Software effort estimation using machine learning methods

@article{Baskeles2007SoftwareEE,
  title={Software effort estimation using machine learning methods},
  author={B. Baskeles and Burak Turhan and A. Bener},
  journal={2007 22nd international symposium on computer and information sciences},
  year={2007},
  pages={1-6}
}
In software engineering, the main aim is to develop projects that produce the desired results within limited schedule and budget. The most important factor affecting the budget of a project is the effort. Therefore, estimating effort is crucial because hiring people more than needed leads to a loss of income and hiring people less than needed leads to an extension of schedule. The main objective of this research is making an analysis of software effort estimation to overcome problems related to… CONTINUE READING

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