Yichao Cai
Understanding how learning objectives shapes the representations.
yichao.cai@adelaide.edu.au
I am a PhD student in Computer Science at the Australian Institute for Machine Learning (AIML), Adelaide University, advised by Prof. Javen Qinfeng Shi. I received my M.Sc. and B.Eng. degrees from Wuhan University of Technology and spent five months as a visiting student researcher at California PATH, UC Berkeley.
My research studies how modern learning objectives and supervision signals shape learned representations. I am particularly interested in when objectives such as contrastive learning, masked prediction, and next-token prediction identify latent structure, and when they instead discard, conflate, or leave such structure underdetermined. Understanding these questions helps characterize the theoretical limits of foundation-model objectives, and distinguish which capabilities may emerge through scaling from which limitations require new objectives, supervision forms, or data interventions.
Methodologically, I use tools from identifiability theory, latent-variable modeling, population-objective analysis, and representation geometry. My broader goal is to develop a theory of representation learning that explains the capabilities and structural limits of multimodal foundation models, vision-language models, and predictive world models.
News
| Jun 12, 2026 | New essay: The Coverage Lock—why scaling cannot teach a multimodal model what its training questions never ask about. |
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| May 01, 2026 | We had 3 papers on representation learning (contrastive learning theory, AI4Science, and graphical modeling) accepted to ICML 2026. |
| Feb 10, 2026 | I attended MLSS Melbourne 2026 and enjoyed learning from world-class speakers and connecting with the community. |
| Jan 28, 2026 | Check out our new preprint: The Geometric Mechanics of Contrastive Representation Learning. |
| Oct 15, 2025 | I served as a guest lecturer in Statistical Machine Learning and presented recent advances in vision-language modeling. Slides. |
| Sep 19, 2025 | Our work On the Value of Cross-Modal Misalignment in Multimodal Representation Learning was selected as a Spotlight at NeurIPS 2025. |
| Apr 14, 2025 | We released the preprint On the Value of Cross-Modal Misalignment in Multimodal Representation Learning. |
| Jul 02, 2024 | Our work CLAP: Isolating Content from Style through Contrastive Learning with Augmented Prompts was accepted at ECCV 2024. |
Research
Selected publications are highlighted.
Teaching
At Adelaide University (formerly The University of Adelaide):
- Semester 1, 2026 Teaching Assistant, Neural Networks and Deep Learning (ARTI X300)
- Semester 2, 2025 Guest Lecturer & Head Tutor, Statistical Machine Learning (COMP SCI 3314).
- Trimester 2, 2025 Teaching Assistant, Using Machine Learning Tools (COMP SCI 7317)
- Semester 1, 2025 Teaching Assistant, Concepts in AI and ML (COMP SCI 7327)
Academic Service
Conference Reviewer:
- International Conference on Learning Representations (ICLR) 2026
- International Conference on Machine Learning (ICML) 2026, Silver Reviewer Award
- Conference on Neural Information Processing Systems (NeurIPS) 2026
Journal Reviewer:
- Transactions on Machine Learning Research (TMLR)