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Why good data analysts need to be critical synthesists. Determining the role of semantics in data analysis

机译:为什么优秀的数据分析师需要成为关键的综合。确定语义在数据分析中的作用

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In this article, we critically examine the role of semantic technology in data driven analysis. We explain why learning from data is more than just analyzing data, including also a number of essential synthetic parts that suggest a revision of George Box's model of data analysis in statistics. We review arguments from statistical learning under uncertainty, workflow reproducibility, as well as from philosophy of science, and propose an alternative, synthetic learning model that takes into account semantic conflicts, observation, biased model and data selection, as well as interpretation into background knowledge. The model highlights and clarifies the different roles that semantic technology may have in fostering reproduction and reuse of data analysis across communities of practice under the conditions of informational uncertainty. We also investigate the role of semantic technology in current analysis and workflow tools, compare it with the requirements of our model, and conclude with a roadmap of 8 challenging research problems which currently seem largely unaddressed.
机译:在本文中,我们将严格审查语义技术在数据驱动分析中的作用。我们解释了为什么从数据中学到的不仅仅是分析数据,还包括许多重要的合成部分,这些部分建议修订George Box的统计数据分析模型。我们回顾了不确定性,工作流程可重复性下的统计学习以及科学哲学的论点,并提出了一种替代性的综合学习模型,该模型考虑了语义冲突,观察,偏向模型和数据选择以及对背景知识的解释。该模型强调并阐明了语义技术在信息不确定性条件下促进实践社区中数据分析的再现和重用中可能发挥的不同作用。我们还研究了语义技术在当前分析和工作流程工具中的作用,将其与我们模型的要求进行比较,并得出了8个具有挑战性的研究问题的路线图,这些问题目前似乎尚未解决。

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