New Phases of Active Matter Discovered via Machine Learning
© The Physical Society of Japan
This article is on
Vicsek Model Meets DBSCAN: Cluster Phases in the Vicsek Model
(JPSJ Editors' Choice)
J. Phys. Soc. Jpn.
94,
084002
(2025)
.
A novel synergy between an active matter model and a machine learning algorithm has been discovered, revealing the possibility of new phases in active matter.

Active matter is a relatively new subfield of nonequilibrium physics, where characterizing phase transitions and discovering new phases are key to understanding the collective behavior of systems in the thermodynamic limit. While studies have investigated phase transitions at equilibrium, a central question in nonequilibrium physics — and active matter in particular — is whether there exist novel types of phase transitions that are absent or yet to be discovered in equilibrium systems. This question was highlighted by the pioneering work of Vicsek and his colleagues, who discovered a qualitatively new phase transition that was naively believed to be forbidden by the Mermin–Wagner theorem. This discovery sparked the emergence of the field of active matter. More recently, phenomena such as phase separation and cluster formation in active matter have become intriguing topics of study.
Machine learning has attracted considerable attention due to its unprecedented success in image recognition/generation, natural language processing, and other domains; it has been applied in many areas across physics. Particularly, machine learning techniques are used for physical simulations and the identification of phase transitions. However, to date, the application of clustering algorithms to active matter remains relatively underexplored — despite clustering being a central topic in machine learning and its application to active matter being conceptually straightforward.
This study explores the possibility of applying clustering algorithms to active matter. Specifically, we begin with the Vicsek model, chosen for its simplicity and historical significance as one of the earliest models in active matter research. Given the wide variety of clustering algorithms available, the first challenge lies in selecting an appropriate one. In this work, we focus on Density-Based Spatial Clustering of Applications with Noise (DBSCAN), a widely used clustering method in engineering, because its control parameters can be meaningfully interpreted within the context of the Vicsek model. We first analyze the mathematical relationship between DBSCAN and the Vicsek model. Then, we apply DBSCAN to simulation data of the Vicsek model to identify the emergence of possible new phases. We introduce a novel order parameter based on DBSCAN to characterize any such newly discovered phases. Finally, we examine the robustness of the DBSCAN-defined cluster phase in the thermodynamic limit by comparing the results with those obtained using the mean-shift algorithm, which shares the same control parameter as DBSCAN.
These findings may offer a new perspective on active matter and how machine learning algorithms can be utilized for physics.
(Written by Hideyuki Miyahara on behalf of all authors.)
Vicsek Model Meets DBSCAN: Cluster Phases in the Vicsek Model
(JPSJ Editors' Choice)
J. Phys. Soc. Jpn.
94,
084002
(2025)
.
Share this topic
Fields
Related Articles
-
Role of the Diffusion Layer in Energy Devices
Cross-disciplinary physics and related areas of science and technology
Structure and mechanical and thermal properties in condensed matter
2026-5-1
In many energy devices, electron transfer occurs between ions dissolved in the electrolyte and the electrodes. For keep current flowing, new ions must be supplied continuously to the electrode surface from the bulk region. The diffusion layer’s role in diffusive mass transfer was clarified using the rotating disk electrode method.
-
Toward Clarification of Physical Properties of Quasicrystals: Noncollinear Magnetic Orders in Icosahedral Approximants
Cross-disciplinary physics and related areas of science and technology
Electronic transport in condensed matter
Magnetic properties in condensed matter
2026-4-6
An effective model based on magnetic anisotropy arising from a crystalline electric field is constructed for icosahedral approximants, which not only explains measured ferromagnets and antiferromagnets but also reveals new types of noncollinear magnetic orders.
-
Topological Recast of Vortex Structures in Human Heart Blood Flow
Cross-disciplinary physics and related areas of science and technology
Electromagnetism, optics, acoustics, heat transfer, and classical and fluid mechanics
2026-2-16
We developed a new topological data analysis method to objectively identify the cardiac vortex structures. The method provides robust quantitative metrics for advancing cardiovascular diagnostics.
-
Rethinking Replica Analysis of Learning
Cross-disciplinary physics and related areas of science and technology
Statistical physics and thermodynamics
2026-1-19
The statistical physics analysis of learning parametric models was revisited by combining the replica method with a grand canonical ensemble and variational approach, enabling prediction error estimation for learning systems with real data.
-
Synthesis of Frustrated Magnets via Low-Temperature Topochemical Reactions
Cross-disciplinary physics and related areas of science and technology
Magnetic properties in condensed matter
2026-1-6
Topochemical exchange converts Li2CoTi3O8 into metastable Co2Ti3O8 with a diamond network, showing strong J1–J2 frustration, TN near 4.4 K, and four magnetization steps up to 50 T.
