Countering Cybercrime Risks in Financial Institutions: Forecasting Information Trends Articles uri icon

authors

  • Kuzior, Aleksandra
  • BROZEK, PAULINA
  • KUZMENKO, OLHA
  • YAROVENKO, HANNA
  • VASILYEVA, TETYANA

publication date

  • December 2022

start page

  • 1

end page

  • 22

issue

  • 12

volume

  • 15

International Standard Serial Number (ISSN)

  • 1911-8066

Electronic International Standard Serial Number (EISSN)

  • 1911-8074

abstract

  • This article aims to forecast the information trends related to the most popular cyberattacks, seen as the cyber-crimes" consequences reflecting on the Internet. The study database was formed based on online users" search engine requests regarding the terms 'Cyberattacks on the computer systems of a financial institution”, 'Cyberattacks on the network infrastructure of a financial institution”, and 'Cyberattacks on the cloud infra-structure of a financial institution”, obtained with Google Trends for the period from 16 April 2017 to 4 October 2022. The authors examined the data using the Z-score, the QS test, and the method of differences of average levels. The data were found to be non-stationary with outliers and a seasonal component, so exponential smoothing was applied to reduce fluctuations and clarify the trends. As a result, the authors built additive and multiplicative cyclical and trend-cyclical models with linear, exponential, and damped trends. According to the models" quality evaluation, the best results were shown by the trend-cyclic additive models with an exponential trend for predicting cyberattacks on computer systems and the cloud infrastructure and a trend-cyclic additive model with a damped tendency for predicting cyberattacks on the network infrastructure. The obtained results indicate that the U.S. can expect cybercrimes in the country"s financial system in the short and medium term and develop appropriate countermeasures of a financial institution to reduce potential financial losses.

subjects

  • Computer Science

keywords

  • financial risks; cybercrime; cyberattack; exponential smoothing; prediction; information trend