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Two sample tests for Semi-Markov processes with parametric sojourn time distributions: an application in sensory analysis

机译:具有参数停留时间分布的半马尔可夫过程的两个样本检验:在感官分析中的应用

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摘要

Developing statistical approaches that are able to compare the probability law of qualitative trajectories can be of real interest in many fields of science such as economics and sociology, quality control or epidemiology. This work is motivated by an application in sensory analysis in which subjects indicate the succession of perceived sensations over time using a list of attributes. In Lecuelle (Food Qual Prefer 67:59-66, 2018), Semi-Markov Processes (SMPs) are introduced to model such data, allowing to take into account the dynamics via the transitions from one attribute to another as well as the duration law of each attribute. One of the major challenges of sensory analysis is to determine if two tasted products are perceived differently. For that purpose, the present paper introduces a statistical testing procedure based on the likelihood ratio between two semi-Markov processes, assuming a parametric form for the sojourn time distributions. Three approaches are evaluated to compute the p-value: a first one based on the asymptotic law of the likelihood ratio, a second one based on the parametric bootstrap and a third one based on permutations. These approaches are compared on Monte-Carlo simulated data both in terms of empirical levels under the null hypothesis and statistical powers under alternatives. We also develop partial tests to compare two processes on either their initial probabilities and transition matrices or their sojourn time distributions. Simulations show that permutation approaches perform better in nearly all situations and especially for small and moderate sample sizes. Finally, the proposed tests are illustrated on real datasets which consist in perceived sensations over time during the tasting of different chocolates and cheeses.
机译:开发能够比较定性轨迹概率律的统计方法在许多科学领域(例如经济学和社会学、质量控制或流行病学)中都具有真正的兴趣。这项工作的动机是感官分析中的应用,其中受试者使用属性列表指示感知感觉随时间的连续性。在Lecuelle(Food Qual Prefer 67:59-66,2018)中,引入了半马尔可夫过程(SMP)来对此类数据进行建模,从而可以考虑从一个属性到另一个属性的转换的动态以及每个属性的持续时间规律。感官分析的主要挑战之一是确定两种口味的产品是否具有不同的感知。为此,本文引入了一种基于两个半马尔可夫过程之间似然比的统计检验程序,并假设停留时间分布的参数形式。评估了三种方法来计算 p 值:第一种方法基于似然比的渐近定律,第二种基于参数自举,第三种基于排列。在蒙特卡洛模拟数据上比较了这些方法,包括零假设下的经验水平和备选方案下的统计功效。我们还开发了部分测试,以比较两个过程的初始概率和转移矩阵或它们的停留时间分布。仿真表明,排列方法在几乎所有情况下都表现更好,尤其是对于中小样本量。最后,在真实数据集上说明了所提出的测试,这些数据集包括在品尝不同巧克力和奶酪期间随时间推移的感知感觉。

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