Actas de congresos
Ad network optimization evaluating linear relaxations
Fecha
2013-10-20Registro en:
Brazilian Conference on Intelligent Systems - BRACIS, 2, 2013 Fortaleza
9780769550923
Autor
Truzzi, Flávio Sales
Silva, Valdinei Freire da
Costa, Anna Helena Reali
Cozman, Fabio Gagliardi
Institución
Resumen
This paper presents a theoretical and empirical
analysis of linear programming relaxations to ad network op-
timization. The underlying problem is to select a sequence of ads
to send to websites; while an optimal policy can be produced
using a Markov Decision Process, in practice one must resort to
relaxations to bypass the curse of dimensionality. We focus on a
state-of-art relaxation scheme based on linear programming. We
build a Markov Decision Process that captures the worst-case
behavior of such a linear programming relaxation, and derive
theoretical guarantees concerning linear relaxations. We then
report on extensive empirical evaluation of linear relaxations; our
results suggest that for large problems (similar to ones found in
practice), the loss of performance introduced by linear relaxations is rather small.