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Renyu Zhu

Structure-aware Fine-tuning for Code Pre-trained Models

Apr 11, 2024
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A Survey of Neural Code Intelligence: Paradigms, Advances and Beyond

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Mar 21, 2024
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A Dataset for the Validation of Truth Inference Algorithms Suitable for Online Deployment

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Mar 10, 2024
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Towards Long-term Annotators: A Supervised Label Aggregation Baseline

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Nov 15, 2023
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Exchanging-based Multimodal Fusion with Transformer

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Sep 05, 2023
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Rethinking Noisy Label Learning in Real-world Annotation Scenarios from the Noise-type Perspective

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Jul 28, 2023
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When Gradient Descent Meets Derivative-Free Optimization: A Match Made in Black-Box Scenario

May 17, 2023
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Make Prompt-based Black-Box Tuning Colorful: Boosting Model Generalization from Three Orthogonal Perspectives

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May 14, 2023
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Meta-Learning Triplet Network with Adaptive Margins for Few-Shot Named Entity Recognition

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Feb 14, 2023
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CAT-probing: A Metric-based Approach to Interpret How Pre-trained Models for Programming Language Attend Code Structure

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Oct 12, 2022
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