We address the problem of filling missing entries in a kernel Gram matrix, given a related full Gram matrix. We attack this problem from the viewpoint of regression, assuming that the two kernel matrices can be considered as explanatory variables and response variables, respectively. We propose a variant of the regression model based on the underlying features in the reproducing kernel Hilbert space by modifying the idea of kernel canonical correlation analysis, and we estimate the missing entries by fitting this model to the existing samples. We obtain promising experimental results on gene network inference and protein 3D structure prediction from genomic datasets. We also discuss the relationship with the em-algorithm based on informatio...
Background: Elucidating biological networks between proteins appears nowadays as one of the most imp...
In several biomedical and bioinformatics applications, one is faced with regression problems that ca...
<div><p>One of the most important applications of microarray data is the class prediction of biologi...
In biological data, it is often the case that observed data are available only for a subset of sampl...
This chapter contains sections titled: Introduction, Kernel Matrix Completion, Information Geometry ...
In this paper, we introduce the first method that (1) can complete kernel matrices with completely m...
We discuss several approaches that make possible for kernel methods to deal with missing values. The...
This paper considers the problem of kernel regression and classification with possibly unobservable ...
When predicting the functions of unannoted proteins based on a protein network, one relies on some n...
National audienceIn this work, we address the problem of protein-protein interaction network inferen...
© 2019 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Background: Gene expression profiling and transcriptomics provide valuable information about the rol...
International audienceOver the past few years, the reconstruction of missing data due to the presenc...
AbstractWe suggest here a new method of the estimation of missing entries in a gene expression matri...
This thesis addresses the problem of finding robust, fast and precise learning methods for noisy, in...
Background: Elucidating biological networks between proteins appears nowadays as one of the most imp...
In several biomedical and bioinformatics applications, one is faced with regression problems that ca...
<div><p>One of the most important applications of microarray data is the class prediction of biologi...
In biological data, it is often the case that observed data are available only for a subset of sampl...
This chapter contains sections titled: Introduction, Kernel Matrix Completion, Information Geometry ...
In this paper, we introduce the first method that (1) can complete kernel matrices with completely m...
We discuss several approaches that make possible for kernel methods to deal with missing values. The...
This paper considers the problem of kernel regression and classification with possibly unobservable ...
When predicting the functions of unannoted proteins based on a protein network, one relies on some n...
National audienceIn this work, we address the problem of protein-protein interaction network inferen...
© 2019 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for a...
Background: Gene expression profiling and transcriptomics provide valuable information about the rol...
International audienceOver the past few years, the reconstruction of missing data due to the presenc...
AbstractWe suggest here a new method of the estimation of missing entries in a gene expression matri...
This thesis addresses the problem of finding robust, fast and precise learning methods for noisy, in...
Background: Elucidating biological networks between proteins appears nowadays as one of the most imp...
In several biomedical and bioinformatics applications, one is faced with regression problems that ca...
<div><p>One of the most important applications of microarray data is the class prediction of biologi...