Exploratory Analysis of Cyberattack Patterns on E-Commerce Platforms Using Statistical Methods

arXiv — cs.LGThursday, November 6, 2025 at 5:00:00 AM

Exploratory Analysis of Cyberattack Patterns on E-Commerce Platforms Using Statistical Methods

A recent study highlights the increasing sophistication of cyberattacks on e-commerce platforms, which poses significant risks to consumer trust and business operations. By employing a hybrid analytical framework that combines statistical modeling and machine learning, researchers aim to enhance the detection and forecasting of these cyber threats. Utilizing the Verizon Community Data Breach dataset, the study's findings could lead to improved security measures, ultimately benefiting both consumers and businesses in the digital marketplace.
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