Exploring outliers in global economic dataset having the impact of COVID-19 pandemic

Q3 Decision Sciences
Anindita Desarkar, Ajanta Das, C. Chaudhuri
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引用次数: 0

Abstract

Outlier is a value that lies outside most of the other values in a dataset. Outlier exploration has a huge importance in almost all the industry applications like medical diagnosis, credit card fraudulence and intrusion detection systems. Similarly, in economic domain, it can be applied to analyse many unexpected events to harvest new knowledge like sudden crash of stock market, mismatch between country's per capita incomes and overall development, abrupt change in unemployment rate and steep falling of bank interest. These situations can arise due to several reasons, out of which the present COVID-19 pandemic is a leading one. This motivates the present researchers to identify a few such vulnerable areas in the economic sphere and ferret out the most affected countries for each of them. Two well-known machine-learning techniques DBSCAN and Z-score are utilised to get these insights, which can serve as a guideline towards improving the overall scenario subsequently. Copyright © 2023 Inderscience Enterprises Ltd.
探索受新冠肺炎大流行影响的全球经济数据异常值
离群值是位于数据集中大多数其他值之外的值。异常值探测在几乎所有的行业应用中都非常重要,比如医疗诊断、信用卡欺诈和入侵检测系统。同样,在经济领域,它可以用于分析许多突发事件,如股票市场的突然崩溃,国家人均收入与整体发展的不匹配,失业率的突变和银行利率的急剧下降,以获得新的知识。这些情况可能是由多种原因造成的,其中当前的COVID-19大流行是一个主要原因。这促使目前的研究人员在经济领域确定几个这样的脆弱领域,并为每个领域找出受影响最严重的国家。两种著名的机器学习技术DBSCAN和Z-score被用来获得这些见解,这可以作为随后改善整体场景的指导方针。版权所有©2023 Inderscience Enterprises Ltd。
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来源期刊
International Journal of Business Intelligence and Data Mining
International Journal of Business Intelligence and Data Mining Decision Sciences-Statistics, Probability and Uncertainty
CiteScore
1.50
自引率
0.00%
发文量
89
期刊介绍: IJBIDM provides a forum for state-of-the-art developments and research as well as current innovative activities in business intelligence, data analysis and mining. Intelligent data analysis provides powerful and effective tools for problem solving in a variety of business modelling tasks. IJBIDM highlights intelligent techniques used for business modelling, including all areas of data visualisation, data pre-processing (fusion, editing, transformation, filtering, sampling), data engineering, data mining techniques, tools and applications, neurocomputing, evolutionary computing, fuzzy techniques, expert systems, knowledge filtering, and post-processing. Topics covered include Data extraction/reporting/cleaning/pre-processing OLAP, decision analysis, causal modelling Reasoning under uncertainty, noise in data Business intelligence cycle Model specification/selection/estimation Web technology, mining, agents Fuzzy, neural, evolutionary approaches Genetic algorithms, machine learning, expert/hybrid systems Bayesian inference, bootstrap, randomisation Exploratory/automated data analysis Knowledge-based analysis, statistical pattern recognition Data mining algorithms/processes Classification, projection, regression, optimisation clustering Information extraction/retrieval, human-computer interaction Multivariate data visualisation, tools.
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