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  <title><![CDATA[Dynamic policies to learn and earn in a customized pricing context]]></title>
  <body><![CDATA[<p><strong>TITLE:</strong> Dynamic policies to learn and earn in a customized pricing context</p><p><strong>SPEAKER:</strong> J. Michael Harrison</p><p><strong>ABSTRACT:</strong></p><p>Motivated
by applications in financial services, we consider the following customized
pricing problem.&nbsp; A seller of some good
or service (like auto loans or small business loans) confronts a sequence of
potential customers numbered 1, 2, … , <em>T</em>.&nbsp; These customers are drawn at random from a
population characterized by a price-response function r(<em>p</em>).&nbsp; That is, if the seller offers price <em>p</em>, then the probability of a successful
sale is r(<em>p</em>).&nbsp; The profit realized from
a successful sale is p(<em>p</em>) = <em>p </em>– <em>c</em>, where <em>c</em> &gt; 0 is known.&nbsp; </p>

<p>&nbsp;If
the price-response function r(×) were also known, then
the problem of finding a price <em>p</em>* to
maximize r(<em>p</em>)p(<em>p</em>) would be simple, and the
seller would offer price <em>p</em>* to each
of the <em>T</em> customers.&nbsp; We consider the more complicated case where r(×) is fixed but initially unknown: roughly speaking, the seller wants to
choose prices sequentially so as to maximize the total profit earned from the <em>T</em> potential customers; each successive
choice involves a trade-off between refined estimation of the unknown
price-response function (learning) and immediate profit (earning).</p>

<p>&nbsp;*
Joint work with Bora Keskin and Assaf Zeevi</p>]]></body>
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