Particle Swarm Optimization based Support Vector Machine for Diabetes Mining
Ramandeep Kaur1 , Prabhdeep Singh2
Section:Research Paper, Product Type: Journal Paper
Volume-6 ,
Issue-8 , Page no. 434-439, Aug-2018
CrossRef-DOI: https://doi.org/10.26438/ijcse/v6i8.434439
Online published on Aug 31, 2018
Copyright © Ramandeep Kaur, Prabhdeep Singh . This is an open access article distributed under the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
View this paper at Google Scholar | DPI Digital Library
How to Cite this Paper
- IEEE Citation
- MLA Citation
- APA Citation
- BibTex Citation
- RIS Citation
IEEE Style Citation: Ramandeep Kaur, Prabhdeep Singh, “Particle Swarm Optimization based Support Vector Machine for Diabetes Mining,” International Journal of Computer Sciences and Engineering, Vol.6, Issue.8, pp.434-439, 2018.
MLA Style Citation: Ramandeep Kaur, Prabhdeep Singh "Particle Swarm Optimization based Support Vector Machine for Diabetes Mining." International Journal of Computer Sciences and Engineering 6.8 (2018): 434-439.
APA Style Citation: Ramandeep Kaur, Prabhdeep Singh, (2018). Particle Swarm Optimization based Support Vector Machine for Diabetes Mining. International Journal of Computer Sciences and Engineering, 6(8), 434-439.
BibTex Style Citation:
@article{Kaur_2018,
author = {Ramandeep Kaur, Prabhdeep Singh},
title = {Particle Swarm Optimization based Support Vector Machine for Diabetes Mining},
journal = {International Journal of Computer Sciences and Engineering},
issue_date = {8 2018},
volume = {6},
Issue = {8},
month = {8},
year = {2018},
issn = {2347-2693},
pages = {434-439},
url = {https://www.ijcseonline.org/full_paper_view.php?paper_id=2713},
doi = {https://doi.org/10.26438/ijcse/v6i8.434439}
publisher = {IJCSE, Indore, INDIA},
}
RIS Style Citation:
TY - JOUR
DO = {https://doi.org/10.26438/ijcse/v6i8.434439}
UR - https://www.ijcseonline.org/full_paper_view.php?paper_id=2713
TI - Particle Swarm Optimization based Support Vector Machine for Diabetes Mining
T2 - International Journal of Computer Sciences and Engineering
AU - Ramandeep Kaur, Prabhdeep Singh
PY - 2018
DA - 2018/08/31
PB - IJCSE, Indore, INDIA
SP - 434-439
IS - 8
VL - 6
SN - 2347-2693
ER -
VIEWS | XML | |
450 | 296 downloads | 208 downloads |
Abstract
Data mining is the computational procedure for discovering routines within big files portions ("big files") pertaining to techniques in the intersection involving synthetic contemplating capability, unit learning, data, as well as collection programs. In this paper, we have proposed a new method in order to improve the accuracy of diabetes classification rate. The proposed technique have integrated Particle swarm optimization (PSO) with support vector machine (SVM) based machine learning technique. The proposed technique also verified by using the various standard diabetes classification data sets. The comparison drawn among the proposed and the existing technique based upon the various standard quality metrics of the data mining. Experimental results indicate that the proposed algorithm is more efficient than existing techniques.
Key-Words / Index Term
Data Mining, Particle Swarm Optimization, Suppport Vector Machine, Diabetes Mining
References
[1] Prather, J. C., Lobach, D. F., Goodwin, L. K., Hales, J. W., Hage, M. L., & Hammond, W.E.: Medical data mining: knowledge discovery in a clinical data warehouse. In Proceedings of the AMIA annual fall symposium (p. 101). American Medical Informatics Association(1997).
[2] Parpinelli, R. S., Lopes, H. S., &Freitas, A. A.: An ant colony based system for data mining: applications to medical data. In Proceedings of the genetic and evolutionary computation conference (GECCO-2001) (pp. 791-797)(2001,July).
[3] Ghazavi, S. N., & Liao, T. W.: Medical data mining by fuzzy modeling with selected features. Artificial Intelligence in Medicine, 43(3), 195-206(2008).
