Estimation of total Effort and Effort Elapsed in Each Step of Software Development Using Optimal Bayesian Belief Network
Author(s):
Abstract:
Accuracy in estimating the needed effort for software development caused software effort estimation to be a challenging issue. Beside estimation of total effort, determining the effort elapsed in each software development step is very important because any mistakes in enterprise resource planning can lead to project failure. In this paper, a Bayesian belief network was proposed based on effective components and software development process. In this model, the feedback loops are considered between development steps provided that the return rates are different for each project. Different return rates help us determine the percentages of the elapsed effort in each software development step, distinctively. Moreover, the error measurement resulted from optimized effort estimation and the optimal coefficients to modify the model are sought. The results of the comparison between the proposed model and other models showed that the model has the capability to highly accurately estimate the total effort (with the marginal error of about 0.114) and to estimate the effort elapsed in each software development step.
Keywords:
Language:
Persian
Published:
Journal of Information Technology Management, Volume:9 Issue: 3, 2017
Pages:
507 to 530
https://www.magiran.com/p1738981
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