Papers by Dongyan Lin

7 papers
Decouple knowledge from paramters for plug-and-play language modeling (2023.findings-acl)

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Challenge: Pre-trained language models (PLMs) have made impressive results in a wide range of NLP tasks.
Approach: They propose a pre-training model with editable and scalable key-value memory and leverage knowledge in an explainable manner by knowledge retrieval in the pasted macro ‘MEMORY’.
Outcome: The proposed model decouples the knowledge storage from model parameters with an editable and scalable key-value memory and leverages knowledge in an explainable manner by knowledge retrieval in the pasted macro ‘MEMORY’.
English as Defense Proxy: Mitigating Multilingual Jailbreak via Eliciting English Safety Knowledge (2025.findings-emnlp)

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Challenge: Large language models excel in many tasks, but their safety guarantees vary by language.
Approach: They propose a unified approach that leverages English as a universal safety anchor.
Outcome: The proposed approach leverages English as defense proxy (E-Proxy) to transfer safety knowledge across languages.
How Many Answers Should I Give? An Empirical Study of Multi-Answer Reading Comprehension (2023.findings-acl)

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Challenge: Despite recent progress in multi-answer MRC, there is no systematic analysis of how this phenomenon arises and how to better address it.
Approach: They develop a taxonomy to categorize commonly-seen multi-answer MRC instances and examine how well different paradigms deal with different types of multi-announced questions.
Outcome: The proposed taxonomy categorizes commonly-seen multi-answer instances and analyzes how well different paradigms deal with different types of multi-announced instances.
SpidR-Adapt: A Universal Speech Representation Model for Few-Shot Adaptation (2026.acl-long)

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Challenge: Empirically, SpidR-Adapt achieves rapid gains in phonemic discriminability and downstream spoken language modeling scores . current self-supervised learning models require thousands of hours of training data to learn meaningful linguistic representations.
Approach: They propose a bi-level optimization framework for rapid adaptation of speech units to new languages using minimal unlabeled data.
Outcome: The proposed model achieves rapid gains in phonemic discriminability and spoken language modeling scores . it surpasses in-domain toplines after training on less than 1h of target-language audio .
MMDialog: A Large-scale Multi-turn Dialogue Dataset Towards Multi-modal Open-domain Conversation (2023.acl-long)

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Challenge: MMDialog is a dataset of 1.08 million real-world dialogues with 1.53 million unique images across 4,184 topics.
Approach: They propose to use a curated set of 1.08 million dialogues with 1.53 million unique images to generalize the open domain.
Outcome: The proposed system can predict responses to multi-modal content with state-of-the-art techniques and measure their performance.
Keywords and Instances: A Hierarchical Contrastive Learning Framework Unifying Hybrid Granularities for Text Generation (2022.acl-long)

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Challenge: Existing studies focus on contrastive learning on the instance level without discriminating the contribution of each word.
Approach: They propose a hierarchical contrastive learning mechanism which can unify semantic meaning in the input text.
Outcome: The proposed model outperforms baselines on storytelling, paraphrasing, dialogue generation, and storytelling tasks.
LongTail-Swap: benchmarking language models’ abilities on rare words (2025.findings-emnlp)

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Challenge: LongTail-Swap is a benchmark that focuses on the tail of the word distribution, i.e., measures the ability of LMs to learn new words with very little exposure, like infants do.
Approach: They introduce LongTail-Swap, a benchmark that measures the ability of language models to learn new words with very little exposure, like infants do.
Outcome: The proposed benchmark measures the ability of language models to learn new words with very little exposure, like infants do.

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