Comparing multiple correspondence and principal component analyses with biomechanical signals. Example with turning the steering wheel |
| |
Authors: | P. Loslever J. Schiro F. Gabrielli P. Pudlo |
| |
Affiliation: | Laboratory of Industrial and Human Automation Control, Mechanical Engineering and Computer Sciences, University of Valenciennes, Valenciennes, France |
| |
Abstract: | The purpose of this article is to compare Principal Component Analysis (PCA) and a much less used method, i.e. MCA (Multiple Correspondence Analysis) with data being first changed into membership values to fuzzy space windows. For such a comparison, data from an experimental study about turning the steering wheel is used. In a didactic perspective, this article only considers one multidimensional signal with 5 components: 3 linked to the steering wheel angle and hand positions and 2 to hand effort variables. A discussion weighs out the pros and the cons of both methods with criteria such as the possibility to show complex relational phenomena, the analysis/computing time or the information loss inherent to the averaging stage (in the perspective to analyze several hundreds of large multidimensional signals). |
| |
Keywords: | Kinematics efforts fuzzy segmentation principal component analysis, multiple correspondence analysis turning the steering wheel |
|
|