News Updates Monday 25th Nov 2024 :
  • Welcome to INPRESSCO, world's leading publishers, We have served more than 10000+ authors
  • Articles are invited in engineering, science, technology, management, industrial engg, biotechnology etc.
  • Paper submission is open. Submit online or at editor.ijcet@inpressco.com
  • Our journals are indexed in NAAS, University of Regensburg Germany, Google Scholar, Cross Ref etc.
  • DOI is given to all articles

Business Support System using Hybrid Classification Algorithm


Author : Fiyansh Shah, Kritika Walinjkar and Sonal Maskeen

Pages : 1152-1156
Download PDF
Abstract

Cataloguing and patterns extraction from customer data is very important for business support and decision making. Timely recognition of newly emerging trends is needed in business process. Changing market trends need to be taken into consideration for predicting which products have more demand. This paper is about integrating two different algorithms, one is clustering algorithm, which is K-means and other is to find most frequent pattern i.e MFP which will help the back end of a company i.e production and inventory management unit to understand what product is selling more and which has a slow selling rate. In this way company can increase their profit by stocking the market with only those products that people buy.

Keywords: K-Means, Most Frequent Pattern (MFP), Data mining.

Article published in International Journal of Current Engineering and Technology, Vol.5, No.2 (April-2015)

 

Call for Papers
  1. IJCET- Current Issue
  2. Issues are published in Feb, April, June, Aug, Oct and Dec
  3. DOI is given to all articles
  • Inpressco Google Scholar
  • Inpressco Science Central
  • Inpressco Global impact factor
  • Inpressco aap

International Press corporation is licensed under a Creative Commons Attribution-Non Commercial NoDerivs 3.0 Unported License
©2010-2023 INPRESSCO® All Rights Reserved