An Analysis of Cost Driver in Software Cost Model by Neural Network System

  • Kim, Dong-Hwa (Department of Instrumentation & Control Eng., Taejon National University of Technology)
  • Published : 2000.10.01

Abstract

Current software cost estimation models, such as the 1951 COCOMO, its 1987 Ada COCOMO update, is composed of nonlinear models, such as product attributes, computer attributes, personnel attributes, project attributes, effort-multiplier cost drivers, and have been experiencing increasing difficulties in estimating the costs of software developed to new lift cycle processes and capabilities. The COCOMO II is developed fur new forms against the current software cost estimation models. This paper provides a case-based analysis result of the cost driver in the software cost models, such as COCOMO and COCOMO 2.0 by fuzzy and neural network.

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