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Susan Athey

Researcher at Stanford University

Publications -  283
Citations -  23064

Susan Athey is an academic researcher from Stanford University. The author has contributed to research in topics: Common value auction & Estimator. The author has an hindex of 66, co-authored 261 publications receiving 16957 citations. Previous affiliations of Susan Athey include Harvard University & Columbia University.

Papers
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Proceedings Article

Learning in Games with Lossy Feedback

TL;DR: A simple variant of the classical online gradient descent algorithm, called reweightedOnline gradient descent (ROGD) is proposed and it is established that in variationally stable games, if each agent adopts ROGD, almost sure convergence to the set of Nash equilibria is guaranteed, even when the feedback loss is asynchronous and arbitrarily corrrelated among agents.
Patent

Tool for analysis of advertising auctions

TL;DR: In this article, a tool for off-line experimentation with auction parameters for auctions for an ad space is presented, which computes, using historical bid information, values per click to advertisers competing for the ad space.
Posted Content

Using Wasserstein Generative Adversarial Networks for the Design of Monte Carlo Simulations

TL;DR: There is not one estimator that outperforms the others in all three settings, so researchers should tailor their analytic approach to a given setting, and systematic simulation studies can be helpful for selecting among competing methods in this situation.
Posted Content

Identification of standard auction models

TL;DR: In this paper, a general specification of the latent demand and information structure, nesting both private values and common values models, and allowing correlated types as well as ex ante asymmetry is presented.
Proceedings Article

Structured Embedding Models for Grouped Data

TL;DR: This paper developed structured exponential family embeddings (S-EFE), a method for discovering embedding that vary across related groups of data, such as U.S. Congressional speeches, abstracts, and shopping baskets.