Circuit Complexity Bounds for Visual Autoregressive Model
Understanding the expressive ability of a specific model is essential for grasping its capacity limitations. Recently, several studies have established circuit complexity bounds for Transformer architecture. Besides, the Visual AutoRegressive (VAR) model has risen to be a prominent method in the fie...
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Zusammenfassung: | Understanding the expressive ability of a specific model is essential for
grasping its capacity limitations. Recently, several studies have established
circuit complexity bounds for Transformer architecture. Besides, the Visual
AutoRegressive (VAR) model has risen to be a prominent method in the field of
image generation, outperforming previous techniques, such as Diffusion
Transformers, in generating high-quality images. We investigate the circuit
complexity of the VAR model and establish a bound in this study. Our primary
result demonstrates that the VAR model is equivalent to a simulation by a
uniform $\mathsf{TC}^0$ threshold circuit with hidden dimension $d \leq O(n)$
and $\mathrm{poly}(n)$ precision. This is the first study to rigorously
highlight the limitations in the expressive power of VAR models despite their
impressive performance. We believe our findings will offer valuable insights
into the inherent constraints of these models and guide the development of more
efficient and expressive architectures in the future. |
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DOI: | 10.48550/arxiv.2501.04299 |