Genicot, Matthieu
[UCL]
Absil, Pierre-Antoine
[UCL]
Lambiotte, Renaud
[UNamur]
Sami, Saber
[Department of Clinical Neurosciences, University of Cambridge, Cambridge CB3 0SZ, UK]
Combining information present in multiple datasets is one of the key challenges to fully benefit from the increasing availabilityofdatainavarietyoffields.Coupledtensorfactorization aims to address this challenge by performing a simultaneous decomposition of different tensors. However, tensor factorization tends to suffer from a lack of robustness as the number of components affects the results to a large extent. In this work, a general framework for coupled tensor factorization is built to extract reliable components. Results from both individual and coupled decompositions are compared and divergence measures are used to adapt the number of components. It results in a joint decomposition method with (i) a variable number of components, (ii) shared and unshared components among tensors and (iii) robust components. Results on simulated data show a better modelling of the sources composing the datasets and an improved evaluation of the number of shared sources.
Bibliographic reference |
Genicot, Matthieu ; Absil, Pierre-Antoine ; Lambiotte, Renaud ; Sami, Saber. Coupled tensor decomposition: A step towards robust components.2016 24th European Signal Processing Conference (EUSIPCO) (Budapest, Hungary, du 29/8/2016 au 2/9/2016). In: 2016 24th European Signal Processing Conference (EUSIPCO), IEEE2016, p. 1308-1312 |
Permanent URL |
http://hdl.handle.net/2078.1/195980 |