Stronger adversaries grow cheaper forests: online node-weighted Steiner problems
Abstract
We propose a O( k n)-competitive randomized algorithm for online node-weighted Steiner forest. This is essentially optimal and significantly improves over the previous bound of O(2 k n) by Hajiaghayi et al. [2017]. In fact, our result extends to the more general prize-collecting setting, improving over previous works by a poly-logarithmic factor. Our key technical contribution is a randomized online algorithm for set cover and non-metric facility location in a new adversarial model which we call semi-adaptive adversaries. As a by-product of our techniques, we obtain the first deterministic O( |C| |F|)-competitive algorithm for non-metric facility location.
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