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A non-homogenous hidden Markov model for statistical evaluation of food functionality

机译:一种非均匀隐马尔可夫模型,用于食品功能的统计评估

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In recent years, the mechanism on how food have influence on health have been of great interest from the medical standpoint. For this research, the measurements on medical and genic factors have been carried out through clinical trials and the statistical methods for evaluating food functionality have been considered. Standard methods such as linear regressions and statistical tests, however, may not necessarily contribute to reliable medical assessments, because of the difficulty in expressing the distributions of the medical data by a normal distribution. Our goal throughout this article is to develop a new method for expressing the distribution of medical data and its application to the evaluation of food functionality. More specifically, we deal with a prediction problem on time-varying distribution of H1 influenza virus antibody titer after ingesting mushroom. For prediction, we develop a model for expressing a mixture probability distribution on the antibody titer in the class of non-homogenous hidden Markov model. Our prediction experiments have shown that the presented method improves the prediction accuracy in the case of using a standard multiple regression model, which gave a justification of introducing the model structure.
机译:近年来,食品如何对健康影响的机制非常兴趣。对于本研究,通过临床试验进行了医学和基因因子的测量,并考虑了评估食品功能的统计方法。然而,标准方法如线性回归和统计测试,可能不一定有助于可靠的医学评估,因为难以通过正常分布表达医学数据的分布。我们在本文中的目标是开发一种表达医疗数据分发的新方法及其在评估食品功能中的应用。更具体地,我们处理摄取蘑菇后H1流感病毒抗体滴度的时变分布的预测问题。为了预测,我们开发了一种在非同质隐马尔可夫模型类中表达抗体滴度的混合概率分布的模型。我们的预测实验表明,该方法在使用标准多元回归模型的情况下提高了预测精度,这给出了介绍模型结构的理由。

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