Michael S. Albergo

Orcid: 0000-0001-9058-5943

Affiliations:
  • New York University, Center for Cosmology and Particle Physics, NY, USA
  • Perimeter Institute for Theoretical Physics, Waterloo, ON, Canada (former)
  • University of Cambridge, UK (former)


According to our database1, Michael S. Albergo authored at least 18 papers between 2019 and 2024.

Collaborative distances:
  • Dijkstra number2 of five.
  • Erdős number3 of four.

Timeline

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Online presence:

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Bibliography

2024
Probabilistic Forecasting with Stochastic Interpolants and Föllmer Processes.
CoRR, 2024

SiT: Exploring Flow and Diffusion-based Generative Models with Scalable Interpolant Transformers.
CoRR, 2024

2023
Learning to Sample Better.
CoRR, 2023

Stochastic interpolants with data-dependent couplings.
CoRR, 2023

Multimarginal generative modeling with stochastic interpolants.
CoRR, 2023

Normalizing flows for lattice gauge theory in arbitrary space-time dimension.
CoRR, 2023

Stochastic Interpolants: A Unifying Framework for Flows and Diffusions.
CoRR, 2023

Building Normalizing Flows with Stochastic Interpolants.
Proceedings of the Eleventh International Conference on Learning Representations, 2023

2022
Aspects of scaling and scalability for flow-based sampling of lattice QCD.
CoRR, 2022

Gauge-equivariant flow models for sampling in lattice field theories with pseudofermions.
CoRR, 2022

Flow-based sampling in the lattice Schwinger model at criticality.
CoRR, 2022

2021
Flow-based sampling for multimodal distributions in lattice field theory.
CoRR, 2021

Flow-based sampling for fermionic lattice field theories.
CoRR, 2021

Introduction to Normalizing Flows for Lattice Field Theory.
CoRR, 2021

2020
Sampling using SU(N) gauge equivariant flows.
CoRR, 2020

Equivariant flow-based sampling for lattice gauge theory.
CoRR, 2020

Normalizing Flows on Tori and Spheres.
Proceedings of the 37th International Conference on Machine Learning, 2020

2019
Flow-based generative models for Markov chain Monte Carlo in lattice field theory.
CoRR, 2019


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