An Experimental Study of Algorithms for Online Bipartite Matching
We perform an experimental study of algorithms for online bipartite matching under the known i.i.d. input model with integral types. In the last decade, there has been substantial effort in designing complex algorithms with the goal of improving worst-case approximation ratios. Our goal is to determ...
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Zusammenfassung: | We perform an experimental study of algorithms for online bipartite matching
under the known i.i.d. input model with integral types. In the last decade,
there has been substantial effort in designing complex algorithms with the goal
of improving worst-case approximation ratios. Our goal is to determine how
these algorithms perform on more practical instances rather than worst-case
instances. In particular, we are interested in whether the ranking of the
algorithms by their worst-case performance is consistent with the ranking of
the algorithms by their average-case/practical performance. We are also
interested in whether preprocessing times and implementation difficulties that
are introduced by these algorithms are justified in practice. To that end we
evaluate these algorithms on different random inputs as well as real-life
instances obtained from publicly available repositories. We compare these
algorithms against several simple greedy-style algorithms. Most of the complex
algorithms in the literature are presented as being non-greedy (i.e., an
algorithm can intentionally skip matching a node that has available neighbors)
to simplify the analysis. Every such algorithm can be turned into a greedy one
without hurting its worst-case performance. On our benchmarks, non-greedy
versions of these algorithms perform much worse than their greedy versions.
Greedy versions perform about as well as the simplest greedy algorithm by
itself. This, together with our other findings, suggests that simplest greedy
algorithms are competitive with the state-of-the-art worst-case algorithms for
online bipartite matching on many average-case and practical input families.
Greediness is by far the most important property of online algorithms for
bipartite matching. |
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DOI: | 10.48550/arxiv.1808.04863 |