Paper Title

Knowledge Discovery based Research Papers Recommender System using Improved K-means Techniques

Authors

  • Sandip S. Rabade
  • Shweta A. Joshi

Keywords

Clustering, Text mining, K-means algorithm, MongoDB, NoSQL

Abstract

The main objective of recommender system is to provide correct and useful recommendations that makes user happy and satisfied. The users are interesting in accessing the document collection which contains the available information. Clustering is the main analytical method used in data mining. For data clustering the generally accepted algorithm is k-means. The similar kind of data presented in the large data sets are tried to be clustered together using k-means. The one of the limitation of the traditional K-means algorithm is that it require a large computational time. Searching and retrieving also reading research documents is more time consuming. To overcome this problem we develop a search engine for recommending research papers which is based on improved K-means algorithm that provide best results with reduced time complexity. To store the papers the MongoDB database is used which can support large number of simple read/write operations per second. MongoDB is NoSQL database. Search engine used is based on clustering and text mining.

Article Type

Published

How To Cite

Sandip S. Rabade, Shweta A. Joshi. "Knowledge Discovery based Research Papers Recommender System using Improved K-means Techniques".INTERNATIONAL JOURNAL OF ENGINEERING DEVELOPMENT AND RESEARCH ISSN:2321-9939, Vol.4, Issue 2, pp.1824-1829, URL :https://rjwave.org/ijedr/papers/IJEDR1602319.pdf

Issue

Volume 4 Issue 2 

Pages. 1824-1829

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