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Principles of Experimental Design for Big Data Analysis

机译:大数据分析实验设计原理

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Big Datasets are endemic, but are often notoriously difficult to analyse because of their size, heterogeneity and quality. The purpose of this paper is to open a discourse on the potential for modern decision theoretic optimal experimental design methods, which by their very nature have traditionally been applied prospectively, to improve the analysis of Big Data through retrospective designed sampling in order to answer particular questions of interest. By appealing to a range of examples, it is suggested that this perspective on Big Data modelling and analysis has the potential for wide generality and advantageous inferential and computational properties. We highlight current hurdles and open research questions surrounding efficient computational optimisation in using retrospective designs, and in part this paper is a call to the optimisation and experimental design communities to work together in the field of Big Data analysis.
机译:大数据集是地方性的,但由于其大小,异质性和质量,通常很难进行分析。本文的目的是探讨现代决策理论最优实验设计方法的潜力,就其传统性质而言,传统方法已被前瞻性地应用,以通过回顾性设计抽样来改进大数据分析,以回答特定问题。出于兴趣。通过吸引一系列示例,建议对大数据建模和分析的这种观点可能具有广泛的通用性以及有利的推论和计算特性。我们重点介绍了在使用追溯设计时围绕有效计算优化的当前障碍和悬而未决的研究问题,并且在某种程度上,本文旨在呼吁优化和实验设计社区在大数据分析领域开展合作。

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