PCNN: Probable-Class Nearest-Neighbor Explanations Improve Fine-Grained Image Classification Accuracy for AIs and Humans

Abstract

Nearest neighbors (NN) are traditionally used to compute final decisions, e.g., in Support Vector Machines or k-NN classifiers, and to provide users with explanations for the model's decision. In this paper, we show a novel utility of nearest neighbors: To improve predictions of a frozen, pretrained image classifier C. We leverage an image comparator S that (1) compares the input image with NN images from the top-K most probable classes given by C; and (2) uses scores from S to weight the confidence scores of C to refine predictions. Our method consistently improves fine-grained image classification accuracy on CUB-200, Cars-196, and Dogs-120. Also, a human study finds that showing users our probable-class nearest neighbors (PCNN) reduces over-reliance on AI, thus improving their decision accuracy over prior work which only shows only the most-probable (top-1) class examples.

Cite

Text

Nguyen et al. "PCNN: Probable-Class Nearest-Neighbor Explanations Improve Fine-Grained Image Classification Accuracy for AIs and Humans." Transactions on Machine Learning Research, 2024.

Markdown

[Nguyen et al. "PCNN: Probable-Class Nearest-Neighbor Explanations Improve Fine-Grained Image Classification Accuracy for AIs and Humans." Transactions on Machine Learning Research, 2024.](https://mlanthology.org/tmlr/2024/nguyen2024tmlr-pcnn/)

BibTeX

@article{nguyen2024tmlr-pcnn,
  title     = {{PCNN: Probable-Class Nearest-Neighbor Explanations Improve Fine-Grained Image Classification Accuracy for AIs and Humans}},
  author    = {Nguyen, Giang and Chen, Valerie and Taesiri, Mohammad Reza and Nguyen, Anh Totti},
  journal   = {Transactions on Machine Learning Research},
  year      = {2024},
  url       = {https://mlanthology.org/tmlr/2024/nguyen2024tmlr-pcnn/}
}