AI RESEARCH
ContiGuard: A Framework for Continual Toxicity Detection Against Evolving Evasive Perturbations
arXiv CS.AI
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ArXi:2603.14843v1 Announce Type: cross Toxicity detection mitigates the dissemination of toxic content (e.g., hateful comments, posts, and messages within online social actions) to safeguard a healthy online social environment. However, malicious users persistently develop evasive perturbations to disguise toxic content and evade detectors. Traditional detectors or methods are static over time and are inadequate in addressing these evolving evasion tactics. Thus, continual learning emerges as a logical approach to dynamically update detection ability against evolving perturbations.