Software Effort Estimation using parameter tuned Models
- URL: http://arxiv.org/abs/2009.01660v1
- Date: Tue, 25 Aug 2020 15:18:59 GMT
- Title: Software Effort Estimation using parameter tuned Models
- Authors: Akanksha Baghel, Meemansa Rathod, Pradeep Singh
- Abstract summary: The imprecision of the estimation is the reason for Project Failure.
The greatest pitfall of the software industry was the fast-changing nature of software development.
We need the development of useful models that accurately predict the cost of developing a software product.
- Score: 1.9336815376402716
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Software estimation is one of the most important activities in the software
project. The software effort estimation is required in the early stages of
software life cycle. Project Failure is the major problem undergoing nowadays
as seen by software project managers. The imprecision of the estimation is the
reason for this problem. Assize of software size grows, it also makes a system
complex, thus difficult to accurately predict the cost of software development
process. The greatest pitfall of the software industry was the fast-changing
nature of software development which has made it difficult to develop
parametric models that yield high accuracy for software development in all
domains. We need the development of useful models that accurately predict the
cost of developing a software product. This study presents the novel analysis
of various regression models with hyperparameter tuning to get the effective
model. Nine different regression techniques are considered for model
development
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