An Essay on How Data Science Can Strengthen Business

Antonio Duarte Santos
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Abstract

Data science combines several extensions, including, e.g., statistics, scientific methods, artificial intelligence (AI) and data analysis to extract value from raw data. Analytical applications and data scientists can then verify and defer the results to discover patterns and trends. In this way, they allow business leaders to gain enlightened knowledge about the market. Companies have kept a wealth of data with them. As modern technology allowed for the creation and storage of ever-increasing amounts of information, data volumes popped. The wealth of data collected and stored by these technologies can bring regenerative benefits to organizations and societies around the world, but only if they can interpret it. That's where data science comes in. So, the applied economics refers to the application of economic theory and analysis. In this article we intend to present several software that are available for the application of economic analysis. Analysis can be performed on any type of data and is a way of looking at raw data and find useful information. There are several technologies available for economic analysis, with more or less characteristics, some of which are not only intended for this single purpose, and cover a wider spectrum of functionalities. Some of the technologies we will use are, e.g., Rstudio, SPSS, Statis and SAS/Stata. These are very common technologies when talking about economic or business analysis. The intention is to demonstrate how each of these software analyse the data and subsequently the interpretations that we can draw from that scrutiny. Organizations are using data science teams to turn data into a competitive advantage by refining products and services and cost-effective solutions. We will use some different algorithms to verify how they are processed by the different technologies, namely we will use metrics such as maximum, minimum, covariance, standard deviation, average and multicollinearity and variance, even the use of types of regression models.
一篇关于数据科学如何加强业务的文章
数据科学结合了几个扩展,包括,例如,统计,科学方法,人工智能(AI)和数据分析,从原始数据中提取价值。然后,分析应用程序和数据科学家可以验证和延迟结果,以发现模式和趋势。通过这种方式,它们使商业领袖能够获得有关市场的启蒙知识。公司保存了大量的数据。随着现代技术允许创建和存储越来越多的信息,数据量激增。这些技术收集和存储的大量数据可以为世界各地的组织和社会带来再生效益,但前提是他们能够解释这些数据。这就是数据科学的用武之地。因此,应用经济学是指对经济学理论和分析的应用。在本文中,我们打算介绍几个可用于经济分析应用的软件。分析可以对任何类型的数据执行,是查看原始数据并找到有用信息的一种方式。有几种技术可用于经济分析,具有或多或少的特点,其中一些不仅用于此单一目的,而且涵盖了更广泛的功能。我们将使用的一些技术是,例如Rstudio, SPSS, Statis和SAS/Stata。在谈论经济或商业分析时,这些都是非常常见的技术。目的是演示这些软件是如何分析数据的,以及随后我们可以从这些分析中得出的解释。组织正在使用数据科学团队,通过改进产品和服务以及具有成本效益的解决方案,将数据转化为竞争优势。我们将使用一些不同的算法来验证它们是如何被不同的技术处理的,也就是说,我们将使用诸如最大值、最小值、协方差、标准差、平均值和多重共线性和方差等度量,甚至使用各种回归模型。
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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