Biology – Quantitative Biology – Molecular Networks
Scientific paper
2011-10-29
Biology
Quantitative Biology
Molecular Networks
Scientific paper
Predicting protein interactions is one of the more interesting challenges of the post-genomic era. Many algorithms address this problem as a binary classification problem: given two proteins represented as two vectors of features, predict if they interact or not. Importantly however, computational predictions are only one component of a larger framework for identifying PPI. The most promising candidate pairs can be validated experimentally by testing if they physical bind to each other. Since these experiments are more costly and error prone, the computational predictions serve as a filter, aimed to produce a small number of highly promising candidates. Here we propose to address this problem as a ranking problem: given a network with known interactions, rank all unknown pairs based on the likelihood of their interactions. In this paper we propose a ranking algorithm that trains multiple inter-connected models using a passive aggressive on-line approach. We show good results predicting protein-protein interactions for post synaptic density PPI network. We compare the precision of the ranking algorithm with local classifiers and classic support vector machine. Though the ranking algorithm outperforms the classic SVM classification, its performance is inferior compared to the local supervised method.
Bar-Shira Ossnat
Chechik Gal
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