Online Stochastic Packing Applied to Display Ad Allocation
Venue
ESA (1) (2010), pp. 182-194
Publication Year
2010
Authors
Jon Feldman, Monika Henzinger, Nitish Korula, Vahab S. Mirrokni, Clifford Stein
BibTeX
Abstract
Inspired by online ad allocation, we study online stochastic packing integer
programs from theoretical and practical standpoints. We first present a
near-optimal online algorithm for a general class of packing integer programs which
model various online resource allocation problems including online variants of
routing, ad allocations, generalized assignment, and combinatorial auctions. As our
main theoretical result, we prove that a simple dual training-based algorithm
achieves a (1 − o(1))-approximation guarantee in the random order stochastic model.
This is a significant improvement over logarithmic or constant-factor
approximations for the adversarial variants of the same problems (e.g. factor
1−1e1−1e for online ad allocation, and log(m) for online routing). We then focus on
the online display ad allocation problem and study the efficiency and fairness of
various training-based and online allocation algorithms on data sets collected from
real-life display ad allocation system. Our experimental evaluation confirms the
effectiveness of training-based algorithms on real data sets, and also indicates an
intrinsic trade-off between fairness and efficiency.
