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Expertise & Skills

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  1. Attività

Big Data Challenges for Mathematics (BIGMATH)

Progetto
BIGMATH is aimed to train a group of young, creative mathematicians with strong theoretical and practical skills, needed to tackle the major challenges of the Big Data era. They will also be trained in a wide set of “soft skills” that enable them to transfer effectively their knowledge to the productive world, thus fostering the European market to create innovation. These abilities will result from a close partnership between academy, providing the students with up-to-date training and knowledge on cutting-edge research on targeted mathematical disciplines, and a group of industries, who will complete the competences of the ESRs by exposing them to a set of Big Data-related real industrial problems. The main domains of interest of the BIGMATH project lie in the areas of optimization, statistics, and large-scale linear algebra for Big Data, which are the most relevant mathematical topics for effective machine learning techniques and ability to build good data-driven products. The effectiveness of the training program that we propose strongly relies on the involvement and close collaboration of universities with the non-academic sector, since Big Data challenges cannot be tackled only through theoretical studies and must be identified mostly by companies, which work daily on problems that involve big, complex or “messy” data. Specifically, BIGMATH focuses on 7 industrial Big Data problems spread across three domains: human facial data analysis, financial applications, and production systems. Project Activities and ESRs training on communication, exploitation of scientific results, dissemination and public engagement, play also a central role in this project, since they are designed to promote dissemination of excellent research and diffusion of innovation in Europe. The creation of such international and life-long network of young researchers, trained across sectors in an innovative way, will thus help Europe to strengthen its international R&I cooperation.
  • Dati Generali
  • Pubblicazioni

Dati Generali

Partecipanti

MICHELETTI ALESSANDRA   Responsabile scientifico  

Dipartimenti coinvolti

Dipartimento di Scienze e Politiche Ambientali   Principale  

Tipo

H20MCITNIF - Horizon 2020_Marie Skłodowska-Curie actions-Innovative Training Network (ITN)/Individual Fellowships (IF)

Finanziatore

EUROPEAN COMMISSION
Organizzazione Esterna Ente Finanziatore

Capofila

UNIVERSITA' DEGLI STUDI DI MILANO

Periodo di attività

Ottobre 1, 2018 - Settembre 30, 2022

Durata progetto

48 mesi

Pubblicazioni

Pubblicazioni (6)

Probabilistic Registration for Gaussian Process Three-Dimensional Shape Modelling in the Presence of Extensive Missing Data 
SIAM JOURNAL ON MATHEMATICS OF DATA SCIENCE
SOCIETY FOR INDUSTRIAL AND APPLIED MATHEMATICS PUBLICATIONS (SIAM)
2023
Articolo
Partially Open Access
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Distributed fixed point method for solving systems of linear algebraic equations 
AUTOMATICA
ELSEVIER
2021
Articolo
Open Access
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From noisy point clouds to complete ear shapes: unsupervised pipeline 
IEEE ACCESS
INSTITUTE OF ELECTRICAL AND ELECTRONICS ENGINEERS INC.
2021
Articolo
Open Access
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A weighted $$chi ^2$$χ2 test to detect the presence of a major change point in non-stationary Markov chains 
STATISTICAL METHODS & APPLICATIONS
SPRINGER
2020
Articolo
Partially Open Access
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Functional statistics for human emotion detection 
ANNUAL REPORT
EUROPEAN CONSORTIUM FOR MATHEMATICS IN INDUSTRY (ECMI)
2020
Articolo
Open Access
Emotion pattern detection on facial videos using functional statistics = Riconoscimento di pattern emozionali in video di volti attraverso la statistica funzionale 
PEARSON
2021
Contributo in Atti di convegno
Open Access
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