LGMLJun 5, 2023

Representational Strengths and Limitations of Transformers

arXiv:2306.02896v2144 citationsh-index: 26
Originality Incremental advance
AI Analysis

This provides foundational insights into transformer architecture for the machine learning community, though it is incremental in building theoretical understanding.

The paper tackles the problem of mathematically characterizing the representational strengths and limitations of transformer attention layers, showing that transformers scale logarithmically in input size for a sparse averaging task while scaling linearly for a triple detection task.

Attention layers, as commonly used in transformers, form the backbone of modern deep learning, yet there is no mathematical description of their benefits and deficiencies as compared with other architectures. In this work we establish both positive and negative results on the representation power of attention layers, with a focus on intrinsic complexity parameters such as width, depth, and embedding dimension. On the positive side, we present a sparse averaging task, where recurrent networks and feedforward networks all have complexity scaling polynomially in the input size, whereas transformers scale merely logarithmically in the input size; furthermore, we use the same construction to show the necessity and role of a large embedding dimension in a transformer. On the negative side, we present a triple detection task, where attention layers in turn have complexity scaling linearly in the input size; as this scenario seems rare in practice, we also present natural variants that can be efficiently solved by attention layers. The proof techniques emphasize the value of communication complexity in the analysis of transformers and related models, and the role of sparse averaging as a prototypical attention task, which even finds use in the analysis of triple detection.

Foundations

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