Please use this identifier to cite or link to this item: https://hdl.handle.net/20.500.12104/39563
Title: Applying a feedforward neural network for predicting software development effort of short-scale projects
Author: Kalichanin-Balich, I.
Lopez-Martin, C.
Issue Date: 2010
Abstract: The software project effort estimation is an important aspect of software engineering practices. The improvement in accuracy of estimations is a topic that still remains as one of the greatest challenges of software engineering and computer science in general. In this work, the effort estimation for short-scale software projects, developed in academic setting, is modeled by two techniques: statistical regression and neural network. Two groups of software projects were made. One group of projects was used to calculate linear regression parameters and to train a neural network. The two models were then compared on both groups, the one used for their calculation and the other that was not used before. The accuracy of estimates was measured by using the magnitude of error relative to the estimate (MER) for each project and its mean MMER over each group of projects. The hypothesis accepted in this paper suggested that a feed forward neural network could be used for predicting short-scale software projects. Zapotitlán 2010 IEEE.
URI: http://hdl.handle.net/20.500.12104/39563
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