Enhancing Binary Analysis through Cognitive Load Theory
Description
Reverse engineering is a process focused on gaining an understanding for the intricaciesof a system. This practice is critical in cybersecurity as it promotes the
findings and patching of vulnerabilities as well as the counteracting of malware. Disassemblers
and decompilers have become essential when reverse engineering due to
the readability of information they transcribe from binary files. However, these tools
still tend to produce involved and complicated outputs that hinder the acquisition of
knowledge during binary analysis. Cognitive Load Theory (CLT) explains that this
hindrance is due to the human brain’s inability to process superfluous amounts of
data. CLT classifies this data into three cognitive load types — intrinsic, extraneous,
and germane — that each can help gauge complex procedures.
In this research paper, a novel program call graph is presented accounting for
these CLT principles. The goal of this graphical view is to reduce the cognitive load
tied to the depiction of binary information and to enhance the overall binary analysis
process. This feature was implemented within the binary analysis tool, angr and it’s
user interface counterpart, angr-management. Additionally, this paper will examine a
conducted user study to quantitatively and qualitatively evaluate the effectiveness of
the newly proposed proximity view (PV). The user study includes a binary challenge
solving portion measured by defined metrics and a survey phase to receive direct participant
feedback regarding the view. The results from this study show statistically
significant evidence that PV aids in challenge solving and improves the overall understanding
binaries. The results also signify that this improvement comes with the
cost of time. The survey section of the user study further indicates that users find
PV beneficial to the reverse engineering process, but additional information needs to
be included in future developments.
Date Created
The date the item was original created (prior to any relationship with the ASU Digital Repositories.)
2022
Agent
- Author (aut): Smits, Sean
- Thesis advisor (ths): Wang, Ruoyu
- Thesis advisor (ths): Shoshitaishvili, Yan
- Committee member: Doupe, Adam
- Publisher (pbl): Arizona State University