Interval scheduling maximizing minimum coverage
August 31, 2015 Β· Declared Dead Β· π Discrete Applied Mathematics
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Authors
Veli MΓ€kinen, Valeria Staneva, Alexandru Tomescu, Daniel Valenzuela
arXiv ID
1508.07820
Category
cs.DS: Data Structures & Algorithms
Citations
6
Venue
Discrete Applied Mathematics
Last Checked
4 months ago
Abstract
In the classical interval scheduling type of problems, a set of $n$ jobs, characterized by their start and end time, need to be executed by a set of machines, under various constraints. In this paper we study a new variant in which the jobs need to be assigned to at most $k$ identical machines, such that the minimum number of machines that are busy at the same time is maximized. This is relevant in the context of genome sequencing and haplotyping, specifically when a set of DNA reads aligned to a genome needs to be pruned so that no more than $k$ reads overlap, while maintaining as much read coverage as possible across the entire genome. We show that the problem can be solved in time $\min\left(O(n^2\log k / \log n),O(nk\log k)\right)$ by using max-flows. We also give an $O(n\log n)$-time approximation algorithm with approximation ratio $Ο=\frac{k}{\lfloor k/2 \rfloor}$.
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