Saved in:
Bibliographic Details
Main Authors: Imaizumi, Masaaki, Koyama, Masanori, Isobe, Noboru, Hayashi, Kohei
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.30229
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866917544692023296
author Imaizumi, Masaaki
Koyama, Masanori
Isobe, Noboru
Hayashi, Kohei
author_facet Imaizumi, Masaaki
Koyama, Masanori
Isobe, Noboru
Hayashi, Kohei
contents We use a mean-field-based transformer model to theoretically investigate how auxiliary variables, such as positional encoding, prevent mode collapse of self-attention mechanisms. The use of mean-field transformers to analyze the properties of self-attention mechanisms has garnered significant attention in recent years due to their ability to comprehensively analyze token interactions. However, analysis of this simple model suggests that mode collapse, where token distributions degenerate to a single point, occurs during long inferences (i.e., many layers), indicating a discrepancy with reality. This study investigates this mean-field transformer model and demonstrates that the introduction of auxiliary variables, such as positional encoding, acts as a counterforce against theoretical mode collapse. Specifically, we show that in the theoretical scheme, the energy-maximizing distribution does not degenerate to a single point; instead, it is characterized by a pushforward of the auxiliary variable distribution, thereby avoiding concentration in the Dirac measure. Our main examples are the positional encoding and the fixed prompt insertion treated as a parallel auxiliary-variable mechanism. Furthermore, we demonstrate that positional encoding and prompt insertion possess universality of representation in the limit, meaning that the limit distribution of inference can exactly represent a wide class of distributions. We also analyze several key properties of positional encoding and metastability, and validate our theoretical results through mathematical experiments.
format Preprint
id arxiv_https___arxiv_org_abs_2605_30229
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Anti Mode-Collapse in Mean-Field Transformer via Auxiliary Variables
Imaizumi, Masaaki
Koyama, Masanori
Isobe, Noboru
Hayashi, Kohei
Machine Learning
We use a mean-field-based transformer model to theoretically investigate how auxiliary variables, such as positional encoding, prevent mode collapse of self-attention mechanisms. The use of mean-field transformers to analyze the properties of self-attention mechanisms has garnered significant attention in recent years due to their ability to comprehensively analyze token interactions. However, analysis of this simple model suggests that mode collapse, where token distributions degenerate to a single point, occurs during long inferences (i.e., many layers), indicating a discrepancy with reality. This study investigates this mean-field transformer model and demonstrates that the introduction of auxiliary variables, such as positional encoding, acts as a counterforce against theoretical mode collapse. Specifically, we show that in the theoretical scheme, the energy-maximizing distribution does not degenerate to a single point; instead, it is characterized by a pushforward of the auxiliary variable distribution, thereby avoiding concentration in the Dirac measure. Our main examples are the positional encoding and the fixed prompt insertion treated as a parallel auxiliary-variable mechanism. Furthermore, we demonstrate that positional encoding and prompt insertion possess universality of representation in the limit, meaning that the limit distribution of inference can exactly represent a wide class of distributions. We also analyze several key properties of positional encoding and metastability, and validate our theoretical results through mathematical experiments.
title Anti Mode-Collapse in Mean-Field Transformer via Auxiliary Variables
topic Machine Learning
url https://arxiv.org/abs/2605.30229