AI RESEARCH

Trading Complexity for Expressivity Through Structured Generalized Linear Token Mixing

arXiv CS.LG

ArXi:2605.31367v1 Announce Type: new Token mixing layers play a key role in how language models can learn and generate long-range dependencies. Their efficiency relies on the necessary trade-off between decoding speed and the memory requirements, along with the cache size. Considering causal generation, this paper explores new trade-offs thanks to a unified framework which separates two crucial features: (i) the direct influence of inputs on outputs in one generation step; (ii) the recurrent propagation of information through past outputs.