Visualisation of Mahalanobis Distances for Trivariate JOINT Distributions

Emily Groenewald, G. Vuuren
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Abstract

The Mahalanobis distance is a statistical measure used to quantify the distance between elliptic distributions with distinct locations and shared shapes, while accounting for the variables' covariance structure. It is applicable to both estimative and predictive estimation approaches, where variations are limited to location, and it assesses the similarity or dissimilarity between data and the mean (centroid) of a multivariate distribution, within the family of multivariate elliptic distributions. It is thus useful for outlier identification. The aim of the study is to provide, for the first time, a three-dimensional visualisation of the Mahalanobis distance when the underlying framework comprises three jointly connected variables (rather than the standard two variables presented in textbooks). Data with Mahalanobis distances exceeding a predefined threshold, determined using a  distribution, are considered outliers. This approach is analogous to identifying outliers for univariate distributions based on critical values derived from confidence levels. While the literature mainly discusses the Mahalanobis distance formulation for bivariate distributions, we extend the discussion to include one additional variable and provide a visualisation of the resulting Mahalanobis distance for a trivariate distribution. An empirical example is presented to illustrate a practical application of a trivariate Mahalanobis distance. Visualising outliers alongside other historical events within three-factor systems can offer valuable insights into the risk profile of the current environment and assess the probability of future extreme events.
三变量联合分布的马哈拉诺比斯距离可视化
马哈罗诺比距离是一种统计量度,用于量化具有不同位置和共同形状的椭圆分布之间的距离,同时考虑变量的协方差结构。它适用于估算和预测估算方法,其中的变化仅限于位置,它评估数据与多元椭圆分布族中多元分布的均值(中心点)之间的相似性或不相似性。因此,它有助于离群点的识别。本研究的目的是,当基础框架包括三个共同连接的变量(而不是教科书中介绍的标准的两个变量)时,首次提供 Mahalanobis 距离的三维可视化。Mahalanobis 距离超过预定阈值的数据被视为异常值,该阈值由分布确定。这种方法类似于根据置信度得出的临界值来识别单变量分布的异常值。虽然文献主要讨论的是二元分布的马哈拉诺比距离公式,但我们扩展了讨论范围,增加了一个变量,并提供了三元分布的马哈拉诺比距离的可视化结果。我们通过一个实证例子来说明三变量 Mahalanobis 距离的实际应用。在三因素系统中将异常值与其他历史事件一起可视化,可为了解当前环境的风险概况和评估未来极端事件的概率提供宝贵的见解。
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来源期刊
自引率
0.00%
发文量
70
期刊介绍: International Journal of Economics and Financial Issues (IJEFI) is the international academic journal, and is a double-blind, peer-reviewed academic journal publishing high quality conceptual and measure development articles in the areas of economics, finance and related disciplines. The journal has a worldwide audience. The journal''s goal is to stimulate the development of economics, finance and related disciplines theory worldwide by publishing interesting articles in a highly readable format. The journal is published Bimonthly (6 issues per year) and covers a wide variety of topics including (but not limited to): Macroeconomcis International Economics Econometrics Business Economics Growth and Development Regional Economics Tourism Economics International Trade Finance International Finance Macroeconomic Aspects of Finance General Financial Markets Financial Institutions Behavioral Finance Public Finance Asset Pricing Financial Management Options and Futures Taxation, Subsidies and Revenue Corporate Finance and Governance Money and Banking Markets and Institutions of Emerging Markets Public Economics and Public Policy Financial Economics Applied Financial Econometrics Financial Risk Analysis Risk Management Portfolio Management Financial Econometrics.
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