Support vector machines (SVM) have been successfully used to classify proteins into functional categories. Recently, to integrate multiple data sources, a semidefinite programming (SDP) based SVM method was introduced Lanckriet et al (2004). In SDP/SVM, multiple kernel matrices corresponding to each of data sources are combined with weights obtained by solving an SDP. However, when trying to apply SDP/SVM to large problems, the computational cost can become prohibitive, since both converting the data to a kernel matrix for the SVM and solving the SDP are time and memory demanding. Another application-specific drawback arises when some of the data sources are protein networks. A common method of converting the network to a kernel matrix is t...
One of the most accurate multi-class protein classification systems continues to be the profile-base...
Motivation: Computational approaches to protein function prediction infer protein function by findin...
Predicting protein functions is an important issue in the post-genomic era. In this paper, we studie...
Support vector machines (SVM) have been successfully used to classify proteins into functional categ...
In computational biology, it is common to represent domain knowledge using graphs. Frequently there ...
Abstract Background Machine-learning tools have gained considerable attention during the last few ye...
Predicting protein functions is an important issue in the post-genomic era. This paper studies sever...
In bioinformatics, there exist multiple descriptions of graphs for the same set of genes or proteins...
Protein function prediction is the important problem in modern biology. In this paper, the un-normal...
With the increasing power of computers, the amount of data that can be processed in small periods of...
International audienceMOTIVATION: An increasing number of observations support the hypothesis that m...
Publisher's PDFBACKGROUND: Prediction of de novo protein-protein interaction is a critical step towa...
Multiple kernel learning is a paradigm which employs a properly constructed chain of kernel function...
Motivation: The diffusion kernel is a general method for computing pairwise distances among all node...
Abstract-Machine learning technique is introduced as a method for the classification of proteins int...
One of the most accurate multi-class protein classification systems continues to be the profile-base...
Motivation: Computational approaches to protein function prediction infer protein function by findin...
Predicting protein functions is an important issue in the post-genomic era. In this paper, we studie...
Support vector machines (SVM) have been successfully used to classify proteins into functional categ...
In computational biology, it is common to represent domain knowledge using graphs. Frequently there ...
Abstract Background Machine-learning tools have gained considerable attention during the last few ye...
Predicting protein functions is an important issue in the post-genomic era. This paper studies sever...
In bioinformatics, there exist multiple descriptions of graphs for the same set of genes or proteins...
Protein function prediction is the important problem in modern biology. In this paper, the un-normal...
With the increasing power of computers, the amount of data that can be processed in small periods of...
International audienceMOTIVATION: An increasing number of observations support the hypothesis that m...
Publisher's PDFBACKGROUND: Prediction of de novo protein-protein interaction is a critical step towa...
Multiple kernel learning is a paradigm which employs a properly constructed chain of kernel function...
Motivation: The diffusion kernel is a general method for computing pairwise distances among all node...
Abstract-Machine learning technique is introduced as a method for the classification of proteins int...
One of the most accurate multi-class protein classification systems continues to be the profile-base...
Motivation: Computational approaches to protein function prediction infer protein function by findin...
Predicting protein functions is an important issue in the post-genomic era. In this paper, we studie...