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

An improved K-means algorithm for big data

AuthorsHamid Saadatfar,Fatemeh Moodi
JournalIET Software
Page number48-59
Serial number16
Volume number1
Paper TypeFull Paper
Published At2022
Journal GradeISI
Journal TypeElectronic
Journal CountryIran, Islamic Republic Of
Journal IndexJCR،Scopus

Abstract

Abstract - An improved version of K-means clustering algorithm that can be applied to big data through lower processing loads with acceptable precision rates is presented here. In this method, the distances from one point to its two nearest centroids were used along with their variations in the last two iterations. Points with an equidistance threshold greater than the equidistance index were eliminated from the distance calculations and were stabilised in the cluster. Although these points are compared with the research index — cluster radius—again in the algorithm iteration, the excluded points are again included in the calculations if their distances from the stabilised cluster centroid are longer than the cluster radius. This can improve the clustering quality. Computerised tests as well as synthetic and real samples show that this method is able to improve the clustering quality by up to 41.85% in the best-case scenario. According to the findings, the proposed method is very beneficial to big data.

Paper URL