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

A fast approach based on divide‑and‑conquer for instance selection in classification problem

AuthorsHamid Saadatfar,Sayed Iqbal Nawin,Edris Hosseini Gol
JournalApplied Intelligence
Page number67001-67022
Serial number55
Volume number7
IF1.904
Paper TypeFull Paper
Published At2025
Journal GradeISI
Journal TypeElectronic
Journal CountryIran, Islamic Republic Of
Journal IndexJCR،Scopus

Abstract

Instance selection is a data preprocessing method in data mining that aims to reduce the volume of the training dataset. Reducing samples from a large dataset offers benefits such as lower storage requirements, reduced computational costs, increased processing speed, and, in some cases, improved accuracy for learning algorithms. However, reducing samples from large datasets is also a challenging task due to their sheer volume. Recently, numerous instance selection methods for big data have been proposed, often facing challenges such as low accuracy and slow processing speed. In this research, we propose a fast and efficient three-step method based on the divide-and-conquer approach. In the first step, the training set is divided based on the number of classes. Next, representative summaries of each class are extracted. Finally, samples from each class are reduced independently while considering the representatives of other classes. By using a proposed ranking-based method, it is possible to accurately identify less important and noisy samples. For a comprehensive evaluation, we utilized 20 well-known large datasets and three synthetic datasets featuring challenging structures. The results demonstrate the superiority of the proposed method over four recent related methods.

Paper URL