CAUSALHIGHDIM

Causal Statistical Inference from High-Dimensional Data

 Coordinatore EIDGENOESSISCHE TECHNISCHE HOCHSCHULE ZURICH 

 Organization address address: Raemistrasse 101
city: ZUERICH
postcode: 8092

contact info
Titolo: Mrs.
Nome: Susanne
Cognome: Kaiser-Heinzmann
Email: send email
Telefono: +41 44 6326518
Fax: +41 44 6321228

 Nazionalità Coordinatore Switzerland [CH]
 Totale costo 184˙709 €
 EC contributo 184˙709 €
 Programma FP7-PEOPLE
Specific programme "People" implementing the Seventh Framework Programme of the European Community for research, technological development and demonstration activities (2007 to 2013)
 Code Call FP7-PEOPLE-2012-IEF
 Funding Scheme MC-IEF
 Anno di inizio 2013
 Periodo (anno-mese-giorno) 2013-03-01   -   2015-02-28

 Partecipanti

# participant  country  role  EC contrib. [€] 
1    EIDGENOESSISCHE TECHNISCHE HOCHSCHULE ZURICH

 Organization address address: Raemistrasse 101
city: ZUERICH
postcode: 8092

contact info
Titolo: Mrs.
Nome: Susanne
Cognome: Kaiser-Heinzmann
Email: send email
Telefono: +41 44 6326518
Fax: +41 44 6321228

CH (ZUERICH) coordinator 184˙709.40

Mappa


 Word cloud

Esplora la "nuvola delle parole (Word Cloud) per avere un'idea di massima del progetto.

direct    observational    faithfulness    underlying    noise    methodology    structure    pc    learning    dimensional    sem    graph    data    causal   

 Obiettivo del progetto (Objective)

'Statistical causal structure learning tackles the following problem: given iid observational data from a joint distribution, we estimate the underlying causal graph. This graph contains a directed arrow from each variable to its direct effects and is assumed to be acyclic. We propose to develop methods and mathematical theory for high-dimensional applications, where the number of variables is much larger than the number of samples.

Independence-based methods like the PC algorithm can discover causal structures only up to Markov equivalence classes, that is some arrows remain undirected. And their consistency relies on strong faithfulness, which has been shown to be a restrictive condition. We propose to exploit structural equation models (SEMs) instead. They assume each variable to be a function of its direct causes and some noise variable. For certain restrictions (e.g. non-linear functions and additive noise) we obtain full identifiability; that is, given an observational distribution, we can recover the underlying causal graph, even without requiring faithfulness. On low-dimensional data sets, SEM-based methods already outperform competing methods like PC. However, they are not applicable to high-dimensional problems yet. One of the main goals of this research proposal is to develop new SEM-based methodology for high-dimensional applications and provide a theoretical analysis.

In many applications, data are often collected under different environmental conditions. It is expected that the causal dependencies of a plant's genes, for example, behave differently under stress conditions like drought. Modeling these mechanism changes and exploiting them for causal structure learning is the second main goal of the research proposal. To the best of our knowledge, there is currently no methodology available for these tasks.

We will apply the developed methodology to biological systems. The research is closely linked to the interdisciplinary project 'InfectX'.'

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