Language Evolution and Computation Bibliography

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Ge Xia
2006
Proceedings of the 12th Annual International Computing and Combinatorics Conference (COCOON 2006), pages 299-308, 2006
In a recent article, Nakhleh, Ringe and Warnow introduced perfect phylogenetic networks --a model of language evolution where languages do not evolve via clean speciation-- and formulated a set of problems for their accurate reconstruction. Their new methodology assumes networks, ...MORE ⇓
In a recent article, Nakhleh, Ringe and Warnow introduced perfect phylogenetic networks --a model of language evolution where languages do not evolve via clean speciation-- and formulated a set of problems for their accurate reconstruction. Their new methodology assumes networks, rather than trees, as the correct model to capture the evolutionary history of natural languages. They proved the NP-hardness of the problem of testing whether a network is a perfect phy- logenetic one for characters exhibiting at least three states, leaving open the case of binary characters, and gave a straightforward brute-force parameterized algorithm for the problem of running time O(3k n), where k is the number of bidirectional edges in the network and n is its size. In this paper, we first establish the NP-hardness of the binary case of the problem. Then we provide a more efficient parameterized algorithm for this case running in time O(2k n 2). The presented algorithm is very simple, and utilizes some structural results and elegant operations developed in this paper that can be useful on their own in the design of heuristic algorithms for the problem. The analysis phase of the algorithm is very elegant using amortized techniques to show that the upper bound on the running time of the algorithm is much tighter than the upper bound obtained under a conservative worst-case scenario assumption. Our results bear significant impact on reconstructing evolutionary histories of languages --particularly from phonological and morphological character data, most of which exhibit at most two states (i.e., are binary), as well as on the design and analysis of parameterized algorithms.