Inspired by online ad allocation, we study online stochastic packing linear programs from theoretical and practical standpoints. We first present a near-optimal online algorithm for a general class of packing linear 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 primal-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 − 1e for online ad allocation, and lo...
We present decision/optimization models/problems driven by uncertain and online data, and show how a...
In online set packing (osp), elements arrive online, announcing which sets they belong to, and the a...
Abstract Internet advertising is a sophisticated game in which the many advertisers "play"...
In an online problem, information is revealed incrementally and decisions have to be made before the...
Over the last few decades, a wide variety of allocation markets emerged from the Internet and introd...
We present algorithms for a class of resource allocation problems both in the online setting with st...
© 2016 Elsevier Ltd This paper deals with online resource allocation problems whereby buyers with a ...
We consider variants of the online stochastic bipartite matching problem motivated by Internet adver...
The characteristic of online algorithms is that the input is not given at once but it is revealed st...
Online resource allocation problems consider assigning a limited number of available resources to se...
We study the online bin packing problem under two stochastic settings. In the bin packing problem, w...
We present a general framework for stochastic online maximization problems with combinatorial feasib...
International audienceMatching problems have been widely studied in the research community, especial...
\u3cp\u3eWe study a variant of the display-ad allocation problem where an online publisher needs to ...
For online resource allocation problems, we propose a new demand arrival model where the sequence of...
We present decision/optimization models/problems driven by uncertain and online data, and show how a...
In online set packing (osp), elements arrive online, announcing which sets they belong to, and the a...
Abstract Internet advertising is a sophisticated game in which the many advertisers "play"...
In an online problem, information is revealed incrementally and decisions have to be made before the...
Over the last few decades, a wide variety of allocation markets emerged from the Internet and introd...
We present algorithms for a class of resource allocation problems both in the online setting with st...
© 2016 Elsevier Ltd This paper deals with online resource allocation problems whereby buyers with a ...
We consider variants of the online stochastic bipartite matching problem motivated by Internet adver...
The characteristic of online algorithms is that the input is not given at once but it is revealed st...
Online resource allocation problems consider assigning a limited number of available resources to se...
We study the online bin packing problem under two stochastic settings. In the bin packing problem, w...
We present a general framework for stochastic online maximization problems with combinatorial feasib...
International audienceMatching problems have been widely studied in the research community, especial...
\u3cp\u3eWe study a variant of the display-ad allocation problem where an online publisher needs to ...
For online resource allocation problems, we propose a new demand arrival model where the sequence of...
We present decision/optimization models/problems driven by uncertain and online data, and show how a...
In online set packing (osp), elements arrive online, announcing which sets they belong to, and the a...
Abstract Internet advertising is a sophisticated game in which the many advertisers "play"...