Predictive Analytics for Project Risk Management Using Machine Learning

DOI: 10.4236/jdaip.2024.124030 Nov. 6, 2024 566 Journal of Data Analysis and Information Processing

15 Pages Posted: 16 Apr 2025

See all articles by Sanjay Bauskar

Sanjay Bauskar

Pharmavite LLC

Chandrakanth Madhavram

Microsoft Corp.

Eswar Prasad Galla

Microsoft Corp.

Jana

University of New Haven

Multiple version iconThere are 2 versions of this paper

Date Written: November 06, 2024

Abstract

Risk management is relevant for every project that which seeks to avoid and suppress unanticipated costs, basically calling for pre-emptive action. The current work proposes a new approach for handling risks based on predictive analytics and machine learning (ML) that can work in real-time to help avoid risks and increase project adaptability. The main research aim of the study is to ascertain risk presence in projects by using historical data from previous projects, focusing on important aspects such as time, task time, resources and project results. t-SNE technique applies feature engineering in the reduction of the dimensionality while preserving important structural properties. This process is analysed using measures including recall, F1-score, accuracy and precision measurements. The results demonstrate that the Gradient Boosting Machine (GBM) achieves an impressive 85% accuracy, 82% precision, 85% recall, and 80% F1-score, surpassing previous models. Additionally, predictive analytics achieves a resource utilisation efficiency of 85%, compared to 70% for traditional allocation methods, and a project cost reduction of 10%, double the 5% achieved by traditional approaches. Furthermore, the study indicates that while GBM excels in overall accuracy, Logistic Regression (LR) offers more favourable precision-recall trade-offs, highlighting the importance of model selection in project risk management.

Keywords: Predictive Analytics, Project Risk Management, Decision-Making, Data-Driven Strategies, Risk Prediction, Machine Learning, Historical Data

Suggested Citation

Bauskar, Sanjay and Madhavaram, Chandrakanth and Galla, Eswar Prasad and Sunkara, Janardhana Rao, Predictive Analytics for Project Risk Management Using Machine Learning (November 06, 2024). DOI: 10.4236/jdaip.2024.124030 Nov. 6, 2024 566 Journal of Data Analysis and Information Processing, Available at SSRN: https://ssrn.com/abstract=5140459 or http://dx.doi.org/10.2139/ssrn.5140459

Sanjay Bauskar (Contact Author)

Pharmavite LLC ( email )

8531 Fallbrook Ave.
west hills, CA 91304
United States

Chandrakanth Madhavaram

Microsoft Corp. ( email )

Singapore

Eswar Prasad Galla

Microsoft Corp. ( email )

Janardhana Rao Sunkara

University of New Haven ( email )

300 Orange Avenue
West Haven, CT 06516
United States

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