Stochastic Budget Optimization in Internet Advertising
Bhaskar DasGupta, S. Muthukrishnan

TL;DR
This paper addresses the complex problem of how advertisers can optimally allocate their budgets across multiple targets under uncertainty, providing new approximation algorithms and hardness results for stochastic budget optimization in internet advertising.
Contribution
It introduces the first non-trivial poly-logarithmic approximation and establishes hardness results for stochastic budget optimization problems, along with polynomial-time solutions for special cases.
Findings
First known poly-logarithmic approximation for stochastic budget optimization.
Hardness results showing limitations of approximation ratios.
Polynomial-time solutions for special problem cases.
Abstract
Internet advertising is a sophisticated game in which the many advertisers "play" to optimize their return on investment. There are many "targets" for the advertisements, and each "target" has a collection of games with a potentially different set of players involved. In this paper, we study the problem of how advertisers allocate their budget across these "targets". In particular, we focus on formulating their best response strategy as an optimization problem. Advertisers have a set of keywords ("targets") and some stochastic information about the future, namely a probability distribution over scenarios of cost vs click combinations. This summarizes the potential states of the world assuming that the strategies of other players are fixed. Then, the best response can be abstracted as stochastic budget optimization problems to figure out how to spread a given budget across these keywords…
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