MultiMax: Sparse and Multi-Modal Attention Learning
Abstract
SoftMax is a ubiquitous ingredient of modern machine learning algorithms. It maps an input vector onto a probability simplex and reweights the input by concentrating the probability mass at large entries. Yet, as a smooth approximation to the Argmax function, a significant amount of probability mass is distributed to other, residual entries, leading to poor interpretability and noise. Although sparsity can be achieved by a family of SoftMax variants, they often require an alternative loss function and do not preserve multi-modality. We show that this trade-off between multi-modality and sparsity limits the expressivity of SoftMax as well as its variants. We provide a solution to this tension between objectives by proposing a piece-wise differentiable function, termed MultiMax, which adaptively modulates the output distribution according to input entry range. Through comprehensive analysis and evaluation, we show that MultiMax successfully produces a distribution that supresses irrelevant entries while preserving multimodality, with benefits in image classification, language modeling and machine translation. The code is available at https://github.com/ZhouYuxuanYX/MultiMax.
Cite
@article{arxiv.2406.01189,
title = {MultiMax: Sparse and Multi-Modal Attention Learning},
author = {Yuxuan Zhou and Mario Fritz and Margret Keuper},
journal= {arXiv preprint arXiv:2406.01189},
year = {2025}
}
Comments
Accepted at ICML 2024