For most problems in science and engineering we can obtain data sets that describe the observed system from various perspectives and record the behavior of its individual components. Heterogeneous data sets can be collectively mined by data fusion. Fusion can focus on a specific target relation and exploit directly associated data together with contextual data and data about system’s constraints. In the paper we describe a data fusion approach with penalized matrix tri-factorization (DFMF) that simultaneously factorizes data matrices to reveal hidden associations. The approach can directly consider any data that can be expressed in a matrix, including those from feature-based representations, ontologies, associations and networks. We demons...
abstract: Modern machine learning systems leverage data and features from multiple modalities to gai...
M. Gagolewski, Data Fusion: Theory, Methods, and Applications, Institute of Computer Science, Polish...
MOTIVATION: The integration of multi-omic data using machine learning methods has been focused on so...
For most problems in science and engineering we can obtain data sets that describe the observed syst...
Recent technological advances enable us to collect huge amounts of data from multiple sources. joint...
Any knowledge discovery could in principal benefit from the fusion of directly or even indirectly re...
In our information age, the amount of data observed has increased tremendously in volume, velocity a...
It has been shown that while a single genomic data source might not be sufficiently informative, fus...
The development of effective methods for the characterization of gene functions that are able to com...
In many areas of science and technology data describing a phenomenon or a system of interest and its...
The development of effective methods for the characterization of gene functions that are able to com...
In many areas of science, multiple sets of data are collected pertaining to the same system. Example...
According to Cancer Research UK, cancer is a leading cause of death accounting for more than one in ...
The combination of the different data sources for classification purposes, also called data fusion, ...
Today we are witnessing rapid growth of data both in quantity and variety in all areas of human ende...
abstract: Modern machine learning systems leverage data and features from multiple modalities to gai...
M. Gagolewski, Data Fusion: Theory, Methods, and Applications, Institute of Computer Science, Polish...
MOTIVATION: The integration of multi-omic data using machine learning methods has been focused on so...
For most problems in science and engineering we can obtain data sets that describe the observed syst...
Recent technological advances enable us to collect huge amounts of data from multiple sources. joint...
Any knowledge discovery could in principal benefit from the fusion of directly or even indirectly re...
In our information age, the amount of data observed has increased tremendously in volume, velocity a...
It has been shown that while a single genomic data source might not be sufficiently informative, fus...
The development of effective methods for the characterization of gene functions that are able to com...
In many areas of science and technology data describing a phenomenon or a system of interest and its...
The development of effective methods for the characterization of gene functions that are able to com...
In many areas of science, multiple sets of data are collected pertaining to the same system. Example...
According to Cancer Research UK, cancer is a leading cause of death accounting for more than one in ...
The combination of the different data sources for classification purposes, also called data fusion, ...
Today we are witnessing rapid growth of data both in quantity and variety in all areas of human ende...
abstract: Modern machine learning systems leverage data and features from multiple modalities to gai...
M. Gagolewski, Data Fusion: Theory, Methods, and Applications, Institute of Computer Science, Polish...
MOTIVATION: The integration of multi-omic data using machine learning methods has been focused on so...