Deep learning with differential equations
Description of the granted funding
Machine learning is developing at an unprecented pace due to a paradigm shift caused by deep neural network models, which have revolutionised the several domains of science. Deep neural networks represents learning as a series of deterministic, complex and discrete transformations. In this Aalto University research project we will propose a groundbreaking new viewpoint on machine learning by developing a novel deep learning paradigm of probabilistic continuous-time deep learning, where interpretable, simple distributions of smooth transformations, or time differentials, encode the learning process as a continuous flow. The novel paradigm draws from solid foundations of physics, statistics and dynamical systems literature. The project will be performed in close collaboration with an international network of world-renowned experts in these fields. The project is headed by a machine learning researcher PhD Markus Heinonen.
Show moreStarting year
2020
End year
2025
Granted funding
Related funding decisions
358212
Research costs of Academy Research Fellows(2023)
158 707 €
336508
Research costs of Academy Research Fellows(2020)
239 129 €
Funder
Research Council of Finland
Funding instrument
Academy research fellows
Other information
Funding decision number
334600
Fields of science
Computer and information sciences
Research fields
Laskennallinen tiede
Identified topics
artificial intelligence, machine learning