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Keywords: Multiple regression
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Journal Articles
Improving accuracy of conceptual cost estimation using MRA and ANFIS in Indonesian building projects
Available to Purchase
Built Environment Project and Asset Management (2018) 8 (4): 348–357.
Published: 11 July 2018
...Dwifitra Jumas; Faizul Azli Mohd-Rahim; Nurshuhada Zainon; Wayudi P. Utama Purpose The purpose of this paper is to develop a conceptual cost estimation (CCE) model for building project by using a pragmatic approach, which is a mix of tools drawn from multiple regression analysis (MRA) and adaptive...
Journal Articles
Estimation of life-cycle costs of buildings: regression vs artificial neural network
Available to Purchase
Built Environment Project and Asset Management (2016) 6 (1): 30–43.
Published: 01 February 2016
.... A connection weight method is applied to determine the importance of cost factors in the performance of ANNs. Findings – The results illustrate that the value of the coefficient of determination=99.75 per cent for ANNs model(s), with a value of 98.1 per cent utilising multiple regression (MR) model(s...
