English

PIXAR: Auto-Regressive Language Modeling in Pixel Space

Computation and Language 2024-02-27 v2

Abstract

Recent work showed the possibility of building open-vocabulary large language models (LLMs) that directly operate on pixel representations. These models are implemented as autoencoders that reconstruct masked patches of rendered text. However, these pixel-based LLMs are limited to discriminative tasks (e.g., classification) and, similar to BERT, cannot be used to generate text. Therefore, they cannot be used for generative tasks such as free-form question answering. In this work, we introduce PIXAR, the first pixel-based autoregressive LLM that performs text generation. Consisting of only a decoder, PIXAR can perform free-form generative tasks while keeping the number of parameters on par with previous encoder-decoder models. Furthermore, we highlight the challenges of generating text as non-noisy images and show this is due to using a maximum likelihood objective. To overcome this problem, we propose an adversarial pretraining stage that improves the readability and accuracy of PIXAR by 8.1 on LAMBADA and 8.5 on bAbI -- making it comparable to GPT-2 on text generation tasks. This paves the way to build open-vocabulary LLMs that operate on perceptual input only and calls into question the necessity of the usual symbolic input representation, i.e., text as (sub)tokens.

Keywords

Cite

@article{arxiv.2401.03321,
  title  = {PIXAR: Auto-Regressive Language Modeling in Pixel Space},
  author = {Yintao Tai and Xiyang Liao and Alessandro Suglia and Antonio Vergari},
  journal= {arXiv preprint arXiv:2401.03321},
  year   = {2024}
}
R2 v1 2026-06-28T14:10:19.760Z