Challenge: Multi-modal online advertisements require robust content moderation to ensure user safety . key challenges include nuanced, multi-modal nature of ads, severe data scarcity and class imbalance due to the rarity of offensive content .
Approach: They propose a framework that detects offensive content only when a user's search query is paired with a specific ad .
Outcome: The proposed framework reduces the serving of offensive query-ad pairs by more than 80% while maintaining the efficiency required for real-time advertising systems.

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Challenge: Recent advances in large language models have improved the detection of non-compliant content, but critical gaps persist in fine-grained understanding, explainability, and generalization.
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Beyond Static Benchmarks: Synthesizing Harmful Content via Persona-based Simulation for Robust Evaluation (2026.acl-long)

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Challenge: Existing static benchmarks for harmful content detection face limitations in scalability and diversity.
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A Survey on Multimodal Disinformation Detection (2022.coling-1)

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Challenge: Recent years have witnessed the proliferation of offensive content online such as fake news, propaganda, misinformation, and disinformation.
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RAVEN: Robust Advertisement Video Violation Temporal Grounding via Reinforcement Reasoning (2025.acl-industry)

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Challenge: Existing methods for detecting ads video violations lack precise temporal grounding, noisy annotations, and limited generalization.
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Thesis Proposal: An Explainable Multimodal Framework for Detecting Harmful Content in Code-Switched Children’s Media (2026.acl-srw)

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Challenge: Current content moderation systems fail to protect children from harmful content, especially in under-resourced, code-switched settings.
Approach: They propose to integrate a fine-tuned classifier with an LLM-powered module that synthesizes the classifier’s internal evidential signals to generate faithful, human-readable rationales for each decision.
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Revealing the Truth with ConLLM for Detecting Multi-Modal Deepfakes (2026.findings-eacl)

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Challenge: Existing methods for deepfake detection suffer from two limitations: modality fragmentation and shallow inter-modal reasoning.
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Learning from LLM Agents: In-Context Generative Models for Text Casing in E-Commerce Ads (2025.emnlp-industry)

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Challenge: Existing NER-based transformer models are expensive and lack contextual dependencies, making them less reliable when handling unseen or ad-specific terms, e.g., brand names.
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ℛ3: Advertisement Compliance ℛectification via Group-ℛelative Experience Extractor and Curriculum ℛeinforcement (2026.acl-industry)

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Challenge: Existing methods of content moderation are infeasible due to over-editing and compromise the advertiser’s original semantic intent.
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Rethinking Offensive Text Detection as a Multi-Hop Reasoning Problem (2022.findings-acl)

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Challenge: Existing methods of offensive text detection perform poorly when asked to detect implicitly offensive statements . a dataset based on SLIGHT provides a framework for implicit offensive text identification .
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HyperHatePrompt: A Hypergraph-based Prompting Fusion Model for Multimodal Hate Detection (2025.coling-main)

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Challenge: Existing models for multimodal hate detection lack implicit hateful cues, cross-modal-induced hate, and diversity of hate target groups.
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