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Using Deep Reinforcement Learning to Evade Web Application Firewalls

Mojtaba Hemmati, Mohammad Ali Hadavi

202115 citationsDOI

Abstract

Web application firewalls (WAF) are the last line of defense in protecting web applications from application layer security threats like SQL injection and cross-site scripting. Currently, most evasion techniques from WAFs are still developed manually. In this work, we propose a solution, which automatically scans the WAFs to find payloads through which the WAFs can be bypassed. Our solution finds out rules defects, which can be further used in rule tuning for rule-based WAFs. Also, it can enrich the machine learning-based dataset for retraining. To this purpose, we provide a framework based on reinforcement learning with an environment compatible with OpenAI gym toolset standards, employed for training agents to implement WAF evasion tasks. The framework acts as an adversary and exploits a set of mutation operators to mutate the malicious payload syntactically without affecting the original semantics. We use Q-learning and proximal policy optimization algorithms with the deep neural network. Our solution is successful in evading signature-based and machine learning-based WAFs.

Topics & Concepts

Reinforcement learningComputer scienceSQL injectionEvasion (ethics)ExploitPayload (computing)Cross-site scriptingArtificial intelligenceScripting languageApplication firewallAdversarySet (abstract data type)RetrainingComputer securityMachine learningWeb application securityWeb pageProgramming languageWorld Wide WebImmune systemBusinessQuery by ExampleSearch engineInternational tradeWeb search queryBiologyImmunologyNetwork packetStateful firewallWeb developmentNetwork Security and Intrusion DetectionInternet Traffic Analysis and Secure E-votingNetwork Packet Processing and Optimization