Authors
Andrzej Bargiela, Witold Pedrycz, Tomoharu Nakashima
Publication date
2007/10/1
Journal
Fuzzy sets and systems
Volume
158
Issue
19
Pages
2169-2188
Publisher
North-Holland
Description
In this paper, we propose an iterative algorithm for multiple regression with fuzzy variables. While using the standard least-squares criterion as a performance index, we pose the regression problem as a gradient-descent optimisation. The separation of the evaluation of the gradient and the update of the regression variables makes it possible to avoid undue complication of analytical formulae for multiple regression with fuzzy data. The origins of fuzzy input data are traced back to the fundamental concept of information granulation and an example FCM-based granulation method is proposed and illustrated by some numerical examples. The proposed multiple regression algorithm is applied to one-, three- and nine-dimensional synthetic data sets as well as the 13-dimensional Boston Housing dataset from the machine learning repository. The algorithm's performance is illustrated by the corresponding plots of …
Total citations
2007200820092010201120122013201420152016201720182019202020212022202320241458161712108115312810765
Scholar articles
A Bargiela, W Pedrycz, T Nakashima - Fuzzy sets and systems, 2007