Computational bounds on randomized algorithms for online bin stretching
A frequently studied performance measure in online optimization is competitive analysis. It corresponds to the worst-case ratio, over all possible inputs of an algorithm, between the performance of the algorithm and the optimal offline performance. However, this analysis may be too pessimistic to gi...
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Zusammenfassung: | A frequently studied performance measure in online optimization is
competitive analysis. It corresponds to the worst-case ratio, over all possible
inputs of an algorithm, between the performance of the algorithm and the
optimal offline performance. However, this analysis may be too pessimistic to
give valuable insight on a problem. Several workarounds exist, such as
randomized algorithms. This paper aims to propose computational methods to
construct randomized algorithms and to bound their performance on the classical
online bin stretching problem. A game theory method is adapted to construct
lower bounds on the performance of randomized online algorithms via linear
programming. Another computational method is then proposed to construct
randomized algorithms which perform better than the best deterministic
algorithms known. Finally, another lower bound method for a restricted class of
randomized algorithm for this problem is proposed. |
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DOI: | 10.48550/arxiv.2405.19071 |