Main topics
Statistical Machine Learning, Deep Learning, Neural Networks, Artificial Intelligence
Current projects
Comparing computational and cerebral representations of voice and sounds
With Bruno Giordano
Funding: Projet ANR AAPG 2021 BrainSoundSem
Voir les publications liées sur HAL : https://cv.hal.science/thierry-artieres/primaryDomain_s/%22info.info-sd%22
A mathematical framework for morpho-transcriptomics
Funding: Malek Senoussi’s Ph.D. funding from Paul Villoutreix’s Centuri chaire
Explainability in Neural Networks for sequence data
With Stephane Ayache (LIS) and Hamed Benazha (LIS)
Funding : Projet ANR AAPG 2020 TAUDOS
Past Projects
Sequence modeling, labeling and classification
Design of statistical models for sequence labeling and classification based on Hidden Markov Models, Conditional Random Fields, and variants like Contextual Hidden Markov Models, Hidden Conditional Random Fields, neural extensions of these models etc.
Extreme Classification
[one_half]Extreme classification means classification in a very large number of classes (up top millions), either in monolabel or multilabel classification settings. This projet consisted in part in designing new methods for this challenging setting and in organizing international large scale classification challenges (LSHTC series and BioAsQ series).[/one_half]
Budgeted Learning
[one_half] Budget learning covers various topics. This project aimed at designing classifiers that are economic in the number of features that are required to produce a decision on an input data. [/one_half]
Adversarial Learning For Animation
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