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IJDMB
2008

Protein homology detection with biologically inspired features and interpretable statistical models

14 years 14 days ago
Protein homology detection with biologically inspired features and interpretable statistical models
: Computational classification of proteins using methods such as string kernels and Fisher-SVM has demonstrated great success. However, the resulting models do not offer an immediate interpretation of the underlying biological mechanisms. In particular, some recent studies have postulated the existence of a small subset of positions and residues in protein sequences may be sufficient to discriminate among different protein classes. In this work, we propose a hybrid setting for the classification task. A generative model is trained as a feature extractor, followed by a sparse classifier in the extracted feature space to determine the membership of the sequence, while discovering features relevant for classification. The set of sparse biologically motivated features and the discriminative method offer the desired biological interpretability. We apply the proposed method to a widely used dataset and show that the performance of our models is comparable to that of the state-of-the-art meth...
Pai-Hsi Huang, Vladimir Pavlovic
Added 12 Dec 2010
Updated 12 Dec 2010
Type Journal
Year 2008
Where IJDMB
Authors Pai-Hsi Huang, Vladimir Pavlovic
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