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Maximum Likelihood of Evolutionary Trees Is Hard

机译:进化树的最大似然很难

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Maximum likelihood (ML) is an increasingly popular opti-mality criterion for selecting evolutionary trees (Felsenstein, 1981). Finding optimal ML trees appears to be a very hard computational task, but for tractable cases, ML is the method of choice. In particular, algorithms and heuristics for ML take longer to run than algorithms and heuristics for the second major character based criterion, maximum parsimony (MP). However, while MP has been known to be NP-complete for over 20 years (Day, Johnson and Sankoff, reduction from vertex cover), such a hardness result for ML has so far eluded researchers in the field. An important work by Tuffley and Steel (1997) proves quantitative relations between parsimony values and the corresponding log likelihood values. However, a direct application of it would only give an exponential time reduction from MP to ML. Another step in this direction has recently been made by Addario-Berry et al. (2004), who proved that ancestral maximum likelihood (AML) is NP-complete. AML "lies in between" the two problems, having some properties of MP and some properties of ML. We resolve the question, showing that "regular" ML on phylogenetic trees is indeed intractable. Our reduction follows those for MP and AML, but starts from an approximation version of vertex cover, known as GAP vc. The crux of our work is not the reduction, but its correctness proof. The proof goes through a series of tree modifications, while controlling the likelihood losses at each step, using the bounds of Tuffley and Steel. The proof can be viewed as correlating the value of any ML solution to an arbitrarily close approximation to vertex cover.
机译:最大似然(ML)是选择进化树的一种越来越流行的优化标准(Felsenstein,1981)。寻找最佳的ML树似乎是一项非常艰巨的计算任务,但是对于易处理的情况,ML是一种选择方法。特别地,ML的算法和启发式算法比第二个基于主要特征的准则(最大简约性)的算法和启发式算法运行时间更长。但是,尽管MP在20多年来一直是NP完全的(Day,Johnson和Sankoff,从顶点覆盖率降低),但ML的这种硬度结果至今仍未吸引到该领域的研究人员。 Tuffley和Steel(1997)的一项重要工作证明了简约值与相应的对数似然值之间的定量关系。但是,直接应用它只会使从MP到ML的时间成倍减少。 Addario-Berry等人最近朝这个方向迈出了又一步。 (2004年),他证明祖先最大似然(AML)是NP完全的。 AML“介于”这两个问题之间,具有MP的某些属性和ML的某些属性。我们解决了这个问题,表明系统发育树上的“常规” ML确实很棘手。我们的减少量遵循MP和AML的减少量,但从近似的顶点覆盖范围(称为GAP vc)开始。我们工作的重点不是减少,而是其正确性证明。该证明经过一系列的树修改,同时使用Tuffley和Steel的边界来控制每一步的似然损失。可以将证明视为将任何ML解决方案的值与顶点覆盖的任意近似近似值相关联。

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