithm (ABCM) is proposed.ABCM introduces the memory ability of natural honeybees to ABC.ABCM is designed as simply as possible for easy implementation.Experiments on the ...
A recombination-based hybridization of particle swarm optimization and artificial bee colony algorithm for continuous optimization problems
This paper presents a hybridization of particle swarm optimization (PSO) and artificial bee colony (ABC) approaches, based on recombination procedure. The PSO and ABC are population-based iterative methods. While the PSO directly uses the global best ...
Comments