[4] Delen, D., Walker, G., &Kadam, A.:Predicting breast cancer survivability: a comparison of three data mining methods. Artificial intelligence in medicine, 34(2), 113-127(2005).
[5] Moses, D.:A survey of data mining algorithms used in cardiovascular disease diagnosis from multi-lead ECG data. Kuwait Journal of Science, 42(2)(2015).
[6] Ji, S., Wang, Z., Liu, Q., & Liu, X.:Classification Algorithms for Privacy Preserving in Data Mining: A Survey. In International Conference on Computer Science and its Applications (pp. 312-322). Springer Singapore(2016,December).
[7] Rani, G., Gladis, D., &Mammen, J.Classification and Prediction of Breast Cancer Data derived Using Natural Language Processing. In Proceedings of the Third International Symposium on Women in Computing and Informatics (pp. 250-255). ACM(2015,August).
[8] Das, T. K.:A customer classification prediction model based on machine learning techniques. In 2015 International Conference on Applied and Theoretical Computing and Communication Technology (iCATccT) (pp. 321-326). IEEE(2015,October).
[9] Yu Zhou, Xiaokang Yang, Yongzheng Zhang, Xiang Xu, Yipeng Wang, Xiujuan Chai, Weiyao Lin, Unsupervised adaptive sign language recognition based on hypothesis comparison guided cross validation and linguistic prior filtering, Neurocomputing, Volume 149, Part C, 3 February 2015, Pages 1604-1612.
[10] WalidMagdy, Tamer Elsayed, Unsupervised adaptive microblog filtering for broad dynamic topics, Information Processing & Management, Volume 52, Issue 4, July 2016, Pages 513-528.
[11] Shiqiang Du, Yide Ma, Shouliang Li, Yurun Ma, Robust unsupervised feature selection via matrix factorization, Neurocomputing, Volume 241, 7 June 2017, Pages 115-127.
[12] Daniel Carlos GuimarãesPedronette, Ricardo da S. Torres, Unsupervised Rank Diffusion for Content-Based Image Retrieval, Neurocomputing, Available online 16 May 2017.
[13] Herman Kamper, Aren Jansen, Sharon Goldwater, A segmental framework for fully-unsupervised large-vocabulary speech recognition, Computer Speech & Language, Available online 18 May 2017.
[14] Wei He, Xiaofeng Zhu, Debo Cheng, Rongyao Hu, Shichao Zhang, Unsupervised feature selection for visual classification via feature-representation property, Neuro-computing, Volume 236, 2 May 2017, Pages 5-13.
[15] ZouhairMbarki, HasseneSeddik, Ezzedine Ben Braiek, A rapid hybrid algorithm for image restoration combining parametric Wiener filtering and wave atom transform, Journal of Visual Communication and Image Representation, Volume 40, Part B, October 2016, Pages 694-707.
[16] Gloria Re Calegari, EmanuelaCarlino, Diego Peroni, Irene Celino, Filtering and windowing mobile traffic time series for territorial land use classification, Computer Communications, Volume 95, 1 December 2016, Pages 15-28.
[17] Mostafa Mohammadpourfard, Ashkan Sami, AlirezaSeifi, A statistical unsupervised method against false data injection attacks: A visualization-based approach, Expert Systems with Applications, Volume 84, 30 October 2017, Pages 242-261.
[18] EliahuKhalastchi, Meir Kalech, LiorRokach, A hybrid approach for improving unsupervised fault detection for robotic systems, Expert Systems with Applications, Volume 81, 15 September 2017, Pages 372-383.
[19] Chong Yang, Xiaohui Yu, Yang Liu, YanpingNie, Yuanhong Wang, Collaborative filtering with weighted opinion aspects, Neurocomputing, Volume 210, 19 October 2016, Pages 185-196.
[20] Pengfei Zhu, Wencheng Zhu, Qinghua Hu, Changqing Zhang, WangmengZuo, Subspace clustering guided unsupervised feature selection, Pattern Recognition, Volume 66, June 2017, Pages 364-374.