Towards interpreting ML-based automated malware detection models: a survey
Yuzhou Lin, Xiaolin Chang

TL;DR
This survey reviews and categorizes recent research on interpretability methods for ML-based malware detection, proposing a new taxonomy and evaluation framework to enhance understanding and deployment of such models.
Contribution
It introduces a comprehensive taxonomy for malware detection interpretability methods and evaluates recent approaches based on interpretability attributes.
Findings
Proposed a new taxonomy for malware detection interpretability methods.
Evaluated state-of-the-art approaches using interpretability attribute scores.
Provided insights and suggestions for future research in ML model interpretability for malware detection.
Abstract
Malware is being increasingly threatening and malware detectors based on traditional signature-based analysis are no longer suitable for current malware detection. Recently, the models based on machine learning (ML) are developed for predicting unknown malware variants and saving human strength. However, most of the existing ML models are black-box, which made their pre-diction results undependable, and therefore need further interpretation in order to be effectively deployed in the wild. This paper aims to examine and categorize the existing researches on ML-based malware detector interpretability. We first give a detailed comparison over the previous work on common ML model inter-pretability in groups after introducing the principles, attributes, evaluation indi-cators and taxonomy of common ML interpretability. Then we investigate the interpretation methods towards malware detection,…
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Taxonomy
TopicsAdvanced Malware Detection Techniques · Anomaly Detection Techniques and Applications · Software Engineering Research
