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BIG-DATA and the Challenges for Statistical Inference and Economics Teaching and Learning

机译:BIG-DATA与统计推理和经济学教学的挑战

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The ?increasing ?automation ?in ?data ?collection, ?either ?in ?structured ?orunstructured formats, as well as the development of reading, concatenation and comparison algorithms and the growing analytical skills which characterize the era of Big Data, cannot not only be considered a technological achievement, but an organizational, methodological and analytical challenge for knowledge as well, which is necessary to generate opportunities and added value.In fact, exploiting the potential of Big-Data includes all fields of community activity; and given its ability to extract behaviour patterns, we are interested in the challenges for the field of teaching and learning, particularly in the field of statistical inference and economic theory.Big-Data can improve the understanding of concepts, models and techniques used in both statistical inference and economic theory, and it can also generate reliable and robust short and long term predictions. These facts have led to the demand for analytical capabilities, which in turn encourages teachers and students to demand access to massive information produced by individuals, companies and public and private organizations in their transactions and inter- relationships.Mass data (Big Data) is changing the way people access, understand and organize knowledge, which in turn is causing a shift in the approach to statistics and economics teaching, considering them as a real way of thinking rather than just operational and technical disciplines. Hence, the question is how teachers can use automated collection and analytical skills to their advantage when teaching statistics and economics; and whether it will lead to a change in what is taught and how it is taught.
机译:数据收集中越来越多的自动化,结构化或非结构化格式,以及读取,级联和比较算法的发展以及代表大数据时代的日益增长的分析能力,不仅被认为是一项技术成就,但也是知识的组织,方法和分析挑战,这对于创造机会和增加价值是必不可少的。实际上,挖掘大数据的潜力包括社区活动的所有领域;鉴于其具有提取行为模式的能力,我们对教学领域的挑战感兴趣,特别是在统计推断和经济理论领域。大数据可以增进对这两种概念,模型和技术的理解统计推论和经济学理论,它还可以生成可靠且可靠的短期和长期预测。这些事实导致对分析能力的需求,这反过来又鼓励教师和学生要求在交易和相互关系中访问个人,公司以及公共和私人组织产生的大量信息。海量数据(大数据)正在发生变化。人们获取,理解和组织知识的方式,这反过来又导致了统计学和经济学教学方法的转变,将其视为一种真正的思维方式,而不仅仅是操作和技术学科。因此,问题是教师在教授统计学和经济学时如何利用自动收集和分析技能来发挥自己的优势;以及它是否会导致所教的内容和方法的改变。

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