With the advent of high-throughput measurement techniques, scientists and engineers are starting to grapple with massive data sets and encountering challenges with how to organize, process and extract information into meaningful structures. Multidimensional spatio-temporal biological data sets such as time series gene expression with various perturbations over different cell lines, or neural spike trains across many experimental trials, have the potential to acquire insight about the dynamic behavior of the system. For this potential to be realized, we need a suitable representation to understand the data. A general question is how to organize the observed data into meaningful structures and how to find an appropriate similarity measure. A ...
AbstractIn this work a comprehensive multi-step machine learning data mining and data visualization ...
This thesis pertains to the uses of Functional Data Analysis and Machine Learning when analyzing hig...
Neuronal population codes are increasingly being investigated with multivariate pattern-information ...
<div><p>With the advent of high-throughput measurement techniques, scientists and engineers are star...
With the advent of high-throughput measurement techniques, scientists and engineers are starting to ...
Motivation: Principal components analysis (PCA) is a very popular dimension reduction technique that...
Bioinformatics systems benefit from the use of data mining strategies to locate interesting and per...
Principal Component Analysis is a multivariate method to summarise information from large data sets....
A series of microarray experiments produces observations of differential expression for thousands of...
It is critical that the data generated during time-index biomics profiling studies be summarized in ...
The multi-block data stand for the data situation where multiple data sets possibly from different p...
Abstract Background Accurate methods for extraction of meaningful patterns in high dimensional data...
In bioinformatics it is often desirable to combine data from various measurement sources and thus st...
Abstract Background Sparse principal component analysis (PCA) is a popular tool for dimensionality r...
In this study, Robust Principal Component Analysis (RPCA) is applied to neural spike datasets to ext...
AbstractIn this work a comprehensive multi-step machine learning data mining and data visualization ...
This thesis pertains to the uses of Functional Data Analysis and Machine Learning when analyzing hig...
Neuronal population codes are increasingly being investigated with multivariate pattern-information ...
<div><p>With the advent of high-throughput measurement techniques, scientists and engineers are star...
With the advent of high-throughput measurement techniques, scientists and engineers are starting to ...
Motivation: Principal components analysis (PCA) is a very popular dimension reduction technique that...
Bioinformatics systems benefit from the use of data mining strategies to locate interesting and per...
Principal Component Analysis is a multivariate method to summarise information from large data sets....
A series of microarray experiments produces observations of differential expression for thousands of...
It is critical that the data generated during time-index biomics profiling studies be summarized in ...
The multi-block data stand for the data situation where multiple data sets possibly from different p...
Abstract Background Accurate methods for extraction of meaningful patterns in high dimensional data...
In bioinformatics it is often desirable to combine data from various measurement sources and thus st...
Abstract Background Sparse principal component analysis (PCA) is a popular tool for dimensionality r...
In this study, Robust Principal Component Analysis (RPCA) is applied to neural spike datasets to ext...
AbstractIn this work a comprehensive multi-step machine learning data mining and data visualization ...
This thesis pertains to the uses of Functional Data Analysis and Machine Learning when analyzing hig...
Neuronal population codes are increasingly being investigated with multivariate pattern-information ...