Thamilarsu, GeethaLemak, Colleen2026-02-052026-02-052026-02-052025Lemak_washington_0250O_29075.pdfhttps://hdl.handle.net/1773/55194Thesis (Master's)--University of Washington, 2025As the Internet of Things (IoT) domain continues to evolve, IoT devices face escalating security challenges. Recent waves of IoT botnets have exploited device vulnerabilities to launch dangerous large-scale Distributed Denial of Service (DDoS) attacks from compromised, resource-constrained devices. These networks of infected devices pose a unique threat to modern infrastructure, homes, schools, medical facilities, and transportation systems at heightened risk of malicious exploitation. This paper proposes a novel hybrid framework that combines static and dynamic analysis techniques for IoT botnet malware detection without relying on complex Machine Learning (ML) models. By extracting and weighing the importance of key features from malware binaries based on their relevance to DDoS behavior, the framework maintains statistical adaptability to observed data while avoiding large memory usage and opaque black-box decision processes. Designed for interpretability and efficiency, this malware detection framework bridges code-level structure and runtime behavior, offering a transparent and practical botnet detection strategy for diverse resource-constrained IoT ecosystems.application/pdfen-USnoneComputer scienceComputer science and engineeringHybrid Static-Dynamic Feature-Weighted Analysis for IoT Botnet Malware DetectionThesis