AI RESEARCH
Gradient Flow Structure and Quantitative Dynamics of Multi-Head Self-Attention
arXiv CS.LG
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ArXi:2605.04279v1 Announce Type: new Transformer self-attention can be interpreted as a gradient flow on the unit sphere, in which tokens evolve under softmax interaction potentials and tend to form clusters. While prior work has established clustering behavior for single-head attention, the multi-head setting remains less understood due to geometric interference between heads, which invalidates standard monotonicity arguments. In this work, we develop a theoretical framework for multi-head self-attention dynamics and resolve several open questions.