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Comparability problems in the analysis of multiway data

机译:多向数据分析中的可比性问题

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摘要

Almost all methods for the analysis of multiway data assume that the comparison of any two entries in the data array under study reflects or represents meaningful content-specific information. This is especially the case if one wants the data analysis to yield insight into the real mechanisms underlying the data. Violation of this assumption may imply data-analytic results that are of doubtful quality at best and worthless in the worst-case scenario. In the present paper, we first clarify why comparability is a key assumption in most methods for multiway data analysis. Next, we list a number of reasons why this assumption is very often violated in practice. We then review a few possible approaches that have been advanced to deal with problems of comparability, and discuss their advantages and shortcomings. We conclude by clarifying that any satisfactory solution to comparability problems requires a very careful reflection about the data collection and the ultimate goal of the data analysis.
机译:几乎所有用于分析多路数据的方法都假定所研究的数据数组中任意两个条目的比较反映或表示有意义的特定于内容的信息。如果人们希望数据分析能够深入了解数据背后的真实机制,则尤其如此。违反此假设可能意味着数据分析结果充其量是令人怀疑的,在最坏的情况下却毫无价值。在本文中,我们首先阐明为什么可比性是大多数多方数据分析方法中的关键假设。接下来,我们列出了许多在实践中经常违反此假设的原因。然后,我们回顾一些先进的方法来处理可比性问题,并讨论它们的优点和缺点。我们通过阐明结论来得出任何令人满意的解决可比性问题的方案,都需要对数据收集和数据分析的最终目标进行非常仔细的思考。

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