CRAIDec 13, 2023

Prompt Engineering-assisted Malware Dynamic Analysis Using GPT-4

arXiv:2312.08317v116 citationsh-index: 28Has CodeIEEE Transactions on Dependable and Secure Computing
Originality Incremental advance
AI Analysis

This addresses malware detection for cybersecurity, offering improved generalization against concept drift, but it is incremental as it builds on existing prompt engineering and pre-trained models.

The paper tackles the problem of limited representation quality and generalization in malware detection from API sequences by using GPT-4 to generate explanatory text for API calls and BERT for representation, achieving better performance than the state-of-the-art TextCNN with nearly 100% recall in cross-database and few-shot experiments.

Dynamic analysis methods effectively identify shelled, wrapped, or obfuscated malware, thereby preventing them from invading computers. As a significant representation of dynamic malware behavior, the API (Application Programming Interface) sequence, comprised of consecutive API calls, has progressively become the dominant feature of dynamic analysis methods. Though there have been numerous deep learning models for malware detection based on API sequences, the quality of API call representations produced by those models is limited. These models cannot generate representations for unknown API calls, which weakens both the detection performance and the generalization. Further, the concept drift phenomenon of API calls is prominent. To tackle these issues, we introduce a prompt engineering-assisted malware dynamic analysis using GPT-4. In this method, GPT-4 is employed to create explanatory text for each API call within the API sequence. Afterward, the pre-trained language model BERT is used to obtain the representation of the text, from which we derive the representation of the API sequence. Theoretically, this proposed method is capable of generating representations for all API calls, excluding the necessity for dataset training during the generation process. Utilizing the representation, a CNN-based detection model is designed to extract the feature. We adopt five benchmark datasets to validate the performance of the proposed model. The experimental results reveal that the proposed detection algorithm performs better than the state-of-the-art method (TextCNN). Specifically, in cross-database experiments and few-shot learning experiments, the proposed model achieves excellent detection performance and almost a 100% recall rate for malware, verifying its superior generalization performance. The code is available at: github.com/yan-scnu/Prompted_Dynamic_Detection.

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