Abstract
Accurate Software Effort Estimation is of high importance with regard to Software Project Management. It can be specified as the process for predicting Effort regarding costs, needed for developing software products. A lot of techniques related to software effort estimation were carried out for developing models that are generating optimal estimation accuracy. Swarm intelligence is one such technique. The process-related in selecting the optimum estimation algorithm is expert dependent and complex. The presented study optimizes the estimation using the COCOMO II models by two models: the first model applied the dolphin algorithm, the second model applied suggested hybrid dolphin and bat algorithm (DolBat). By applying the two models on two data set and evaluate with the use of Magnitude of Relative Error(MRE) and Mean Magnitude of Relative Error(MMRE). The results indicate that the dolphin algorithm has better than previous algorithms but the (DolBat) is the best to get the coefficient value of the COCOMO II model.
Author supplied keywords
Cite
CITATION STYLE
Fadhil, A. A., Alsarraj, R. G. H., & Altaie, A. M. (2020). Software Cost Estimation Based on Dolphin Algorithm. IEEE Access, 8, 75279–75287. https://doi.org/10.1109/ACCESS.2020.2988867
Register to see more suggestions
Mendeley helps you to discover research relevant for your work.