English

Compositional Attention: Disentangling Search and Retrieval

Machine Learning 2022-02-15 v2

Abstract

Multi-head, key-value attention is the backbone of the widely successful Transformer model and its variants. This attention mechanism uses multiple parallel key-value attention blocks (called heads), each performing two fundamental computations: (1) search - selection of a relevant entity from a set via query-key interactions, and (2) retrieval - extraction of relevant features from the selected entity via a value matrix. Importantly, standard attention heads learn a rigid mapping between search and retrieval. In this work, we first highlight how this static nature of the pairing can potentially: (a) lead to learning of redundant parameters in certain tasks, and (b) hinder generalization. To alleviate this problem, we propose a novel attention mechanism, called Compositional Attention, that replaces the standard head structure. The proposed mechanism disentangles search and retrieval and composes them in a dynamic, flexible and context-dependent manner through an additional soft competition stage between the query-key combination and value pairing. Through a series of numerical experiments, we show that it outperforms standard multi-head attention on a variety of tasks, including some out-of-distribution settings. Through our qualitative analysis, we demonstrate that Compositional Attention leads to dynamic specialization based on the type of retrieval needed. Our proposed mechanism generalizes multi-head attention, allows independent scaling of search and retrieval, and can easily be implemented in lieu of standard attention heads in any network architecture.

Keywords

Cite

@article{arxiv.2110.09419,
  title  = {Compositional Attention: Disentangling Search and Retrieval},
  author = {Sarthak Mittal and Sharath Chandra Raparthy and Irina Rish and Yoshua Bengio and Guillaume Lajoie},
  journal= {arXiv preprint arXiv:2110.09419},
  year   = {2022}
}
R2 v1 2026-06-24T06:58:53.878Z