函数数据分布相等性的置换检验

Federico A. Bugni, J. Horowitz
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引用次数: 9

摘要

经济数据通常是由连续时间内发生的随机过程产生的,尽管观察可能只发生在离散时间。例如,电力和天然气的消耗发生在连续的时间内。由连续时间随机过程产生的数据称为函数数据。本文的目的是比较产生函数数据的两个或多个随机过程。数据可能是由随机实验产生的,其中有多种治疗方法。本文对同一随机过程产生所有函数数据的假设进行了检验。与现有方法相比,这里描述的测试既适用于功能数据,也适用于多种处理。该检验以排列检验的形式呈现,它确保在有限样本中,拒绝正确零假设的真实概率和名义概率是相等的。本文还给出了在备择假设下检验统计量的渐近分布。蒙特卡罗实验的结果以及在天然气计费和定价实验中的应用说明了该方法的有效性。
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Permutation tests for equality of distributions of functional data
Economic data are often generated by stochastic processes that take place in continuous time, though observations may occur only at discrete times. For example, electricity and gas consumption take place in continuous time. Data generated by a continuous time stochastic process are called functional data. This paper is concerned with comparing two or more stochastic processes that generate functional data. The data may be produced by a randomized experiment in which there are multiple treatments. The paper presents a test of the hypothesis that the same stochastic process generates all the functional data. In contrast to existing methods, the test described here applies to both functional data and multiple treatments. The test is presented as a permutation test, which ensures that in a finite sample, the true and nominal probabilities of rejecting a correct null hypothesis are equal. The paper also presents the asymptotic distribution of the test statistic under alternative hypotheses. The results of Monte Carlo experiments and an application to an experiment on billing and pricing of natural gas illustrate the usefulness of the test.
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