Gradient Estimation and Variance Reduction in Stochastic and Deterministic Models
Ronan Keane

TL;DR
This paper reviews gradient estimation techniques in stochastic and deterministic models, introduces a new framework for mixed models, analyzes estimator properties, and explores applications including piecewise models.
Contribution
It presents a novel framework for gradient computation in models combining deterministic and stochastic elements, advancing optimization methods.
Findings
New gradient estimator framework for mixed models
Analysis of estimator properties relevant to convergence
Applications to piecewise continuous models
Abstract
It seems that in the current age, computers, computation, and data have an increasingly important role to play in scientific research and discovery. This is reflected in part by the rise of machine learning and artificial intelligence, which have become great areas of interest not just for computer science but also for many other fields of study. More generally, there have been trends moving towards the use of bigger, more complex and higher capacity models. It also seems that stochastic models, and stochastic variants of existing deterministic models, have become important research directions in various fields. For all of these types of models, gradient-based optimization remains as the dominant paradigm for model fitting, control, and more. This dissertation considers unconstrained, nonlinear optimization problems, with a focus on the gradient itself, that key quantity which enables…
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Taxonomy
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