Koshi WatanabeKeisuke MaedaTakahiro OgawaRen Togo
In this paper, we present a novel method for multi-view data analysis, distributed label dequantized Gaussian process latent variable model (DLDGP). DLDGP can integrate multi-view data and class information into a common latent space. In the previous multiview methods, the dimension of label features transformed from the class information is much smaller than those of the other modalities, which causes a dimensionality-limitation problem in the latent space. DLDGP extends the dimension of the label features by a distributed label dequantization scheme. Additionally, DLDGP calculates correlation between different classes by encoding class information into distributed features. DLDGP can correctly capture the relationship between multi-view data and obtain the latent features with high expression ability. Experimental results show the effectiveness of our method by using the open dataset.
Naoki SaitoKeisuke MaedaTakahiro OgawaSatoshi AsamizuRen Togo
Keisuke MaedaTakahiro OgawaRen Togo
Keisuke MaedaM. MatsumotoNaoki SaitoTakahiro OgawaRen Togo
Stefanos EleftheriadisOgnjen RudovicMaja Pantić