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Geodesic Distance on Gaussian Manifolds to Reduce the Statistical Errors in the Investigation of Complex Systems

机译:高斯歧管的测地距,以减少复杂系统调查中的统计误差

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In the last years the reputation of medical, economic, and scientific expertise has been strongly damaged by a series of false predictions and contradictory studies. The lax application of statistical principles has certainly contributed to the uncertainty and loss of confidence in the sciences. Various assumptions, generally held as valid in statistical treatments, have proved their limits. In particular, since some time it has emerged quite clearly that even slightly departures from normality and homoscedasticity can affect significantly classic significance tests. Robust statistical methods have been developed, which can provide much more reliable estimates. On the other hand, they do not address an additional problem typical of the natural sciences, whose data are often the output of delicate measurements. The data can therefore not only be sampled from a nonnormal pdf but also be affected by significant levels of Gaussian additive noise of various amplitude. To tackle this additional source of uncertainty, in this paper it is shown how already developed robust statistical tools can be usefully complemented with the Geodesic Distance on Gaussian Manifolds. This metric is conceptually more appropriate and practically more effective, in handling noise of Gaussian distribution, than the traditional Euclidean distance. The results of a series of systematic numerical tests show the advantages of the proposed approach in all the main aspects of statistical inference, from measures of location and scale to size effects and hypothesis testing. Particularly relevant is the reduction even of 35% in Type II errors, proving the important improvement in power obtained by applying the methods proposed in the paper. It is worth emphasizing that the proposed approach provides a general framework, in which also noise of different statistical distributions can be dealt with.
机译:在过去几年中,医疗,经济和科学专业知识的声誉受到一系列虚假预测和矛盾研究的强烈损害。统计原则的LAX应用肯定促进了对科学的不确定性和丧失信心。普遍存在统计治疗中的各种假设证明了它们的限制。特别是,由于有一段时间,它非常清楚地表明,即使略微偏离正常性和同性恋程度也会影响显着的经典意义测试。已经开发出强大的统计方法,可以提供更可靠的估计。另一方面,它们没有解决自然科学典型的额外问题,其数据通常是精致测量的输出。因此,数据不仅可以从非常规PDF采样,而且因此受到各种幅度的显着高斯添加剂噪声的影响。为了解决这一额外的不确定性来源,本文示出了已经开发的稳健统计工具是如何有用的,可以使用高斯歧管的测地距。这种度量在概念上更合适,并且实际上更有效地处理高斯分布的噪声,而不是传统的欧几里德距离。一系列系统数值测试的结果显示了所提出的方法在统计推理的所有主要方面,从地点和规模到大小效应和假设检测的所有主要方面。特别相关的是II型误差中均匀的35%的减少,证明了通过应用本文提出的方法获得的功率的重要改进。值得强调的是,所提出的方法提供了一般框架,其中也可以处理不同统计分布的噪声。

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