A primal-dual Generalized Sequential algorithm achieves the first competitive ratio bound for online monotone DR-submodular maximization subject to linear packing constraints, matching the tight bound known for linear objectives.
Worst Case Competitive Analysis of Online Algorithms for Conic Optimization
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abstract
Online optimization covers problems such as online resource allocation, online bipartite matching, adwords (a central problem in e-commerce and advertising), and adwords with separable concave returns. We analyze the worst case competitive ratio of two primal-dual algorithms for a class of online convex (conic) optimization problems that contains the previous examples as special cases defined on the positive orthant. We derive a sufficient condition on the objective function that guarantees a constant worst case competitive ratio (greater than or equal to $\frac{1}{2}$) for monotone objective functions. We provide new examples of online problems on the positive orthant and the positive semidefinite cone that satisfy the sufficient condition. We show how smoothing can improve the competitive ratio of these algorithms, and in particular for separable functions, we show that the optimal smoothing can be derived by solving a convex optimization problem. This result allows us to directly optimize the competitive ratio bound over a class of smoothing functions, and hence design effective smoothing customized for a given cost function.
fields
math.OC 1years
2019 1verdicts
UNVERDICTED 1representative citing papers
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Competitive Algorithms for Online Budget-Constrained Continuous DR-Submodular Problems
A primal-dual Generalized Sequential algorithm achieves the first competitive ratio bound for online monotone DR-submodular maximization subject to linear packing constraints, matching the tight bound known for linear objectives.