【2h】

Assessing significance in a Markov chain without mixing

机译:无需混合即可评估马尔可夫链中的重要性

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摘要

We present a statistical test to detect that a presented state of a reversible Markov chain was not chosen from a stationary distribution. In particular, given a value function for the states of the Markov chain, we would like to show rigorously that the presented state is an outlier with respect to the values, by establishing a p value under the null hypothesis that it was chosen from a stationary distribution of the chain. A simple heuristic used in practice is to sample ranks of states from long random trajectories on the Markov chain and compare these with the rank of the presented state; if the presented state is a 0.1% outlier compared with the sampled ranks (its rank is in the bottom 0.1% of sampled ranks), then this observation should correspond to a p value of 0.001. This significance is not rigorous, however, without good bounds on the mixing time of the Markov chain. Our test is the following: Given the presented state in the Markov chain, take a random walk from the presented state for any number of steps. We prove that observing that the presented state is an ε-outlier on the walk is significant at p=2ε under the null hypothesis that the state was chosen from a stationary distribution. We assume nothing about the Markov chain beyond reversibility and show that significance at pε is best possible in general. We illustrate the use of our test with a potential application to the rigorous detection of gerrymandering in Congressional districting.
机译:我们提出了一项统计检验,以检测未从平稳分布中选择可逆马尔可夫链的呈现状态。特别是,在给定马尔可夫链状态的值函数的情况下,我们希望通过在从固定分布中选择它的零假设下建立ap值,来严格表明所呈现的状态相对于这些值而言是离群值的。在实践中使用的一种简单的启发式方法是从马尔可夫链上的长随机轨迹中抽取状态等级,并将其与所呈现状态的等级进行比较。如果呈现的状态与抽样等级相比是0.1%的异常值(其等级位于抽样等级的底部0.1%),则此观察值应对应于0.001的p值。但是,这种意义并不严格,对马尔可夫链的混合时间没有很好的限制。我们的测试如下:给定马尔可夫链中的呈现状态,从呈现状态中随机走任意数量的步骤。我们证明,在 p = 2 ε 在零假设下从状态分布中选择状态。除了可逆性之外,我们对马尔可夫链没有任何假设,并在 p ε 通常最好。我们举例说明了我们的测试的用途,以及在严格检测国会分区的接送服务方面的潜在应用。

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