Search Results for author: Tomasz Nowicki

Found 6 papers, 0 papers with code

On Convergence of the Alternating Directions SGHMC Algorithm

no code implementations21 May 2024 Soumyadip Ghosh, Yingdong Lu, Tomasz Nowicki

We study convergence rates of Hamiltonian Monte Carlo (HMC) algorithms with leapfrog integration under mild conditions on stochastic gradient oracle for the target distribution (SGHMC).

On Representations of Mean-Field Variational Inference

no code implementations20 Oct 2022 Soumyadip Ghosh, Yingdong Lu, Tomasz Nowicki, Edith Zhang

We present a framework to analyze MFVI algorithms, which is inspired by a similar development for general variational Bayesian formulations.

Bayesian Inference Variational Inference

Neural Network Training with Asymmetric Crosspoint Elements

no code implementations31 Jan 2022 Murat Onen, Tayfun Gokmen, Teodor K. Todorov, Tomasz Nowicki, Jesus A. del Alamo, John Rozen, Wilfried Haensch, Seyoung Kim

Analog crossbar arrays comprising programmable nonvolatile resistors are under intense investigation for acceleration of deep neural network training.

Total Energy

Hamiltonian Monte Carlo with Asymmetrical Momentum Distributions

no code implementations21 Oct 2021 Soumyadip Ghosh, Yingdong Lu, Tomasz Nowicki

Existing rigorous convergence guarantees for the Hamiltonian Monte Carlo (HMC) algorithm use Gaussian auxiliary momentum variables, which are crucially symmetrically distributed.

HMC, an Algorithms in Data Mining, the Functional Analysis approach

no code implementations4 Feb 2021 Soumyadip Ghosh, Yingdong Lu, Tomasz Nowicki

The main purpose of this paper is to facilitate the communication between the Analytic, Probabilistic and Algorithmic communities.

On $L^q$ Convergence of the Hamiltonian Monte Carlo

no code implementations21 Jan 2021 Soumyadip Ghosh, Yingdong Lu, Tomasz Nowicki

We establish $L_q$ convergence for Hamiltonian Monte Carlo algorithms.

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