CLOct 6, 2021

ABC: Attention with Bounded-memory Control

arXiv:2110.02488v2644 citations
AI Analysis

This work addresses computational inefficiency in Transformers for long sequences, offering a practical solution for NLP applications, though it is incremental as it builds on existing bounded-memory ideas.

The paper tackles the quadratic complexity of Transformer attention by proposing a bounded-memory control abstraction (ABC), which unifies efficient attention variants and introduces a learned memory-organizing function, resulting in improved inference time and space efficiency with minimal accuracy loss in language tasks.

Transformer architectures have achieved state-of-the-art results on a variety of sequence modeling tasks. However, their attention mechanism comes with a quadratic complexity in sequence lengths, making the computational overhead prohibitive, especially for long sequences. Attention context can be seen as a random-access memory with each token taking a slot. Under this perspective, the memory size grows linearly with the sequence length, and so does the overhead of reading from it. One way to improve the efficiency is to bound the memory size. We show that disparate approaches can be subsumed into one abstraction, attention with bounded-memory control (ABC), and they vary in their organization of the memory. ABC reveals new, unexplored possibilities. First, it connects several efficient attention variants that would otherwise seem apart. Second, this abstraction gives new insights--an established approach (Wang et al., 2020b) previously thought to be not applicable in causal attention, actually is. Last, we present a new instance of ABC, which draws inspiration from existing ABC approaches, but replaces their heuristic memory-organizing functions with a learned, contextualized one. Our experiments on language modeling, machine translation, and masked language model finetuning show that our approach outperforms previous efficient attention models; compared to the strong transformer baselines, it significantly improves the inference time and space efficiency with no or negligible accuracy loss.

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