SMARTBAYES

Intelligent Stochastic Computation Methods for Complex Statistical Model Learning

 Coordinatore HELSINGIN YLIOPISTO 

Spiacenti, non ci sono informazioni su questo coordinatore. Contattare Fabio per maggiori infomrazioni, grazie.

 Nazionalità Coordinatore Finland [FI]
 Totale costo 550˙000 €
 EC contributo 550˙000 €
 Programma FP7-IDEAS-ERC
Specific programme: "Ideas" implementing the Seventh Framework Programme of the European Community for research, technological development and demonstration activities (2007 to 2013)
 Code Call ERC-2009-StG
 Funding Scheme ERC-SG
 Anno di inizio 2009
 Periodo (anno-mese-giorno) 2009-11-01   -   2014-10-31

 Partecipanti

# participant  country  role  EC contrib. [€] 
1    HELSINGIN YLIOPISTO

 Organization address address: YLIOPISTONKATU 4
city: HELSINGIN YLIOPISTO
postcode: 14

contact info
Titolo: Ms.
Nome: Satu
Cognome: Väisänen
Email: send email
Telefono: +358 9 191 50613
Fax: +358 9 191 51080

FI (HELSINGIN YLIOPISTO) hostInstitution 550˙000.00
2    HELSINGIN YLIOPISTO

 Organization address address: YLIOPISTONKATU 4
city: HELSINGIN YLIOPISTO
postcode: 14

contact info
Titolo: Prof.
Nome: Jukka Ilmari
Cognome: Corander
Email: send email
Telefono: -19150844
Fax: -19151051

FI (HELSINGIN YLIOPISTO) hostInstitution 550˙000.00

Mappa


 Word cloud

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stochastic    significant    computational    data    paradigm    statistical    learning    scientific    algorithms    yet    bayesian    modeling   

 Obiettivo del progetto (Objective)

'Very recently, it has been claimed that the Bayesian paradigm has revolutionized statistical thinking in numerous fields of research, as a considerable amount of novel Bayesian statistical models and estimation algorithms have gained popularity among scientists. Despite of the evident success of the Bayesian approach, there are also many research problems where the computational challenges have so far proven to be too exhaustive to promote wide-spread use of the state-of-the-art Bayesian methodology. In particular, due to significant advances in measurement technologies, e.g. in molecular biology, a constant need for analyzing and modeling very large and complex data sets has emerged on a wide scale during the past decade. Such needs are even anticipated to rapidly increase in near future with the current technological advances. The prevailing situation is therefore somewhat paradoxical, as the theoretical superiority of the Bayesian paradigm as an uncertainty handling framework is widely acknowledged, yet it can be unable to provide practically applicable solutions to complex scientific problems. To resolve this issue, the research project will have a focus on stochastic computational and modeling strategies to develop methods that overcome problems associated with the analysis of highly complex data sets. With these methods we aim to be able to solve a multitude of statistical learning problems for data sets which cannot yet be reliably handled in practice by any of the existing Bayesian tools. Our approaches will build upon recent advances in Bayesian predictive modeling and adaptive stochastic Monte Carlo computation, to create a novel family of parallel interacting learning algorithms. Several significant statistical modeling problems will be considered to demonstrate the potential of the developed methods. Our goal is also to provide implementations of some of the algorithms as freely available software packages to benefit concretely the scientific community.'

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QFTCMPS (2011)

"Quantum field theory, the variational principle, and continuous matrix product states"

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TRACES (2014)

From Translation to Creation: Changes in Ethiopic Style and Lexicon from Late Antiquity to the Middle Ages

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MPOES (2009)

Mathematical Physics of Out-of-Equilibrium Systems

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