COST ESTIMATION PREDICTIVE MODELING: REGRESSION VERSUS NEURAL NETWORK
- 1 January 1997
- journal article
- research article
- Published by Taylor & Francis in The Engineering Economist
- Vol. 42 (2) , 137-161
- https://doi.org/10.1080/00137919708903174
Abstract
Cost estimation generally involves predicting labor, material, utilities or other costs over time given a small subset of factual data on “cost drivers.” Statistical models, usually of the regression form, have assisted with this projection. Artificial neural networks are non-parametric statistical estimators, and thus have potential for use in cost estimation modeling. This research examined the performance, stability and ease of cost estimation modeling using regression versus neural networks to develop cost estimating relationships (CERs). Results show that neural networks have advantages when dealing with data that does not adhere to the generally chosen low order polynomial forms, or data for which there is little a priori knowledge of the appropriate CER to select for regression modeling. However, in cases where an appropriate CER can be identified, regression models have significant advantages in terms of accuracy, variability, model creation and model examination. Both simulated and actual data sets are used for comparison.Keywords
This publication has 14 references indexed in Scilit:
- Software development cost estimation using function pointsIEEE Transactions on Software Engineering, 1994
- Fuzzy systems and neural networks in software engineering project managementApplied Intelligence, 1994
- A neural-network-based approach for estimating the cost of assembly systemsInternational Journal of Production Economics, 1993
- Water distribution network cost estimates for small urban areasInternational Journal of Environmental Studies, 1993
- Currency exchange rate prediction and neural network design strategiesNeural Computing & Applications, 1993
- Use of Intervals and Possibility Distributions in Economic AnalysisJournal of the Operational Research Society, 1992
- Neural Networks and the Bias/Variance DilemmaNeural Computation, 1992
- Stock price prediction using neural networks: A project reportNeurocomputing, 1990
- On the approximate realization of continuous mappings by neural networksNeural Networks, 1989
- Multilayer feedforward networks are universal approximatorsNeural Networks, 1989