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  <title><![CDATA[ISyE Seminar - Huseyin Topaloglu]]></title>
  <body><![CDATA[<p><strong>Title:</strong></p>

<p>Joint Inventory Allocation and Assortment Personalization with Performance Guarantees<br />
<br />
<strong>Abstract:</strong></p>

<p>In this talk, we give approximation algorithms for a joint inventory allocation and assortment personalization problem motivated by&nbsp;an online retail setting. In our problem, we have a limited amount of storage capacity that needs to be allocated among multiple products to&nbsp;serve customers that arrive over a selling horizon. At the beginning of the selling horizon, we decide how many units of each product to&nbsp;stock. Over the selling horizon, customers arrive at the platform one by one to make a purchase. Based on the remaining inventories of the&nbsp;products and the information available on the arriving customer, we offer a personalized assortment of products to each customer. The&nbsp;customer either makes a choice within the offered assortment or leaves without a purchase. Our goal is to decide how many units of each&nbsp;product to stock at the beginning of the selling horizon and to find a policy to figure out which personalized assortment to offer to each&nbsp;arriving customer to maximize the total expected revenue over the selling horizon. Our problem is motivated by same-day-delivery&nbsp;applications in online retail, where the retailer needs to allocate the limited storage capacity in an urban warehouse among different&nbsp;variants in a product category, while having the capability of offering personalized assortments to customers to make better use of&nbsp;remaining inventories. Allocating the storage capacity among the products requires tackling a combinatorial problem, whereas finding an&nbsp;assortment personalization policy requires approximating a dynamic program with a high-dimensional state variable. When the choices of&nbsp;the customers are governed by the multinomial logit model, we give a constant-factor approximation algorithm for this joint inventory&nbsp;allocation and assortment personalization problem. Under a general choice model, we give an algorithm that is asymptotically optimal as&nbsp;the storage capacity gets large. In the latter result, the demand can be scaled in an arbitrary fashion along with the storage capacity. This&nbsp;is joint work with Yicheng Bai, Omar El Housni and Paat Rusmevichientong.<br />
<br />
<strong>Bio:</strong></p>

<p>Huseyin Topaloglu is the Howard and Eleanor Morgan Professor in the School of Operations Research and Information Engineering at&nbsp;Cornell Tech. He holds a Ph.D. in Operations Research and Financial Engineering from Princeton. His recent research focuses on&nbsp;constructing tractable solution methods for large-scale network revenue management problems and building approximation strategies for&nbsp;retail assortment planning. Huseyin Topaloglu is currently serving as an area editor for Analytics in Operations area at Manufacturing and&nbsp;Service Operations Management.</p>
]]></body>
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      <value><![CDATA[<h3><strong>Abstract:</strong></h3>

<p>In this talk, we give approximation algorithms for a joint inventory allocation and assortment personalization problem motivated by&nbsp;an online retail setting. In our problem, we have a limited amount of storage capacity that needs to be allocated among multiple products to&nbsp;serve customers that arrive over a selling horizon. At the beginning of the selling horizon, we decide how many units of each product to&nbsp;stock. Over the selling horizon, customers arrive at the platform one by one to make a purchase. Based on the remaining inventories of the&nbsp;products and the information available on the arriving customer, we offer a personalized assortment of products to each customer. The&nbsp;customer either makes a choice within the offered assortment or leaves without a purchase. Our goal is to decide how many units of each&nbsp;product to stock at the beginning of the selling horizon and to find a policy to figure out which personalized assortment to offer to each&nbsp;arriving customer to maximize the total expected revenue over the selling horizon. Our problem is motivated by same-day-delivery&nbsp;applications in online retail, where the retailer needs to allocate the limited storage capacity in an urban warehouse among different&nbsp;variants in a product category, while having the capability of offering personalized assortments to customers to make better use of&nbsp;remaining inventories. Allocating the storage capacity among the products requires tackling a combinatorial problem, whereas finding an&nbsp;assortment personalization policy requires approximating a dynamic program with a high-dimensional state variable. When the choices of&nbsp;the customers are governed by the multinomial logit model, we give a constant-factor approximation algorithm for this joint inventory&nbsp;allocation and assortment personalization problem. Under a general choice model, we give an algorithm that is asymptotically optimal as&nbsp;the storage capacity gets large. In the latter result, the demand can be scaled in an arbitrary fashion along with the storage capacity. This&nbsp;is joint work with Yicheng Bai, Omar El Housni and Paat Rusmevichientong.</p>
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