Jie Yin


2025

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Meta-Semantics Augmented Few-Shot Relational Learning
Han Wu | Jie Yin
Proceedings of the 2025 Conference on Empirical Methods in Natural Language Processing

Few-shot relational learning on knowledge graph (KGs) aims to perform reasoning over relations with only a few training examples. While current methods have focused primarily on leveraging specific relational information, rich semantics inherent in KGs have been largely overlooked. To bridge this gap, we propose PromptMeta, a novel prompted meta-learning framework that seamlessly integrates meta-semantics with relational information for few-shot relational learning. PromptMeta introduces two core innovations: (1) a Meta-Semantic Prompt (MSP) pool that learns and consolidates high-level meta-semantics shared across tasks, enabling effective knowledge transfer and adaptation to newly emerging relations; and (2) a learnable fusion mechanism that dynamically combines meta-semantics with task-specific relational information tailored to different few-shot tasks. Both components are optimized jointly with model parameters within a meta-learning framework. Extensive experiments and analyses on two real-world KG benchmarks validate the effectiveness of PromptMeta in adapting to new relations with limited supervision.

2024

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SPZ: A Semantic Perturbation-based Data Augmentation Method with Zonal-Mixing for Alzheimer’s Disease Detection
FangFang Li | Cheng Huang | PuZhen Su | Jie Yin
Proceedings of the 62nd Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)

Alzheimer’s Disease (AD), characterized by significant cognitive and functional impairment, necessitates the development of early detection techniques. Traditional diagnostic practices, such as cognitive assessments and biomarker analysis, are often invasive and costly. Deep learning-based approaches for non-invasive AD detection have been explored in recent studies, but the lack of accessible data hinders further improvements in detection performance. To address these challenges, we propose a novel semantic perturbation-based data augmentation method that essentially differs from existing techniques, which primarily rely on explicit data engineering. Our approach generates controlled semantic perturbations to enhance textual representations, aiding the model in identifying AD-specific linguistic patterns, particularly in scenarios with limited data availability. It learns contextual information and dynamically adjusts the perturbation degree for different linguistic features. This enhances the model’s sensitivity to AD-specific linguistic features and its robustness against natural language noise. Experimental results on the ADReSS challenge dataset demonstrate that our approach outperforms other strong and competitive deep learning methods.

2015

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Squibs: Evaluation Methods for Statistically Dependent Text
Sarvnaz Karimi | Jie Yin | Jiri Baum
Computational Linguistics, Volume 41, Issue 3 - September 2015

2013

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Clustering Microtext Streams for Event Identification
Jie Yin
Proceedings of the Sixth International Joint Conference on Natural Language Processing

2012

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Unifying Local and Global Agreement and Disagreement Classification in Online Debates
Jie Yin | Nalin Narang | Paul Thomas | Cecile Paris
Proceedings of the 3rd Workshop in Computational Approaches to Subjectivity and Sentiment Analysis