Malware in the Future? Forecasting of Analyst Detection of Cyber Events
Jonathan Z. Bakdash, Steve Hutchinson, Erin G. Zaroukian, Laura R., Marusich, Saravanan Thirumuruganathan, Charmaine Sample, Blaine Hoffman, and, Gautam Das

TL;DR
This paper demonstrates that analyst-verified cyber attack data can be effectively forecasted one week ahead using Bayesian models, aiding resource allocation and threat awareness in cybersecurity operations.
Contribution
It introduces a forecasting approach based on high-quality analyst-verified malware incident data, highlighting systematic patterns and potential for proactive cyber defense strategies.
Findings
One-week ahead predictions achieved with Bayesian State Space Model.
Systematic patterns in analyst-detected cyber attacks confirmed.
Forecasting can improve resource planning and threat awareness.
Abstract
There have been extensive efforts in government, academia, and industry to anticipate, forecast, and mitigate cyber attacks. A common approach is time-series forecasting of cyber attacks based on data from network telescopes, honeypots, and automated intrusion detection/prevention systems. This research has uncovered key insights such as systematicity in cyber attacks. Here, we propose an alternate perspective of this problem by performing forecasting of attacks that are analyst-detected and -verified occurrences of malware. We call these instances of malware cyber event data. Specifically, our dataset was analyst-detected incidents from a large operational Computer Security Service Provider (CSSP) for the U.S. Department of Defense, which rarely relies only on automated systems. Our data set consists of weekly counts of cyber events over approximately seven years. Since all cyber…
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