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Counting labeled transitions in continuous-time Markov models of evolution

机译:在连续时间的马尔可夫演化模型中计算标记的跃迁

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摘要

Counting processes that keep track of labeled changes to discrete evolutionary traits play critical roles in evolutionary hypothesis testing. If we assume that trait evolution can be described by a continuous-time Markov chain, then it suffices to study the process that counts labeled transitions of the chain. For a binary trait, we demonstrate that it is possible to obtain closed-form analytic solutions for the probability mass and probability generating functions of this evolutionary counting process. In the general, multi-state case we show how to compute moments of the counting process using an eigen decomposition of the infinitesimal generator, provided the latter is a diagonalizable matrix. We conclude with two examples that demonstrate the utility of our results.
机译:跟踪离散进化特征的标记变化的计数过程在进化假设检验中起着至关重要的作用。如果我们假设性状进化可以用一个连续时间的马尔可夫链来描述,那么就足以研究计算该链的标记过渡的过程。对于二元性状,我们证明有可能为该进化计数过程的概率质量和概率生成函数获得封闭形式的解析解。在一般的多状态情况下,我们展示了如何使用无穷小生成器的特征分解来计算计数过程的矩,前提是后者是对角化矩阵。我们以两个示例结束,这些示例演示了我们的结果的实用性。

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