Sequential Density Ratio Estimation for Simultaneous Optimization of Speed and Accuracy
Abstract
Classifying sequential data as early and as accurately as possible is a challenging yet critical problem, especially when a sampling cost is high. One algorithm that achieves this goal is the sequential probability ratio test (SPRT), which is known as Bayes-optimal: it can keep the expected number of data samples as small as possible, given the desired error upper-bound. However, the original SPRT makes two critical assumptions that limit its application in real-world scenarios: (i) samples are independently and identically distributed, and (ii) the likelihood of the data being derived from each class can be calculated precisely. Here, we propose the SPRT-TANDEM, a deep neural network-based SPRT algorithm that overcomes the above two obstacles. The SPRT-TANDEM sequentially estimates the log-likelihood ratio of two alternative hypotheses by leveraging a novel Loss function for Log-Likelihood Ratio estimation (LLLR) while allowing correlations up to $N (\in \mathbb{N})$ preceding samples. In tests on one original and two public video databases, Nosaic MNIST, UCF101, and SiW, the SPRT-TANDEM achieves statistically significantly better classification accuracy than other baseline classifiers, with a smaller number of data samples. The code and Nosaic MNIST are publicly available at https://github.com/TaikiMiyagawa/SPRT-TANDEM.
Cite
Text
Ebihara et al. "Sequential Density Ratio Estimation for Simultaneous Optimization of Speed and Accuracy." International Conference on Learning Representations, 2021.Markdown
[Ebihara et al. "Sequential Density Ratio Estimation for Simultaneous Optimization of Speed and Accuracy." International Conference on Learning Representations, 2021.](https://mlanthology.org/iclr/2021/ebihara2021iclr-sequential/)BibTeX
@inproceedings{ebihara2021iclr-sequential,
title = {{Sequential Density Ratio Estimation for Simultaneous Optimization of Speed and Accuracy}},
author = {Ebihara, Akinori F and Miyagawa, Taiki and Sakurai, Kazuyuki and Imaoka, Hitoshi},
booktitle = {International Conference on Learning Representations},
year = {2021},
url = {https://mlanthology.org/iclr/2021/ebihara2021iclr-sequential/}
}