Artículo de revista
Cross-entropy embedding of high-dimensional data using the neural gas model
Fecha
2005-06Registro en:
NEURAL NETWORKS 18 (5-6): 727-737 JUN-JUL 2005
0893-6080
Autor
Estévez Valencia, Pablo
Figueroa, Cristián
Saito, Kazumi
Institución
Resumen
A cross-entropy approach to mapping high-dimensional data into a low-dimensional space embedding is presented. The method allows to project simultaneously the input data and the codebook vectors, obtained with the Neural Gas (NG) quantizer algorithm, into a low-dimensional output space. The aim of this approach is to preserve the relationship defined by the NG neighborhood function for each pair of input and codebook vectors. A cost function based on the cross-entropy between input and output probabilities is minimized by using a Newton-Raphson method. The new approach is compared with Sammon's non-linear mapping (NLM) and the hierarchical approach of combining a vector quantizer such as the self-organizing feature map (SOM) or NG with the NLM recall algorithm. In comparison with these techniques, our method delivers a clear visualization of both data points and codebooks, and it achieves a better mapping quality in terms of the topology preservation measure q(m).