A Review of Statistical Modelling and Machine Learning in Analytical Problems

Q1 Engineering
K. Thiruvengadam, Basilea Watson, P. Chinnaiyan, Rajendran Krishnan
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引用次数: 0

Abstract

Data scientists and statisticians often conflict when deciding on the best approach to solve analytical challenges through machine learning and statistical modeling. However, machine learning and statistical modeling complement each other. Machine learning and statistical modeling are essentially based on similar mathematical principles but use different tools to construct the overall analytical knowledge base. Determining the predominant approach to be employed should be based on the problem to be solved, as well as empirical evidence, such as the size and completeness of the data, number of variables, assumptions or lack thereof, and expected outcomes such as predictions or causality. Good analysts and data scientists thus should be aware of the inherent difference between the two methods based on their proper applications and tools to achieve the desired results.
分析问题中的统计建模和机器学习综述
在决定通过机器学习和统计建模解决分析挑战的最佳方法时,数据科学家和统计学家经常发生冲突。然而,机器学习和统计建模是相辅相成的。机器学习和统计建模本质上基于相似的数学原理,但使用不同的工具来构建整体分析知识库。确定要采用的主要方法应基于要解决的问题,以及经验证据,例如数据的大小和完整性,变量的数量,假设或缺乏假设,以及预期结果,例如预测或因果关系。因此,优秀的分析师和数据科学家应该意识到这两种方法之间的内在差异,这些差异基于它们适当的应用程序和工具来实现预期的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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