数据科学的4+1模型

Rafael C. Alvarado
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引用次数: 0

摘要

数据科学是一个复杂而不断发展的领域,但大多数人都认为,它可以被定义为从计算机科学与技术、数学与统计学以及领域知识这三个广泛领域汲取专业知识的组合,目的是从数据中提取知识和价值。除此之外,该领域通常被定义为一系列实际活动,从数据的清理和整理,到数据的分析和使用来推断模型,再到向利益相关者和决策者展示结果的视觉和修辞表达。本文提出了一个数据科学的模型,它超越了洗衣清单的定义,以获得数据科学的具体性质,并帮助区分与相邻领域,如计算机科学和统计学。我们将数据科学定义为一个跨学科领域,包括四个广泛的专业领域:价值、设计、系统和分析。第五个领域,实践,在特定的领域知识背景下整合了其他四个领域。我们称之为数据科学的4+1模型。总之,这些领域属于每个数据科学项目,即使它们在学院中经常是互不关联的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The 4+1 Model of Data Science
Data Science is a complex and evolving field, but most agree that it can be defined as a combination of expertise drawn from three broad areascomputer science and technology, math and statistics, and domain knowledge -- with the purpose of extracting knowledge and value from data. Beyond this, the field is often defined as a series of practical activities ranging from the cleaning and wrangling of data, to its analysis and use to infer models, to the visual and rhetorical representation of results to stakeholders and decision-makers. This essay proposes a model of data science that goes beyond laundry-list definitions to get at the specific nature of data science and help distinguish it from adjacent fields such as computer science and statistics. We define data science as an interdisciplinary field comprising four broad areas of expertise: value, design, systems, and analytics. A fifth area, practice, integrates the other four in specific contexts of domain knowledge. We call this the 4+1 model of data science. Together, these areas belong to every data science project, even if they are often unconnected and siloed in the academy.
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