Bayesian Data Fusion with Gaussian Process Priors : An Application to Protein Fold Recognition
Bayesian Data Fusion with Gaussian Process Priors : An Application to Protein Fold Recognition
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Various emerging quantitative measurement technologies are producing genome, transcriptome and proteome-wide data collections which has motivated the de- velopment of data integration methods within an inferential framework. It has been demonstrated that for certain prediction tasks within computational biol- ogy synergistic improvements in performance can be obtained via integration of a number of (possibly heterogeneous) data sources. In [1] six different parameter representations of proteins were employed for fold recognition of proteins using Support Vector Machines (SVM).