1. An Improved Approach Based on Fuzzy Clustering and Back-Propagation Neural Networks with Adaptive Learning Rate for Sales Forecasting.
- Author
-
Hicham, Attariuas, Mohamed, Bouhorma, and Abdellah, El Fallahi
- Subjects
FUZZY clustering technique ,BACK propagation ,ARTIFICIAL neural networks ,INSTRUCTIONAL systems ,SALES forecasting ,SMOOTHING (Numerical analysis) ,PRINTED circuits industry ,COMPUTER architecture - Abstract
This paper describes new hybrid sales forecasting system based on fuzzy clustering and Back-propagation (BP) Neural Networks with adaptive learning rate (FCBPN).The proposed approach is composed of three stages: (1) Winter's Exponential Smoothing method will be utilized to take the trend effect into consideration; (2) utilizing Fuzzy C-Means clustering method (Used in an clusters memberships fuzzy system (CMFS)), the clusters membership levels of each normalized data records will be extracted; (3) Each cluster will be fed into parallel BP networks with a learning rate adapted as the level of cluster membership of training data records. Compared to many researches which use Hard clustering, we employ fuzzy clustering which permits each data record to belong to each cluster to a certain degree, which allows the clusters to be larger which consequently increases the accuracy of the proposed forecasting system . Printed Circuit Board (PCB) will be used as a case study to evaluate the precision of our proposed architecture. Experimental results show that the proposed model outperforms the previous and traditional approaches. Therefore, it is a very promising solution for industrial forecasting. [ABSTRACT FROM AUTHOR]
- Published
- 2012