How does My Model Fail? Automatic Identification and Interpretation of Physical Plausibility Failure Modes with Matryoshka Transcoders

arXiv — cs.LGFriday, November 14, 2025 at 5:00:00 AM
The introduction of Matryoshka Transcoders marks a significant advancement in addressing the physical plausibility failures observed in generative models. These failures, as highlighted in related research, such as the work on zero-shot reasoning in video understanding, emphasize the need for robust frameworks that can interpret complex data. The Matryoshka Transcoders not only enhance feature relevance but also align with ongoing efforts in the field, such as self-supervised learning methods in video analysis. By bridging gaps in existing evaluation techniques, this framework could lead to more reliable generative models, ultimately improving their application across various domains.
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