CLMar 9, 2025

BingoGuard: LLM Content Moderation Tools with Risk Levels

Microsoft
arXiv:2503.06550v120 citationsh-index: 23ICLR
Originality Incremental advance
AI Analysis

This addresses the need for platforms to tailor content filtering based on varying safety thresholds, though it is incremental as it builds on existing moderation methods.

The paper tackles the problem of assessing risk levels in LLM-generated harmful content by introducing BingoGuard, an LLM-based moderation system that predicts binary safety labels and severity levels, achieving state-of-the-art performance with a 4.3% improvement over best public models on benchmarks.

Malicious content generated by large language models (LLMs) can pose varying degrees of harm. Although existing LLM-based moderators can detect harmful content, they struggle to assess risk levels and may miss lower-risk outputs. Accurate risk assessment allows platforms with different safety thresholds to tailor content filtering and rejection. In this paper, we introduce per-topic severity rubrics for 11 harmful topics and build BingoGuard, an LLM-based moderation system designed to predict both binary safety labels and severity levels. To address the lack of annotations on levels of severity, we propose a scalable generate-then-filter framework that first generates responses across different severity levels and then filters out low-quality responses. Using this framework, we create BingoGuardTrain, a training dataset with 54,897 examples covering a variety of topics, response severity, styles, and BingoGuardTest, a test set with 988 examples explicitly labeled based on our severity rubrics that enables fine-grained analysis on model behaviors on different severity levels. Our BingoGuard-8B, trained on BingoGuardTrain, achieves the state-of-the-art performance on several moderation benchmarks, including WildGuardTest and HarmBench, as well as BingoGuardTest, outperforming best public models, WildGuard, by 4.3\%. Our analysis demonstrates that incorporating severity levels into training significantly enhances detection performance and enables the model to effectively gauge the severity of harmful responses.

Foundations

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