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The Causal Nature of Modeling with Big Data

机译:大数据建模的因果性质

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I argue for the causal character of modeling in data-intensive science, contrary to widespread claims that big data is only concerned with the search for correlations. After discussing the concept of data-intensive science and introducing two examples as illustration, several algorithms are examined. It is shown how they are able to identify causal relevance on the basis of eliminative induction and a related difference-making account of causation. I then situate data-intensive modeling within a broader framework of an epistemology of scientific knowledge. In particular, it is shown to lack a pronounced hierarchical, nested structure. The significance of the transition to such "horizontal" modeling is underlined by the concurrent emergence of novel inductive methodology in statistics such as non-parametric statistics. Data-intensive modeling is well equipped to deal with various aspects of causal complexity arising especially in the higher level and applied sciences.
机译:我认为数据密集型科学中的建模具有因果关系,这与普遍的说法相反,即大数据仅与搜索相关性有关。在讨论了数据密集型科学的概念并介绍了两个示例作为示例之后,研究了几种算法。展示了他们如何基于消除归纳法和因果关系的相关差异说明来确定因果相关性。然后,我将数据密集型建模放在科学知识认识论的更广泛框架内。特别是,它显示出缺乏明显的分层嵌套结构。新型归纳方法在诸如非参数统计之类的统计中同时出现,突显了向此类“水平”建模过渡的重要性。数据密集型建模设备齐全,可以处理因果复杂性的各个方面,尤其是在更高层次的应用科学中。

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