Papers by Yimin Jiang

4 papers
TAMA: Target-Aware Multilingual Abuse Detection by Cascaded Conditional Multi-Task Learning (2026.acl-long)

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Challenge: Existing models for protecting public figures from online abuse ignore who is targeted and how.
Approach: They propose a target-aware multi-task framework that conditions downstream predictions on upstream beliefs via three lightweight modules: Cross-Task Feature Fusion (CTF), Task-Adaptive Gating (TAG), and Label-Guided Span Detection (LGSD).
Outcome: The proposed framework yields higher average F1 than single-task training and standard multi-task learning.
Adaptive Gating in Mixture-of-Experts based Language Models (2023.emnlp-main)

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Challenge: Existing models employ a fixed gating network where each token is computed by the same number of experts.
Approach: They propose a flexible training strategy that allows tokens to be processed by a variable number of experts based on expert probability distribution.
Outcome: The proposed model reduces training time and inference quality while maintaining sparsity while maintaining inference accuracy.
EmoAgent: Assessing and Safeguarding Human-AI Interaction for Mental Health Safety (2025.emnlp-main)

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Challenge: EmoAgent evaluates and mitigates mental health hazards in human-AI interactions, especially for vulnerable human users with psychological disorders.
Approach: EmoAgent is a multi-agent AI framework designed to evaluate and mitigate mental health hazards in human-AI interactions.
Outcome: EmoAgent evaluates and mitigates mental health hazards in human-AI interactions.
Learning from Textual Radiology Reports: A Benchmark Dataset for Coronary CT Angiography (2026.acl-industry)

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Challenge: CCTA reports provide an assessment of coronary disease severity to guide patient management.
Approach: They propose a pipeline that decouples structuring from classification by an LLM-based parser . CCTA-RADS is the largest publicly available dataset of CCDA reports .
Outcome: The proposed approach improves the F1-score by 6%-13% compared with direct methods.

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