Distortion-Oblivious Algorithms for Minimizing Flow Time

ACM-SIAM Symposium on Discrete Algorithms (SODA)(2022)

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摘要
We consider the classic online problem of scheduling on a single machine to minimize total flow time. In STOC 2021, the concept of robustness to distortion in processing times was introduced: for every distortion factor $\mu$, an $O(\mu^2)$-competitive algorithm $\operatorname{ALG}_{\mu}$ which handles distortions up to $\mu$ was presented. However, using that result requires one to know the distortion of the input in advance, which is impractical. We present the first \emph{distortion-oblivious} algorithms: algorithms which are competitive for \emph{every} input of \emph{every} distortion, and thus do not require knowledge of the distortion in advance. Moreover, the competitive ratios of our algorithms are $\tilde{O}(\mu)$, which is a quadratic improvement over the algorithm from STOC 2021, and is nearly optimal (we show a randomized lower bound of $\Omega(\mu)$ on competitiveness).
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关键词
minimizing flow time,algorithms,distortion-oblivious
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