• 科學研究
    報告題目:

    Random Batch Methods for Interacting Particle Systems

    報告人:

    金石 教授(上海交通大學)

    報告時間:

    報告地點:

    理學院東北樓四樓報告廳(404)

    報告摘要:

    We develop random batch methods for interacting particle systems with large number of particles. These methods use small but random batches for particle interactions,thus the computational cost is reduced from O(N^2) per time step to O(N), for a system with N particles with binary interactions. On one hand, these methods are efficient Asymptotic-Preserving schemes for the underlying particle systems, allowing N-independent time steps and also capture, in the N \to \infty limit, the solution of the mean field limit which are nonlinear Fokker-Planck equations; on the other hand, the stochastic processes generated by the algorithms can also be regarded as new models for the underlying problems. For one of the methods, we give a particle number independent error estimate under some special interactions. Then, we apply these methods to some representative problems in mathematics, physics, social and data sciences, including the Dyson Brownian motion from random matrix theory, Thomson's problem,distribution of wealth, opinion dynamics and clustering. Numerical results show that the methods can capture both the transient solutions and the global equilibrium in these problems.

    This is a joint work with Lei Li (Shanghai Jiao Tong University) and Jian-Guo Liu (Duke University)


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