EST

Call for paper
April Edition 2017

International Journal of Applied Information Systems solicits high quality original research papers for the
March 15, 2017
April 2017 Edition of the journal.
The last date of research paper submission is
March 15, 2017
SUBMIT YOUR PAPER

Number 2

Implementation of DBSCAN Algorithm using Similarity Measure from Rapid Miner

User Rating: 0 / 5

Star InactiveStar InactiveStar InactiveStar InactiveStar Inactive
 

PrintEmail

journal image
 Download
1621
  • Tanu Verma and Renu and Deepti Gaur 2014. Implementation of DBSCAN Algorithm using Similarity Measure from Rapid Miner. International Journal of Applied Information Systems. 7, 2 (April 2014), 22-24. DOI=http://dx.doi.org/10.5120/ijais451141
  • @article{10.5120/ijais2017451568,
    author = {Tanu Verma and Renu and Deepti Gaur},
    title = {Implementation of DBSCAN Algorithm using Similarity Measure from Rapid Miner},
    journal = {International Journal of Applied Information Systems},
    issue_date = {April 2014},
    volume = {7},
    number = {},
    month = {April},
    year = {2014},
    issn = {},
    pages = {22-24},
    numpages = {},
    url = {/archives/volume7/number2/622-1141},
    doi = { 10.5120/ijais14-451141},
    publisher = { xA9 2013 by IJAIS Journal},
    address = {}
    }
    
  • %1 451141
    %A Tanu Verma
    %A Renu
    %A Deepti Gaur
    %T Implementation of DBSCAN Algorithm using Similarity Measure from Rapid Miner
    %J International Journal of Applied Information Systems
    %@ 
    %V 7
    %N 
    %P 22-24
    %D 2014
    %I  xA9 2013 by IJAIS Journal
    

Abstract

Clustering methods can be categorized into two main types: fuzzy clustering and hard clustering. In fuzzy clustering, data points can belong to more than one cluster with probabilities. In hard clustering, data points are divided into distinct clusters, where each data point can belong to one and only one cluster[1]. In this paper, we have calculated similarity measure in Rapid miner.

References

  1. J. , Data Mining Concepts and Techniques. Kaufman, 2006
  2. Margaret H. Dunham, Data Mining "Introduction and Advanced Topics".
  3. IEEE Trans Xu R. Survey of clustering algorithms. Neural Networks 2005;16.
  4. Anant Ram, Sunita Jalal, Anand S. Jalal, Manoj kumar, "A density Based Algorithm for Discovery Density Varied cluster in Large spatial Databases", International Journal of Computer Application Volume 3,No. 6, June 2010.
  5. Derya Birant, Alp Kut, "ST-DBSCAN: An Algorithm for Clustering Spatial-temporal data" Data and Knowledge Engineering 2007 pg 208-221.
  6. Peng Liu, Dong Zhou, Naijun Wu," Varied Density Based Sp6ial Clustering of Application with Noise", in proceedings of IEEE Conference ICSSSM 2007 pg 528-531.
  7. A. K. M Rasheduzzaman Chowdhury, Md. Asikur Rahman, "An efficient Mehtod for subjectively choosing parameter k automatically in VDBSCAN",proceedings of ICCAE 2010 IEEE ,Vol 1,pg 38-41.
  8. Mohammad N. T. Elbatta, An improvement of DBSCAN algorithm for best results in varied densities.

Keywords

DBSCAN, similarity measure,

Index Terms

Computer Science
Information Sciences