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  1. Home
  2. Academic Research Output
  3. Conference Paper
  4. Using Machine Learning CART Decision Trees for Predicting the Causes of Delays in Projects from the Construction Industry
 
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Using Machine Learning CART Decision Trees for Predicting the Causes of Delays in Projects from the Construction Industry

ISSN
2048-903X
Date Issued
2024-11
Author(s)
Lobo Marques, Joao Alexandre 
Faculty of Business and Law 
Chun, Fung Ka
Riccelli, Bruno
Abstract
Construction projects are complex endeavours, with potential obstacles that can cause delays which can have particularly profound implications potentially impacting on company's financial health, business continuity and reputation. It is becoming increasingly recognised that delays are context-specific and multifaceted, requiring more industry-oriented perceptions. This work proposes the exploratory use of Machine Learning based on Classification and Regression Trees (CART) Decision Trees (DT) to assess the predictive analysis of these approaches, considering surveys (primary data) collected from 100 specialists with different backgrounds and experiences in the construction industry. Survey responses are discussed, followed by the CART DTs, which are used as predictor for clarifying underneath relationship among different variables in a project environment. The major issue presented is related to Project Design, with "The firm is not allowed to apply for an extension of contract period", with two possible predictors, firstly, as the main factor it is found "Mistakes, inconsistencies, and ambiguities in specification and drawing", while other aspect highlights "Poor site supervision and management by the contractor". The results indicate that the correct use of Artificial Intelligence techniques with relevant data are potential tools to support the analysis of scenarios and avoidance of project delays in Project Management.
Subjects

Schedules

Machine learning

Project management

Construction industry...

Literature reviews

Artificial intelligen...

Decision trees

Critical path

Contractors

File(s)
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Name

Using_Machine_Learning_CART_De.pdf

Type

main article

Size

1.06 MB

Format

Adobe PDF

Checksum

(MD5):a5f163120367a9f0e92a5ea961e70651


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