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  <title><![CDATA[PhD Defense by Yiling Luo]]></title>
  <body><![CDATA[<p><strong>Thesis Title:&nbsp;</strong>Stochastic Methods in Model Estimation: New Algorithms and New Properties</p>

<p>&nbsp;</p>

<p><strong>Thesis Committee:</strong></p>

<p>1 Dr.&nbsp;Xiaoming&nbsp;Huo (Advisor, ISyE, Gatech)</p>

<p>2 Dr. Yajun Mei (Co-advisor, ISyE, Gatech)</p>

<p>3 Dr. Arkadi Nemirovski (ISyE, Gatech)</p>

<p>4 Dr. Vladimir Koltchinskii (Mathematics, Gatech)</p>

<p>5 Dr. Kai Zhang&nbsp;(Department of Statistics and Operations Research,&nbsp;University of North Carolina, Chapel Hill)</p>

<p>&nbsp;</p>

<p><strong>Date and Time:&nbsp;</strong>Wednesday,&nbsp;December 21st, 11:00 am (EST)</p>

<p>&nbsp;</p>

<p><strong>In-Person Location</strong><strong>:&nbsp;</strong>Groseclose 303</p>

<p><strong>Meeting Link</strong>:&nbsp;<a href="https://teams.microsoft.com/l/meetup-join/19:meeting_MTZjMzA4NzgtM2Q5Yi00YzNlLWE0MzQtNWY2NTFjYWE0Yjkx@thread.v2/0?context=%7B%22Tid%22:%22482198bb-ae7b-4b25-8b7a-6d7f32faa083%22,%22Oid%22:%220ad58c33-2d96-4990-a3ff-0910e5dc4e33%22%7D">Click here to join the meeting</a></p>

<p>Meeting ID: 295 937 083 365</p>

<p>Passcode: tXvJLq</p>

<p>&nbsp;</p>

<p>&nbsp;</p>

<p><strong>Abstract:</strong></p>

<p>We study the properties of applying stochastic algorithms to solve optimization problems in model estimation.&nbsp;In particular, we investigate the statistical properties of estimators that are based on some stochastic algorithms in Chapters 2-5; we propose a new stochastic algorithm and study its optimization property in Chapter 6.&nbsp;</p>

<p>&nbsp;</p>

<p>We summarize the main contents in each chapter as follows.&nbsp;</p>

<p>&nbsp;</p>

<p>In Chapter 2, we explore a directional bias phenomenon in both stochastic gradient descent and gradient descent, and examine their implications for the resulting estimators.&nbsp;We would argue that the outcome from the stochastic gradient descent may lead to a better generalization error bound.</p>

<p>&nbsp;</p>

<p>In Chapter 3, we study a property of implicit regularization by a variance reduction version of the stochastic mirror descent algorithm.&nbsp;The phenomenon of implicit regularization by applying certain algorithms has attracted a lot of attention, and its existence with the variance reduction based stochastic algorithm is new.&nbsp;</p>

<p>&nbsp;</p>

<p>In Chapter 4, we establish the equivalence between the variance reduced stochastic mirror descents with a technique that has been developed in information theory -- variance reduced stochastic natural gradient descent.&nbsp;The purpose of establishing such an equivalence is that the properties of both problems can automatically be shared with each other.&nbsp;</p>

<p>&nbsp;</p>

<p>In Chapter 5, we study a recent algorithm -- ROOT-SGD -- for the online learning problem, and we estimate the covariance of the estimator that is computed via the ROOT-SGD algorithm.&nbsp;Our covariance estimators quantify the uncertainty in the ROOT-SGD algorithm, which are useful for statistical inference.&nbsp;</p>

<p>&nbsp;</p>

<p>In Chapter 6, we study a constrained strongly convex problem -- the entropic OT, and we propose a primal-dual stochastic algorithm with variance reduction to solve it.&nbsp;We show that the computational complexity of our algorithm is better than other first-order algorithms for solving the entropic OT.&nbsp;</p>

<p>&nbsp;</p>
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