Monte Carlo simulations of anomalous random walks, Enrico Scalas | LMS Summer School (1/5)
The random walk can be seen as a process in which a particle moves randomly in space. We shall consider random walks in a one-dimensional space. So the particle will be able to move just to the left or to the right of its current position on the real line. We shall assume that the particle stays in its current position for a random waiting time and then instantaneously jumps either to the left or to the right with the jump size being a real random variable.
Monte Carlo simulations are computer simulations using pseudo-random number generators. Using a language called R, we shall write a program generating “anomalous” random walks where both the waiting times and the jumps have a distribution 6 with power-law tails making extreme values more likely than with exponential and Gaussian distributions. Using this program, we shall explore some interesting conjectures on the behaviour of the random walk under rescaling of waiting times and jumps. It turns out that these conjectures can be rigorously proven.
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Видео Monte Carlo simulations of anomalous random walks, Enrico Scalas | LMS Summer School (1/5) канала London Mathematical Society
Monte Carlo simulations are computer simulations using pseudo-random number generators. Using a language called R, we shall write a program generating “anomalous” random walks where both the waiting times and the jumps have a distribution 6 with power-law tails making extreme values more likely than with exponential and Gaussian distributions. Using this program, we shall explore some interesting conjectures on the behaviour of the random walk under rescaling of waiting times and jumps. It turns out that these conjectures can be rigorously proven.
==========
The London Mathematical Society has, since 1865, been the UK's learned society for the advancement, dissemination and promotion of mathematical knowledge. Our mission is to advance mathematics through our members and the broader scientific community worldwide.
For further information:
► Website: https://www.lms.ac.uk
► Events: https://www.lms.ac.uk/events
► Grants and Prizes: https://www.lms.ac.uk/grants-prizes
► Publications: https://www.lms.ac.uk/publications
► Membership: https://www.lms.ac.uk/membership
Follow us:
► Twitter: https://twitter.com/LondMathSoc
► Facebook: https://www.facebook.com/londonmathematicalsociety
► LinkedIn: https://www.linkedin.com/company/the-london-mathematical-society/
► Youtube: @LondonMathematicalSociety
Видео Monte Carlo simulations of anomalous random walks, Enrico Scalas | LMS Summer School (1/5) канала London Mathematical Society
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26 августа 2023 г. 4:00:30
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