Kanishk Barhanpurkar, T. J. Watson, S. Goyal, Nikita Mandlik, Traian Candin Mihaltan, M. Răboacă, A. Rajawat, Chaman Verma
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引用次数: 0
Abstract
The research paper presents a novel analysis of textual data based on Natural Language Processing (NLP) techniques to analyse New York Times articles from January 2019 to May 2023. The purpose of this paper is to gain an understanding of the economic impact that follows Covid-19 disease. New York Times (NYT), it was started in 1884 is one of the most prominent newspapers in the world. Additionally, we have used the New York Times Archive API to collect the data for the given timeframe. By analysing sentiment analysis, topic modelling, entity recognition, and keyword extraction, valuable insights can be gathered into market trends, industry shifts, and policy interventions. The authors have created a data science pipeline using Amazon Web Services (AWS), which enables data collection, storage, and visualization. It contributes to a better understanding of the pandemic's short-term and long-term economic effects. The results of this study demonstrate Natural Language Processing techniques' potential as a tool for financial analytics, assisting policymakers, economists, and businesses in formulating recovery strategies.
该研究论文提出了一种基于自然语言处理(NLP)技术的文本数据分析方法,用于分析2019年1月至2023年5月期间《纽约时报》的文章。本文的目的是了解Covid-19疾病之后的经济影响。《纽约时报》创刊于1884年,是世界上最著名的报纸之一。此外,我们还使用了New York Times Archive API来收集给定时间范围的数据。通过分析情感分析、主题建模、实体识别和关键字提取,可以收集到有关市场趋势、行业转变和政策干预的有价值的见解。作者使用Amazon Web Services (AWS)创建了一个数据科学管道,它支持数据收集、存储和可视化。它有助于更好地了解大流行病的短期和长期经济影响。这项研究的结果证明了自然语言处理技术作为金融分析工具的潜力,可以帮助政策制定者、经济学家和企业制定恢复战略。