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  <title><![CDATA[ARC Colloquium: Shalev Ben-David (Univ. of Waterloo)]]></title>
  <body><![CDATA[<p align = "center"><strong>Algorithms &amp; Randomness Center (ARC) </strong></p>

<p align = "center"><strong>Shalev Ben-David (Univ. of Waterloo)</strong></p>

<p align = "center"><strong>Monday, April 19, 2021</strong></p>

<p align = "center"><strong>Virtual via Bluejeans - 11:00 am</strong></p>

<p>&nbsp;</p>

<p><strong>Title: </strong>Forecasting Algorithms, Minimax Theorems, and Randomized Lower Bounds</p>

<p><strong>Abstract: </strong>I will present a new approach to randomized lower bounds, particularly in the setting where we wish to give a fine-grained analysis of randomized algorithms that achieve small bias. The approach is as follows: instead of considering ordinary randomized algorithms which give an output in {0,1} and may err, we switch models to look at &quot;forecasting&quot; randomized algorithms which output a confidence in [0,1] for whether they think the answer is 1. When scored by a proper scoring rule, the performance of the best forecasting algorithm is closely related to the bias of the best (ordinary) randomized algorithm, but is more amenable to analysis.</p>

<p>As an application, I&#39;ll present a new&nbsp;minimax&nbsp;theorem for randomized algorithms, which can be viewed as a strengthening of Yao&#39;s&nbsp;minimax&nbsp;theorem. Yao&#39;s&nbsp;minimax&nbsp;theorem guarantees the existence of a hard distribution for a function f such that solving f against this distribution (to a desired error level) is as hard as solving f in the worst case (to that same error level). However, the hard distribution provided by Yao&#39;s theorem depends on the chosen error level. Our&nbsp;minimax&nbsp;theorem removes this dependence, giving a distribution which certifies the hardness of f against all bias levels at once. In recent work, we used this&nbsp;minimax&nbsp;theorem to give a tight composition theorem for randomized query complexity.<br />
<br />
Based on joint work with Eric Blais.</p>

<p>----------------------------------</p>

<p><a href="https://cs.uwaterloo.ca/people-profiles/shalev-ben-david">Speaker&#39;s Webpage</a></p>

<p><em>Videos of recent talks are available at: </em><a href="http://arc.gatech.edu/node/121">http://arc.gatech.edu/node/121</a></p>

<p><a href="https://mailman.cc.gatech.edu/mailman/listinfo/arc-colloq">Click here to subscribe to the seminar email list: arc-colloq@Klauscc.gatech.edu </a></p>
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