``Noisier'’ Noise Contrastive Estimation Is (Almost) Maximum Likelihood
Abstract
Noise Contrastive Estimation (NCE) has fueled major breakthroughs in representation learning and generative modeling. Yet a long-standing challenge remains: accurately estimating ratios between distributions that differ substantially, which significantly limits the applicability of NCE on modern high-dimensional and multimodal datasets. We revisit this problem from a less explored perspective: the magnitude of the noise distribution. Specifically, we show that with a virtually scaled (i.e., artificially increased) noise magnitude, the gradient of the NCE objective can closely align with that of Maximum Likelihood, enabling a trajectory-wise approximation from NCE to MLE, and faster convergence both theoretically and empirically. Building on this insight, we introduce "Noisier" NCE, a simple drop-in modification to vanilla NCE that incurs little to no extra computational cost, while effectively handling density-ratio estimation in challenging regimes where traditional MLE and NCE struggle. Beyond improving classical density-ratio learning, "Noisier" NCE proves broadly applicable: it achieves strong results across image modeling, anomaly detection, and offline black-box optimization. On CIFAR-10 and ImageNet64×64 datasets, it yields 10-step and even 1-step samplers that match or surpass state-of-the-art methods, while cutting training iterations by up to half.
Cite
Text
Yu et al. "``Noisier'’ Noise Contrastive Estimation Is (Almost) Maximum Likelihood." International Conference on Learning Representations, 2026.Markdown
[Yu et al. "``Noisier'’ Noise Contrastive Estimation Is (Almost) Maximum Likelihood." International Conference on Learning Representations, 2026.](https://mlanthology.org/iclr/2026/yu2026iclr-noisier/)BibTeX
@inproceedings{yu2026iclr-noisier,
title = {{``Noisier'’ Noise Contrastive Estimation Is (Almost) Maximum Likelihood}},
author = {Yu, Peiyu and Zhang, Dinghuai and He, Hengzhi and Ma, Xiaojian and Xie, Sirui and Miao, Ruiyao and Lu, Yifan and Zhang, Yasi and Kong, Deqian and Gao, Ruiqi and Xie, Jianwen and Cheng, Guang and Wu, Ying Nian},
booktitle = {International Conference on Learning Representations},
year = {2026},
url = {https://mlanthology.org/iclr/2026/yu2026iclr-noisier/}
}