Transductive Decoupled Variational Inference for Few-Shot Classification

Abstract

The versatility to learn from a handful of samples is the hallmark of human intelligence. Few-shot learning is an endeavour to transcend this capability down to machines. Inspired by the promise and power of probabilistic deep learning, we propose a novel variational inference network for few-shot classification (coined as TRIDENT) to decouple the representation of an image into semantic and label latent variables, and simultaneously infer them in an intertwined fashion. To induce task-awareness, as part of the inference mechanics of TRIDENT, we exploit information across both query and support images of a few-shot task using a novel built-in attention-based transductive feature extraction module (we call AttFEX). Our extensive experimental results corroborate the efficacy of TRIDENT and demonstrate that, using the simplest of backbones, it sets a new state-of-the-art in the most commonly adopted datasets miniImageNet and tieredImageNet (offering up to 4% and 5% improvements, respectively), as well as for the recent challenging cross-domain miniImagenet --> CUB scenario offering a significant margin (up to 20% improvement) beyond the best existing baselines.

Cite

Text

Singh and Jamali-Rad. "Transductive Decoupled Variational Inference for Few-Shot Classification." Transactions on Machine Learning Research, 2023.

Markdown

[Singh and Jamali-Rad. "Transductive Decoupled Variational Inference for Few-Shot Classification." Transactions on Machine Learning Research, 2023.](https://mlanthology.org/tmlr/2023/singh2023tmlr-transductive/)

BibTeX

@article{singh2023tmlr-transductive,
  title     = {{Transductive Decoupled Variational Inference for Few-Shot Classification}},
  author    = {Singh, Anuj Rajeeva and Jamali-Rad, Hadi},
  journal   = {Transactions on Machine Learning Research},
  year      = {2023},
  url       = {https://mlanthology.org/tmlr/2023/singh2023tmlr-transductive/}
}