Dr. Yangyang Shu | Low-supervised Learning | Best Researcher Award
Associate Lecturer at University of New South Wales, Australia
Yangyang Shu is a computer science researcher specializing in machine learning and artificial intelligence, with a current appointment as Associate Lecturer at the University of New South Wales (UNSW). His research spans self-supervised learning, domain adaptation, privileged information, and their applications in areas like fine-grained visual recognition and music understanding. With a strong academic background from institutions in China and Australia, he has published extensively in top-tier venues (CVPR, IJCAI, ECCV) and actively contributes to peer review for A* conferences and journals. Yangyang is also skilled in symbolic music generation and performance modeling, especially in the context of large language models.
Publication Profile
Educational Background 🎓
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Ph.D. in Engineering & Information Technology
University of Technology Sydney (UTS), Australia
Duration: July 2018 – November 2021
Supervisor: Prof. Guandong Xu -
M.Sc. in Computer Science
University of Science and Technology of China (USTC)
Duration: September 2015 – July 2018
Supervisor: Prof. Shangfei Wang -
B.Sc. in Computer Science
Anhui University (AHU)
Duration: September 2011 – July 2015
Professional Experience 💼
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Associate Lecturer
University of New South Wales (UNSW), School of Systems and Computing
March 2025 – Present
Supervisor: Prof. Roland Göcke -
Research Fellow
University of Adelaide, Australian Institute for Machine Learning (AIML)
December 2021 – December 2024
Supervisor: A/Prof. Lingqiao Liu -
Academic Supervision
Unofficially supervised 1 PhD student, 3 master’s students, and 2 undergraduates at USTC, UTS, Adelaide, and UNSW. -
Teaching Experience
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ZEIT 2103 – Data Structures and Representation, 2025 Semester 1
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ZEIT 1112 – Introduction to Programming, 2025 Semester 2
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Research Interests 🔬
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Core Areas:
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Machine Learning (Self/Semi-Supervised Learning)
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Unsupervised Domain Adaptation
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Learning with Privileged Information
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Multi-task Learning and Fine-Grained Visual Recognition
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Music Emotion Recognition and Aesthetic Assessment
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Recent Research Focus:
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Rationale-Guided Learning: Developing regularizations based on prediction rationale to improve generalization and data efficiency.
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Large Language Models for Music: Enhancing training, generation control, and inference for symbolic music generation models.
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Awards and Honors🏆✨
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🥇 National Scholarship, University of Science and Technology of China (14/150) – 2017
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🏅 Outstanding Graduate, USTC – 2018 (17/150)
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🎓 Excellent Graduate, Anhui Province – 2015 (2/391)
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🧮 Second Prize, National College Student Mathematics Competition – 2014
Conclusion🌟
Yangyang Shu is an emerging leader in artificial intelligence research, particularly in areas intersecting machine learning theory and creative applications like music AI. His consistent contributions to high-impact venues, combined with interdisciplinary research and teaching experience across major institutions in China and Australia, mark him as a promising figure in the AI and computer vision communities. His pursuit of rationale-aware and efficient learning systems shows a clear vision for the next generation of interpretable and human-aligned AI technologies.
Publications 📚
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🎵 MuseBarControl
Enhancing Fine-Grained Control in Symbolic Music Generation through Pre-Training and Counterfactual Loss
Yangyang Shu, Haiming Xu, Ziqin Zhou, Anton van den Hengel, Lingqiao Liu
📄 arXiv:2402.01157, 2024
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🧠 Unlocking the Potential of Pre-trained Vision Transformers
for Few-Shot Semantic Segmentation through Relationship Descriptors
Ziqin Zhou, Haiming Xu, Yangyang Shu, Lingqiao Liu
🎯 CVPR 2024 (⭐ Core Rank A*)
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⚡ MSVIT: Improving Spiking Vision Transformer Using Multi-scale Attention Fusion
Wei Hua, Chenlin Zhou, Jibin Wu, Yansong Chua, Yangyang Shu
🤖 IJCAI 2025 (⭐ Core Rank A*)
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🧩 Learning Common Rationale to Improve Self-Supervised Representation
for Fine-Grained Visual Recognition Problems
Yangyang Shu, Anton van den Hengel, Lingqiao Liu
🎯 CVPR 2023 (⭐ Core Rank A*)
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🔄 Source-Free Unsupervised Domain Adaptation
with Hypothesis Consolidation of Prediction Rationale
Yangyang Shu, Xiaofeng Cao, Qi Chen, Bowen Zhang, Ziqin Zhou, Anton van den Hengel, Lingqiao Liu
📄 arXiv:2402.01157, 2024
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📉 Improving Fine-Grained Visual Recognition in Low Data Regimes
Via Self-Boosting Attention Mechanism
Yangyang Shu, Lingqiao Liu, Baosheng Yu, Haiming Xu
🖼️ ECCV 2022 (⭐ Core Rank A*)
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🌇 Semi-Supervised Adversarial Learning
for Attribute-Aware Photo Aesthetic Assessment
Yangyang Shu, Qian Li, Lingqiao Liu, Guandong Xu
📰 IEEE TMM 2021 (⭐ Core Rank A*)
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🎨 Privileged Multi-Task Learning for Attribute-Aware Aesthetic Assessment
Yangyang Shu, Qian Li, Guandong Xu
📘 Pattern Recognition (PR) 2022 (⭐ Core Rank A*)
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➕ V-SVR+: Support Vector Regression with Variational Privileged Information
Yangyang Shu, Qian Li, Chang Xu, Shaowu Liu, Guandong Xu
📰 IEEE TMM 2021 (⭐ Core Rank A*)
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🧪 Perf-AL: Performance Prediction for Configurable Software through Adversarial Learning
Yangyang Shu, Yulei Sui, Hongyu Zhang, Guandong Xu
🛠️ ESEM 2020, pp. 1–11 (⭐ Core Rank A)
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🖼️ Learning with Privileged Information for Photo Aesthetic Assessment
Yangyang Shu, Qian Li, Shaowu Liu, Guandong Xu
🧮 Neurocomputing 2020, Vol. 404, pp. 304–316 (⭐ Core Rank B)
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🎻 Emotion Recognition from Music Enhanced by Domain Knowledge
Yangyang Shu, Guandong Xu
🌊 PRICAI 2019, Fiji, pp. 121–134 (⭐ Core Rank B)
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🧠 Emotion Recognition through Integrating EEG and Peripheral Signals
Yangyang Shu, Shangfei Wang
🔊 ICASSP 2017, USA, pp. 2871–2875 (⭐ Core Rank B)