64th ISI World Statistics Congress

64th ISI World Statistics Congress

IPS 187 - Advanced Machine Learning Techniques for General Nonlinear and Non-Gaussian Problems

Category: IPS
Wednesday 19 July 2 p.m. - 3:40 p.m. (Canada/Eastern) (Expired) Room 101

View proposal detail

Sequential Monte Carlo (SMC) as a class of online learning algorithms, can handle general non-linear and non-Gaussian modeling and inference. Hence, it has been widely used in signal and image processing, Bayesian inference, risk analysis and rare event sampling, engineering and robotics, bioinformatics, phylogenetics, mathematical finance, etc. This section will present explainable and interpretable SMC algorithms that are suitable for Nonlinear and Non-Gaussian data science challenges, with rigorous performance guarantee and important scientific applications.

 

Organiser: Prof. Ning Ning 

Chair: Dr Ning Ning 

Speaker: Nicolas Chopin 

Speaker: Dan Crisan 

Speaker: Prof. Jun Liu 

Speaker: Pierre Del Moral

Good to know


For more details on registrations and submissions for the 64th ISI World Statistics Congress, please first login to your account. If you do not have an account then you can create one below:

  • X Cookies Policy

    We have placed cookies on your device to help make this website better.

    You can change your cookie settings in your web browser. Otherwise, we’ll assume you’re OK to continue.

    Some of the cookies we use are essential for the site to work.

    We also use some non-essential cookies to collect information for making reports and to help us improve the site. The cookies collect information in an anonymous form.

    To control third party cookies, you can also adjust your browser settings.

    Do Not Accept Third Party Cookies
    I'm fine with this