Advances in Smart Systems Research |
Publisher |
Future Technology Publications |
Vol. 3 No. 1 |
Workshop Papers from KES Conferences 2013 |
Journal ISSN |
2050-8662 |
|
Article Title | Improving the Interpretability of Support Vector Machines-based Fuzzy Rules |
Primary Author | Duc-Hien Nguyen, College of Information Technology |
Other Author(s) |
Manh-Thanh Le
|
Pages |
7 - 14
|
Article ID |
awk13-002 |
Publication Date |
20-Mar-14 |
Abstract | Support vector machines (SVMs) and fuzzy rule systems are functionally equivalent under some conditions. Therefore, the learning algorithms developed in the field of support vector machines can be used to adapt the parameters of fuzzy systems. Extracting fuzzy models from support vector machines has the inherent advantage that the model does not need to determine the number of rules in advance. However, after the support vector machine learning, the complexity is usually high, and interpretability is also impaired. This paper not only proposes a complete framework for extracting interpretable SVM-based fuzzy modeling, but also provides optimization issues of the models. Simulations examples are given to embody the idea of this paper. |
| View Paper |
Remarks |
Presented at the New Directions in Agent Research Workshop at the KES-AMSTA-2013 conference - Hue City, Vietnam, 27 - 29 May 2013 |