Variants of Mixtures: Information Properties and Applications

IF 0.1 Q4 STATISTICS & PROBABILITY
Omid M. Ardakani, M. Asadi, N. Ebrahimi, E. Soofi
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引用次数: 2

Abstract

In recent years, we have studied information properties of various types of mixtures of probability distributions and introduced a new type, which includes previously known mixtures as special cases. These studies are disseminated in di ff erent fields: reliability engineering, econometrics, operations research, probability, the information theory, and data mining. This paper presents a holistic view of these studies and provides further insights and examples. We note that the insightful probabilistic formulation of the mixing parameters stipulated by Behboodian (1972) is required for a representation of the well-known information measure of the arithmetic mixture. Applications of this information measure presented in this paper include lifetime modeling, system reliability, measuring uncertainty and disagreement of forecasters, probability modeling with partial information, and information loss of kernel estimation. Probabilistic formulations of the mixing weights for various types of mixtures provide the Bayes-Fisher information and the Bayes risk of the mean residual function. MSC: 62B10, 62C05, 60E05, 60E15, 62N05, 94A15, 94A17. (CDF, PDF, SF, HR, MR, OR). The study of information properties of various types of mixtures involves assortments of information and divergence measures: Shannon entropy, KL, JS, Je ff reys, Chi-square, Rényi, Tsallis, and Je ff reys type symmetrized Tsallis divergences, Fisher information measure and Fisher information distance, KL type divergence between SFs, and expected L 1 -norm between cumulative hazards. Areas of applications covered include reliability (comparison of systems), econometrics (uncertainty and disagreements of forecasters), statistics (kernel estimation, exponential family, comparison of two normal means), and nonextensive statistical mechanics (escort distributions).
混合物的变体:信息性质和应用
近年来,我们研究了各种类型的概率分布混合的信息性质,并引入了一种新的类型,其中包括以前已知的混合作为特例。这些研究分布在不同的领域:可靠性工程、计量经济学、运筹学、概率论、信息论和数据挖掘。本文提出了这些研究的整体观点,并提供了进一步的见解和例子。我们注意到,Behboodian(1972)规定的混合参数的有见地的概率公式是表示众所周知的算术混合的信息度量所必需的。本文介绍了该信息度量的应用,包括寿命建模、系统可靠性、测量不确定性和预测者的不一致、部分信息的概率建模和核估计的信息损失。各种类型混合物的混合权值的概率公式提供了贝叶斯-费雪信息和平均残差函数的贝叶斯风险。Msc: 62b10, 62c05, 60e05, 60e15, 62n05, 94a15, 94a17。(cdf, pdf, sf, hr, mr, or)。各类混合物的信息特性研究涉及信息和散度测度的分类:Shannon熵、KL、JS、jffreys、卡方、r、Tsallis和jffreys型对称的Tsallis散度、Fisher信息测度和Fisher信息距离、SFs之间的KL型散度、累积风险之间的期望L -范数。应用领域包括可靠性(系统的比较)、计量经济学(预测者的不确定性和分歧)、统计学(核估计、指数族、两个正态均值的比较)和非广泛的统计力学(护送分布)。
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CiteScore
1.50
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0.00%
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