Papers by Zhiyu Xue

6 papers
Benchmarking and Mitigating the Impact of Noisy User Prompts in Medical VLMs via Cross-Modal Reflection (2026.eacl-industry)

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Challenge: Existing medical vision-language models follow user-provided prompts blindly, a new study finds . current models are noisy, causing problems with reliability in real-world interactions .
Approach: They propose a method to evaluate the influence of clinical prompts on medical vision-language models . they use cross-modal reflection chain-of-thought to train the model to produce reasoning paths .
Outcome: The proposed method significantly improves the robustness against noisy prompts . existing Med-VLMs follow user-provided prompts blindly, the authors show .
S2S-Arena: Evaluating Paralinguistic Instruction Following in Speech-to-Speech Models (2026.acl-long)

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Challenge: Existing benchmarks rely heavily on text-based evaluation and largely ignore paralinguistic cues such as prosody, emotion, and speaker traits.
Approach: They propose a speech-native benchmark for evaluating instruction-following S2S models with explicit assessment of both semantic understanding and paralinguistic expression.
Outcome: The proposed system enables more natural, robust, and human-aligned speech agents.
Enhancing the Safety of Medical Vision-Language Models by Synthetic Demonstrations (2026.eacl-long)

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Challenge: Existing Med-VLMs are vulnerable to harmful clinical queries . authors propose a novel inference-time defense strategy to mitigate harmful queries based on synthetic clinical demonstrations .
Approach: They propose a novel inference-time defense strategy to mitigate harmful queries . existing Med-VLMs are vulnerable to harmful queries, they argue .
Outcome: The proposed strategy reduces query risk while reducing demonstration budget . existing Med-VLMs are vulnerable to harmful queries, authors argue .
Towards Understanding Task-agnostic Debiasing Through the Lenses of Intrinsic Bias and Forgetfulness (2024.findings-acl)

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Challenge: Debiasing Pretrained Language Models (PLMs) are task-agnostic and can be generalizable, but its impact on language modeling ability and the risk of relearning social biases remain as the two most significant challenges.
Approach: They propose a framework which can Propagate Socially-fair Debiasing to Downstream Fine-tuning to alleviate the forgetting issue of PLMs by regularizing debiased attention heads based on the PLM’s bias levels from stages of pretraining and debiase.
Outcome: The proposed framework can Propagate Socially-fair Debiasing to Downstream Fine-tuning, indicating that the ineffectiveness of debiase can be alleviated by overcoming the forgetting issue through regularizing successfully debiased attention heads based on the PLMs’ bias levels from stages of pretraining and debiases.
Communication-Efficient and Tensorized Federated Fine-Tuning of Large Language Models (2025.findings-acl)

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Challenge: Large Language Models (LLMs) excel in translation and summarization due to the capabilities of transformer architectures.
Approach: They propose to integrate tensorized adapters into model encoder/decoder blocks to improve model adaptability against data heterogeneity.
Outcome: Experiments on large-scale cross-device FL and large-silo FL show that the proposed methods perform on par or even better than existing federated PEFT approaches while reducing communication cost.
PAC-tuning: Fine-tuning Pre-trained Language Models with PAC-driven Perturbed Gradient Descent (2023.emnlp-main)

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Challenge: PAC-tuning is a two-stage fine-tune method for pretrained language models . PAC training minimizes the PACBayes generalization bound to learn proper parameter distribution .
Approach: They propose a two-stage fine-tuning method to minimize the PAC-Bayes generalization bound . they use PAC to inject noise with variance learned in the first stage into the model parameters .
Outcome: The proposed method outperforms baseline methods on 5 GLUE benchmark tasks.

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