Search Results for author: Vadim Sokolov

Found 14 papers, 0 papers with code

Deep Learning: A Tutorial

no code implementations10 Oct 2023 Nick Polson, Vadim Sokolov

Our goal is to provide a review of deep learning methods which provide insight into structured high-dimensional data.

Uncertainty Quantification

The Value of Chess Squares

no code implementations8 Jul 2023 Aditya Gupta, Shiva Maharaj, Nicholas Polson, Vadim Sokolov

We propose a neural network-based approach to calculate the value of a chess square-piece combination.

Game of Chess Q-Learning

Feature Selection for Personalized Policy Analysis

no code implementations31 Dec 2022 Maria Nareklishvili, Nicholas Polson, Vadim Sokolov

In particular, our method is able to capture policy effect heterogeneity both within and across subgroups of the population defined by observable characteristics.

feature selection

Quantum Bayesian Computation

no code implementations17 Aug 2022 Nick Polson, Vadim Sokolov, Jianeng Xu

Quantum Bayesian Computation (QBC) is an emerging field that levers the computational gains available from quantum computers to provide an exponential speed-up in Bayesian computation.

feature selection Gaussian Processes +1

Bayesian Calibration for Activity Based Models

no code implementations8 Mar 2022 Laura Schultz, Joshua Auld, Vadim Sokolov

We consider the problem of calibration and uncertainty analysis for activity-based transportation simulators.

Dimensionality Reduction

Deep Generative Models for Vehicle Speed Trajectories

no code implementations14 Dec 2021 Farnaz Behnia, Dominik Karbowski, Vadim Sokolov

Generating realistic vehicle speed trajectories is a crucial component in evaluating vehicle fuel economy and in predictive control of self-driving cars.

Self-Driving Cars

Merging Two Cultures: Deep and Statistical Learning

no code implementations22 Oct 2021 Anindya Bhadra, Jyotishka Datta, Nick Polson, Vadim Sokolov, Jianeng Xu

We show that prediction, interpolation and uncertainty quantification can be achieved using probabilistic methods at the output layer of the model.

Dimensionality Reduction Feature Engineering +2

Bayesian Regularization: From Tikhonov to Horseshoe

no code implementations17 Feb 2019 Nicholas G. Polson, Vadim Sokolov

Bayesian regularization is a central tool in modern-day statistical and machine learning methods.

Methodology

Deep Learning: Computational Aspects

no code implementations26 Aug 2018 Nicholas Polson, Vadim Sokolov

In this article we review computational aspects of Deep Learning (DL).

Deep Learning for Energy Markets

no code implementations16 Aug 2018 Michael Polson, Vadim Sokolov

Deep Learning is applied to energy markets to predict extreme loads observed in energy grids.

Time Series Time Series Analysis

Deep Reinforcement Learning for Dynamic Urban Transportation Problems

no code implementations14 Jun 2018 Laura Schultz, Vadim Sokolov

We explore the use of deep learning and deep reinforcement learning for optimization problems in transportation.

reinforcement-learning Reinforcement Learning (RL) +1

Clusters of Driving Behavior from Observational Smartphone Data

no code implementations12 Oct 2017 Josh Warren, Jeff Lipkowitz, Vadim Sokolov

We developed statistical models that provided insight into driver behavior in the San Francisco metro area based on tens of thousands of driver logs.

Deep Learning: A Bayesian Perspective

no code implementations1 Jun 2017 Nicholas Polson, Vadim Sokolov

Deep learning is a form of machine learning for nonlinear high dimensional pattern matching and prediction.

regression Variable Selection

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