Posters
Track: Posters
Paper Title:
Algorithm for Stochastic Multiple-Choice Knapsack Problem and Application to Keywords Bidding
Authors:
- Yunhong Zhou(HP Labs)
- Victor Naroditskiy(Brown University)
Abstract:
We model budget-constrained keyword bidding in sponsored
search auctions as a stochastic multiple-choice knapsack problem (S-MCKP) and design an algorithm to solve S-MCKP
and the corresponding bidding optimization problem. Our
algorithm selects items online based on a threshold function which can be built/updated using historical data. Our algorithm achieved about 99% performance compared to the offline optimum when applied to a real bidding dataset. With synthetic dataset and iid item-sets, its performance ratio against the offline optimum converges to one empirically with increasing number of periods.
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