Using independent component analysis for feature extraction and multivariate data projection

Deriving low-dimensional perceptual spaces from data consisting of many variables is of crucial interest in strategic market planning. A frequently used method in this context is Principal Components Analysis, which finds uncorrelated directions in the data. This methodology which supports the identification of competitive structures can gainfully be utilized for product (re)positioning or optimal product (re)design. In our paper, we investigate the usefulness of a novel technique, Independent Component Analysis, to discover market structures. Independent Component Analysis is an extension of Principal Components Analysis in the sense that it looks for directions in the data that are not only uncorrelated but also independent. Comparing the two approaches on the basis of an empirical data set, we find that Independent Component Analysis leads to clearer and sharper structures than Principal Components Analysis. Furthermore, the results of Independent Component Analysis have a reasonable marketing interpretation.

[1]  R. Clarke,et al.  Theory and Applications of Correspondence Analysis , 1985 .

[2]  Anil K. Jain,et al.  Artificial neural networks for feature extraction and multivariate data projection , 1995, IEEE Trans. Neural Networks.

[3]  Simon Haykin,et al.  Neural Networks: A Comprehensive Foundation , 1998 .

[4]  Pierre Comon,et al.  Independent component analysis, A new concept? , 1994, Signal Process..

[5]  B. Muthén Contributions to factor analysis of dichotomous variables , 1978 .

[6]  Jaewun Cho,et al.  A stochastic multidimensional scaling vector threshold model for the spatial representation of “pick any/n” data , 1989 .

[7]  Simon Haykin,et al.  Neural networks , 1994 .

[8]  Erkki Oja,et al.  A class of neural networks for independent component analysis , 1997, IEEE Trans. Neural Networks.

[9]  Kurt Hornik,et al.  Neural networks and principal component analysis: Learning from examples without local minima , 1989, Neural Networks.

[10]  Anil K. Jain,et al.  Algorithms for Clustering Data , 1988 .

[11]  Wayne S. DeSarbo,et al.  A Constrained Unfolding Methodology for Product Positioning , 1986 .

[12]  Juha Karhunen,et al.  Neural approaches to independent component analysis and source separation , 1996, ESANN.

[13]  W. DeSarbo,et al.  A stochastic multidimensional scaling procedure for the spatial representation of three-mode, three-way pick any/J data , 1991 .

[14]  Pierre Comon Independent component analysis - a new concept? signal processing , 1994 .

[15]  Michael R. Hagerty,et al.  Improving the Predictive Power of Conjoint Analysis: The use of Factor Analysis and Cluster Analysis , 1985 .