CV


Hamid Saadatfar

Hamid Saadatfar

Associate Professor

Faculty: Electrical and Computer Engineering

Department: Computer

Degree: Ph.D

CV
Hamid Saadatfar

Associate Professor Hamid Saadatfar

Faculty: Electrical and Computer Engineering - Department: Computer Degree: Ph.D |

Dr. Hamid Saadatfar is currently an assistant professor of Computer Engineering Department at University of Birjand. He has received his B.Sc., M.Sc., and Ph.D. degrees from Ferdowsi university of Mashhad in 2007, 2009 and 2014, respectively. His research interests include:

  • Parallel and Distributed Processing (Cluster, Grid and Cloud Computing),
  • Data Mining and Machine Learning,
  • Big Data Analysis (Data Mining Methods for Big Data)
  • and Power-aware Computing.

نمایش بیشتر

Mitigating data imbalance for enhanced third-party insurance claim prediction using machine learning

AuthorsHamid Saadatfar,Majid Chahkandi,Hamide badi,Maryam Esna-Ashari
JournalJournal of Mathematics and Modeling in Finance
Page number175-187
Serial number5
Volume number1
Paper TypeFull Paper
Published At2025
Journal TypeElectronic
Journal CountryIran, Islamic Republic Of
Journal Indexisc،Scopus

Abstract

Accurate prediction of third-party insurance claims is critical for pricing policies and managing risk. However, the highly imbalanced nature of insurance data| where non-claim cases vastly outnumber claim case|poses signicant challenges to standard predictive models. This study explores the use of machine learning algorithms to enhance claim prediction by directly addressing this imbalance. We use real data from the Insurance Research Center of Iran, incorporating variables such as driver characteristics, vehicle features, location, and claims history. Five models are evaluated: logistic regression, decision tree, bagging, random forest, and boosting. To handle the imbalance, we apply random under-sampling, over-sampling, and SMOTE. Model performance is assessed using accuracy, sensitivity, specificity, precision, and F-score. Results indicate that when data imbalance is properly treated, ensemble method|particularly decision trees, bagging, and random fores-significantly outperform logistic regression and boosting, especially in detecting actual claim cases. The study underscores the importance of using appropriate resampling techniques and evaluation metrics in imbalanced settings. These findings can help insurers develop more reliable models for pricing and risk classification.

Paper URL