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PASS Approximation: A Framework for Analyzing and Designing Heuristics
Author(s) -
Uriel Feige,
Nicole Immorlica,
Vahab Mirrokni,
Hamid Nazerzadeh
Publication year - 2012
Publication title -
algorithmica
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.647
H-Index - 78
eISSN - 1432-0541
pISSN - 0178-4617
DOI - 10.1007/s00453-012-9646-2
Subject(s) - parameterized complexity , submodular set function , linear programming relaxation , heuristics , approximation algorithm , greedy algorithm , theory of computation , relaxation (psychology) , rounding , mathematical optimization , randomized rounding , mathematics , facility location problem , computer science , algorithm , linear programming , psychology , social psychology , operating system
We introduce a new framework for designing and analyzing algorithms. Our framework applies best to problems that are inapproximable according to the standard worst-case analysis. We circumvent such negative results by designing guarantees for classes of instances, parameterized according to properties of the optimal solution. Given our parameterized approximation, called approximation, we design algorithms with optimal approximation ratios for problems with additive and submodular objective functions such as the capacitated maximum facility location problems. We consider two types of algorithms for these problems. For greedy algorithms, our framework provides a justification for preferring a certain natural greedy rule over some alternative greedy rules that have been used in similar contexts. For LP-based algorithms, we show that the natural LP relaxation for these problems is not optimal in our framework. We design a new LP relaxation and show that this LP relaxation coupled with a new randomized rounding technique is optimal in our framework.In passing, we note that our results strictly improve over previous results of Kleinberg et al. (J. ACM 51(2):263–280, ) concerning the approximation ratio of the greedy algorithm.

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