Selective Attention Improves Transformer | Awesome LLM Papers Add your paper to Awesome LLM Papers

Selective Attention Improves Transformer

Yaniv Leviathan, Matan Kalman, Yossi Matias . No Venue 2024

[Paper]   Search on Google Scholar   Search on Semantic Scholar
Memory & Context Model Architecture

Unneeded elements in the attention’s context degrade performance. We introduce Selective Attention, a simple parameter-free change to the standard attention mechanism which reduces attention to unneeded elements. Selective attention improves language modeling performance in a variety of model sizes and context lengths. For example, a range of transformers trained with the language modeling objective on C4 with selective attention perform equivalently to standard transformers with ~2X more heads and parameters in their attention modules. Selective attention also allows decreasing the size of the attention’s context buffer, leading to meaningful reductions in the memory and compute requirements during inference. For example, transformers with 100M parameters trained on C4 with context sizes of 512, 1,024, and 2,048 need 16X, 25X, and 47X less memory for their attention module, respectively, when equipped with selective attention, as those without selective attention, with the same validation perplexity.

Similar Work