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EvoMail: Self-Evolving Cognitive Agents for Adaptive Spam and Phishing Email Defense
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Modern email spam and phishing attacks have evolved far beyond keyword
blacklists or simple heuristics. Adversaries now craft multi-modal
campaigns that combine natural-language text with obfuscated URLs,
forged headers, and malicious attachments, adapting their strategies
within days to bypass filters. Traditional spam detection systems, which
rely on static rules or single-modality models, struggle to integrate
heterogeneous signals or to continuously adapt, leading to rapid
performance degradation.We propose EvoMail, a self-evolving cognitive
agent framework for robust detection of spam and phishing. EvoMail first
constructs a unified heterogeneous email graph that fuses textual
content, metadata (headers, senders, domains), and embedded resources
(URLs, attachments). A Cognitive Graph Neural Network (
Model
1.
) enhanced by a Large Language Model (LLM) performs context-aware
reasoning across these sources to identify coordinated spam campaigns.
Most critically, EvoMail engages in an adversarial self-evolution loop:
a “red-team” agent generates novel evasion tactics—such as character
obfuscation or AI-generated phishing text—while the “blue-team”
detector learns from failures, compresses experiences into a memory
module, and reuses them for future reasoning.Extensive experiments on
real-world datasets (Enron-Spam, Ling-Spam, SpamAssassin, and TREC) and
synthetic adversarial variants demonstrate that EvoMail consistently
outperforms state-of-the-art baselines in detection accuracy,
adaptability to evolving spam tactics, and interpretability of reasoning
traces. These results highlight EvoMail’s potential as a resilient and
explainable defense framework against next-generation spam and phishing
threats.
Title: EvoMail: Self-Evolving Cognitive Agents for Adaptive Spam and Phishing Email Defense
Description:
Modern email spam and phishing attacks have evolved far beyond keyword
blacklists or simple heuristics.
Adversaries now craft multi-modal
campaigns that combine natural-language text with obfuscated URLs,
forged headers, and malicious attachments, adapting their strategies
within days to bypass filters.
Traditional spam detection systems, which
rely on static rules or single-modality models, struggle to integrate
heterogeneous signals or to continuously adapt, leading to rapid
performance degradation.
We propose EvoMail, a self-evolving cognitive
agent framework for robust detection of spam and phishing.
EvoMail first
constructs a unified heterogeneous email graph that fuses textual
content, metadata (headers, senders, domains), and embedded resources
(URLs, attachments).
A Cognitive Graph Neural Network (
Model
1.
) enhanced by a Large Language Model (LLM) performs context-aware
reasoning across these sources to identify coordinated spam campaigns.
Most critically, EvoMail engages in an adversarial self-evolution loop:
a “red-team” agent generates novel evasion tactics—such as character
obfuscation or AI-generated phishing text—while the “blue-team”
detector learns from failures, compresses experiences into a memory
module, and reuses them for future reasoning.
Extensive experiments on
real-world datasets (Enron-Spam, Ling-Spam, SpamAssassin, and TREC) and
synthetic adversarial variants demonstrate that EvoMail consistently
outperforms state-of-the-art baselines in detection accuracy,
adaptability to evolving spam tactics, and interpretability of reasoning
traces.
These results highlight EvoMail’s potential as a resilient and
explainable defense framework against next-generation spam and phishing
threats.
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