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Dynamic Incentive-aware Learning: Robust Pricing in Contextual Auctions

May 11 @ 11:00 am - 12:00 pm

E18-304

Abstract: Motivated by pricing in ad exchange markets, we consider the problem of robust learning of reserve prices against strategic buyers in repeated contextual second-price auctions. Buyers’ valuations for an item depend on the context that describes the item. However, the seller is not aware of the relationship between the context and buyers’ valuations, i.e., buyers’ preferences. The seller’s goal is to design a learning policy to set reserve prices via observing the past sales data, and her objective is to minimize her regret for revenue, where the regret is computed against a clairvoyant policy that knows buyers’ heterogeneous preferences. Given the seller’s goal, utility-maximizing buyers have the incentive to bid untruthfully in order to manipulate the seller’s learning policy. We propose two learning policies that are robust to such strategic behavior. These policies use the outcomes of the auctions, rather than the submitted bids, to estimate the preferences while controlling the long-term effect of the outcome of each auction on the future reserve prices. The first policy called Contextual Robust Pricing (CORP) is designed for the setting where the market noise distribution is known to the seller and achieves a T-period regret of $O(\log(Td) \log (T))$, where $d$ is the dimension of the contextual information. The second policy, which is a variant of the first policy, is called Stable CORP (SCORP). This policy is tailored to the setting where the market noise distribution is unknown to the seller and belongs to an ambiguity set. We show that the SCORP policy has a T-period regret of $O(\sqrt{\log(Td)}T^{2/3})$.

This is a joint work with Negin Golrezaei and Vahab Mirrokni.

Biography: Adel Javanmard is an assistant professor in the department of Data Sciences and Operation, Marshall School of Business at the University of Southern California. Prior to joining USC, he was a postdoctoral research fellow for a year at the Center for Science of Information, with worksite at UC Berkeley and Stanford University. He received his PhD in Electrical Engineering from Stanford University in 2014, advised by Andrea Montanari. Before that, he received BSc degrees in Electrical Engineering and Pure Math at Sharif University of Technology in 2009. His research interests are broadly in the area of high-dimensional statistics, machine learning, optimization, and graphical models. Adel has won several awards and fellowships, including the Zumberge Faculty Research and Innovation Fund (2017), Google Faculty Research Award (2016), the Thomas Cover dissertation award from IEEE Society (2015), the CSoI Postdoctoral Fellowship (2014), the Caroline and Fabian Pease Stanford Graduate Fellowship (2010-2012). Adel was a finalist for the best student paper award at IEEE International Symposium on Information Theory (ISIT) in 2011 and 2012.

Details

Date:
May 11
Time:
11:00 am - 12:00 pm
Event Category:

Venue

E18-304
50 Ames Street
Cambridge, MA 02139

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