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ICML 2023

KDEformer: Accelerating Transformers via Kernel Density Estimation

Conference Paper Accepted Paper Artificial Intelligence · Machine Learning

Abstract

Dot-product attention mechanism plays a crucial role in modern deep architectures (e. g. , Transformer) for sequence modeling, however, naïve exact computation of this model incurs quadratic time and memory complexities in sequence length, hindering the training of long-sequence models. Critical bottlenecks are due to the computation of partition functions in the denominator of softmax function as well as the multiplication of the softmax matrix with the matrix of values. Our key observation is that the former can be reduced to a variant of the kernel density estimation (KDE) problem, and an efficient KDE solver can be further utilized to accelerate the latter via subsampling-based fast matrix products. Our proposed KDEformer can approximate the attention in sub-quadratic time with provable spectral norm bounds, while all prior results merely provide entry-wise error bounds. Empirically, we verify that KDEformer outperforms other attention approximations in terms of accuracy, memory, and arithmetic operations on various pre-trained models. For instance, on BigGAN image generation we achieve better generative scores than the exact computation with over 4× speedup. For ImageNet classification with T2T-ViT, KDEformer shows over 18× speedup while the accuracy drop is less than 0. 5%.

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Context

Venue
International Conference on Machine Learning
Archive span
1993-2025
Indexed papers
16471
Paper id
787680188209651642