Evaluating Out-of-Distribution Performance on Document Image Classifiers

Abstract

The ability of a document classifier to handle inputs that are drawn from a distribution different from the training distribution is crucial for robust deployment and generalizability. The RVL-CDIP corpus is the de facto standard benchmark for document classification, yet to our knowledge all studies that use this corpus do not include evaluation on out-of-distribution documents. In this paper, we curate and release a new out-of-distribution benchmark for evaluating out-of-distribution performance for document classifiers. Our new out-of-distribution benchmark consists of two types of documents: those that are not part of any of the 16 in-domain RVL-CDIP categories (RVL-CDIP-O), and those that are one of the 16 in-domain categories yet are drawn from a distribution different from that of the original RVL-CDIP dataset (RVL-CDIP-N). While prior work on document classification for in-domain RVL-CDIP documents reports high accuracy scores, we find that these models exhibit accuracy drops of between roughly 15-30% on our new out-of-domain RVL-CDIP-N benchmark, and further struggle to distinguish between in-domain RVL-CDIP-N and out-of-domain RVL-CDIP-O inputs. Our new benchmark provides researchers with a valuable new resource for analyzing out-of-distribution performance on document classifiers.

Cite

Text

Larson et al. "Evaluating Out-of-Distribution Performance on Document Image Classifiers." Neural Information Processing Systems, 2022.

Markdown

[Larson et al. "Evaluating Out-of-Distribution Performance on Document Image Classifiers." Neural Information Processing Systems, 2022.](https://mlanthology.org/neurips/2022/larson2022neurips-evaluating/)

BibTeX

@inproceedings{larson2022neurips-evaluating,
  title     = {{Evaluating Out-of-Distribution Performance on Document Image Classifiers}},
  author    = {Larson, Stefan and Lim, Yi Yang Gordon and Ai, Yutong and Kuang, David and Leach, Kevin},
  booktitle = {Neural Information Processing Systems},
  year      = {2022},
  url       = {https://mlanthology.org/neurips/2022/larson2022neurips-evaluating/}
}