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Using News Articles and Financial Data to predict the likelihood of bankruptcy

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  • Michael Filletti
  • Aaron Grech

Abstract

Over the past decade, millions of companies have filed for bankruptcy. This has been caused by a plethora of reasons, namely, high interest rates, heavy debts and government regulations. The effect of a company going bankrupt can be devastating, hurting not only workers and shareholders, but also clients, suppliers and any related external companies. One of the aims of this paper is to provide a framework for company bankruptcy to be predicted by making use of financial figures, provided by our external dataset, in conjunction with the sentiment of news articles about certain sectors. News articles are used to attempt to quantify the sentiment on a company and its sector from an external perspective, rather than simply using internal figures. This work builds on previous studies carried out by multiple researchers, to bring us closer to lessening the impact of such events.

Suggested Citation

  • Michael Filletti & Aaron Grech, 2020. "Using News Articles and Financial Data to predict the likelihood of bankruptcy," Papers 2003.13414, arXiv.org.
  • Handle: RePEc:arx:papers:2003.13414
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    References listed on IDEAS

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