Title
Data clustering and fuzzy neural network for sales forecasting: A case study in printed circuit board industry
Abstract
In order to obtain a better control of market trend and profit for the company, timely identification of sales is very important for businesses. Upward and downward trends in sales signify new market trends and understanding of sales trends is important for marketing as well as for customer retention. This research develops a hybrid model by integrating K-mean cluster and fuzzy neural network (KFNN) to forecast the future sales of a printed circuit board factory. Based on the K-mean clustering technique, the historical data can be classified into different clusters. The accuracy of the forecasted model can be further improved by referring the new data to be forecasted from a more focused region, i.e., a smaller region after clustering. Numerical data of various affecting factors and actual demand of the past 5 years of the printed circuit board (PCB) factory are collected and input into the hybrid model for future monthly sales forecasted. The experimental results derived from the proposed model show the effectiveness of the hybrid model when compared with other approaches.
Year
DOI
Venue
2009
10.1016/j.knosys.2009.02.005
Knowl.-Based Syst.
Keywords
Field
DocType
sales forecasted,fuzzy neural network,k-mean cluster,k-mean clustering technique,printed circuit board industry,new data,sales forecasting,case study,sales trend,printed circuit boards,historical data,hybrid model,numerical data,forecasted model,focused region,data clustering,profitability,printed circuit board,customer retention,k means clustering
Customer retention,Data mining,Market trend,Factory,Industrial engineering,Computer science,Printed circuit board,Sales forecasting,Artificial neural network,Cluster analysis
Journal
Volume
Issue
ISSN
22
5
Knowledge-Based Systems
Citations 
PageRank 
References 
45
2.37
20
Authors
3
Name
Order
Citations
PageRank
Pei-Chann Chang11752109.32
Chen-Hao Liu245322.49
Chin-Yuan Fan347328.27