A Hybrid Intelligent Model to Increase the Accuracy of COCOMO
Subject Areas : Project Management
1 - Kerman Branch, Islamic Azad University
Keywords: Software costs estimation, Accuracy, Invasive Weed Optimization (IWO), meta-heuristic,
Abstract :
Nowadays, effort estimation in software projects is turned to one of the key concerns for project managers. In fact, accurately estimating of essential effort to produce and improve a software product is effective in software projects success or fail, which is considered as a vital factor. Lack of access to satisfying accuracy and little flexibility in existing estimation models have attracted the researchers’ attention to this area in last few years. One of the existing effort estimation methods is COCOMO (Constructive Cost Model) which has been taken importantly as an appropriate method for software projects. Although COCOMO has been invented some years ago, it has still got effort estimation ability in software projects. Many researchers have attempted to improve effort estimation ability in this model by improving COCOMO operation; but despite many efforts, COCOMO results are not satisfying yet. In this research, a new compound method is presented to increase COCOMO estimation accuracy. In the proposed method, much better factors are gained using combination of invasive weed optimization and COCOMO estimation method in contrast with basic COCOMO. With the best factors, the proposed model’s optimality will be maximized. In this method, a real data set is used for evaluating and its operation is analyzed in contrast to other models. Operational parameters improvement is affirmed by this model’s estimation results.
[1] D. Karaboga., and B. Basturk., "A powerful and Efficient Algorithm for Numerical Function Optimization: Artificial Bee Colony (ABC) Algorithm" Journal of Global optimization vol. 39, pp. 459-471, November 2007.
[2] J.J. Liang., A.K. Qin, “Comprehensive Learning Particle Swarm Optimizer for Global Optimization of Multimodal Functions”, Proceedings of IEEE Transaction of Evolutionary Computation, vol. 10, No. 3, June 2006.
[3]Liang J, Lee C,” A Modification Artificial Bee Colony Algorithm for Optimization Problems”, Mathematical Problems in Engineering Volume 2015 (2015).
[4] B. Akay and D. Karaboga, “A modified Artificial Bee Colony algorithm for real-parameter optimization,” Information Sciences, vol. 192, pp. 120–142, 2012.
[5] HAI-BIN DUAN, CHUN-FANG XU, and ZHI-HUI XING,” A hybrid artificial bee colony optimization and quantum evolutionary algorithm for continuous optimization problems”2010.
[6] Hadidi, Kazemzade.," Structural optimization using artificial bee colony algorithm” 2nd International Conference on Engineering Optimization September 6 - 9, (2010), Lisbon, Portugal.
[7] W. Gao , S. Liu “ A modified artificial bee colony algorithm”.Computer & Operation Research. 39 , 3 , 687-697 ,2012.
[8] D. Karaboga, “An idea based on honey bee swarm fornumerical optimization”. Technical Report-TRO6. Kayseri, Turkey: Erciyes.
[9] Jing, Hong,” Improved Artificial Bee Colony Algorithm and Application in Path Planning of Crowd Animation” International Journal of Control and Automation Vol.8, No.3 (2015), pp.53-66.
[10] T. Chen, XU,” Solving a timetabling problem with an artificial bee colony algorithm” World Transactions on Engineering and Technology Education Vol.13, No.3, 2015.
[11] R. Poli, J. Kennedy, T. Blackwell, Particle swarm optimization: An overview (Springer Science and Business Media, LLC (2007).
[12] Pei-Wei TSai, Jeng-Shyang Pan, Bin-Yih Liao, Shu-Chuan Chu, Enhanced Artificial Bee Colony Optimization , International Journal of Innovative Computing, Information and Control, Volume 5, Number 12, December (2009).
[13] Yang, X. S. , Nature-Inspired Metaheuristic Algorithms, Luniver Press(2008).
[14] R. Khaze, I. maleki, S. Hojjatkhah and A.Bagherinia, EVALUATION THE EFFICIENCY OF ARTIFICIAL BEE COLONY AND THE FIREFLY ALGORITHM IN SOLVING THE CONTINUOUS OPTIMIZATION PROBLEM, International Journal on Computational Sciences & Applications (IJCSA) Vol.3, No.4, August 2013.
[15] X-S. Yang," Firefly Algorithm, L´evy Flights and Global Optimization" arXiv:1003.1464v1 [math.OC] 7 Mar (2010).
[16] A Hashmi, Nishant Goel, Shruti Goel, Divya Gupta,” Firefly Algorithm for Unconstrained Optimization” IOSR Journal of Computer Engineering (IOSR-JCE) e-ISSN: 2278-0661, p- ISSN: 2278-8727Volume 11, Issue 1,(2013).