SORTING THINGS OUT? MACHINE LEARNING IN COMPLEX CONSTRUCTION PROJECT
Paper in proceeding, 2019

This research includes answers from 324 main contractor representatives and 256 clients for a survey in Sweden, 2014. The literature review covers project management success in construction projects. A statistical correlation method is used to select the features that are strongly correlated with three performance indicators: cost variance, time variance and client-and contractor satisfaction. A linear regression prediction model is presented. The conclusion is an identification of the most correlating factors to project performance, and that human related factors in the project life cycle have higher impact on project success than the external factors and technical aspects of buildings.

Author

Christian Koch

Chalmers, Architecture and Civil Engineering, Construction Management

May Shayboun

Chalmers, Architecture and Civil Engineering, Construction Management

Proceedings of the European Conference on Computing in Construction

26841150 (eISSN)

65-74
9781910963371 (ISBN)

European Conference on Computing in Construction, EC3 2019
Chania, Greece,

Subject Categories

Construction Management

Infrastructure Engineering

DOI

10.35490/EC3.2019.161

More information

Latest update

12/1/2023