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--- |
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license: apache-2.0 |
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paper_ids: |
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- '2602.11389' |
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pipeline_tag: image-feature-extraction |
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datasets: |
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- clevrer |
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- pusht |
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tags: |
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- object-centric |
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- world-models |
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- causal-inference |
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- jepa |
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- representation-learning |
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- vision |
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--- |
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# C-JEPA: Causal-JEPA |
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This repository contains the weights and code for **Causal-JEPA (C-JEPA)**, a simple and flexible object-centric world model architecture presented in the paper [Causal-JEPA: Learning World Models through Object-Level Latent Interventions](https://huggingface.co/papers/2602.11389). |
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* **Paper:** [Causal-JEPA: Learning World Models through Object-Level Latent Interventions](https://huggingface.co/papers/2602.11389) |
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* **Project Page:** [https://hazel-heejeong-nam.github.io/cjepa/](https://hazel-heejeong-nam.github.io/cjepa/) |
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* **Code:** [https://github.com/galilai-group/cjepa](https://github.com/galilai-group/cjepa) |
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## Summary |
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World models require robust relational understanding to support prediction, reasoning, and control. While object-centric representations provide a useful abstraction, they are not sufficient to capture interaction-dependent dynamics. C-JEPA is a simple and flexible object-centric world model that extends masked joint embedding prediction from image patches to object-centric representations. By applying object-level masking that requires an object's state to be inferred from other objects, C-JEPA induces latent interventions with counterfactual-like effects and prevents shortcut solutions, making interaction reasoning essential. |
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Empirically, C-JEPA demonstrates: |
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* **Improved Visual Reasoning:** Consistent gains in visual question answering, with an absolute improvement of about 20% in counterfactual reasoning compared to the same architecture without object-level masking on benchmarks like CLEVRER. |
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* **Efficient Planning:** Substantially more efficient planning in agent control tasks (e.g., Push-T), using only 1% of the total latent input features required by patch-based world models while achieving comparable performance. |
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* **Causal Inductive Bias:** A formal analysis demonstrates that object-level masking induces a causal inductive bias via latent interventions. |
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## Architecture |
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## Setup and Usage |
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C-JEPA relies on object-centric encoders (like VideoSAUR or SAVi) to extract representations. For detailed environment setup, dataset preparation, and training/evaluation scripts, please refer to the [official GitHub repository](https://github.com/galilai-group/cjepa). The repository also provides model checkpoints and pre-extracted slot representations for various configurations. |
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## Citation |
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If you find this work useful, please consider citing: |
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```bibtex |
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@article{nam2026causal, |
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title={Causal-JEPA: Learning World Models through Object-Level Latent Interventions}, |
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author={Nam, Heejeong and Le Lidec, Quentin and Maes, Lucas and LeCun, Yann and Balestriero, Randall}, |
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journal={arXiv preprint arXiv:2602.11389}, |
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year={2026} |
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} |
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``` |