Rothschild Lecture: Mathematics for data-driven modeling - The science of crystal balls

1 hour 10 mins,  488.00 MB,  WebM  640x360,  29.97 fps,  44100 Hz,  951.83 kbits/sec
Share this media item:
Embed this media item:


About this item
media item has no image
Description: Kevrekidis, Y (Princeton University)
Tuesday 21st June 2016 - 16:00 to 17:00
 
Created: 2016-07-04 15:06
Collection: Stochastic Dynamical Systems in Biology: Numerical Methods and Applications
Publisher: Isaac Newton Institute
Copyright: Kevrekidis, Y
Language: eng (English)
Distribution: World     (downloadable)
Explicit content: No
Aspect Ratio: 16:9
Screencast: No
Bumper: UCS Default
Trailer: UCS Default
 
Abstract: In mathematical modeling one typically progresses from observations of the world (and some serious thinking!) to equations for a model, and then to the analysis of the model to make predictions. Good mathematical models give good predictions (and inaccurate ones do not) > - but the computational tools for analyzing them are the same: algorithms that are typically based on closed form equations. While the skeleton of the process remains the same, today we witness the development of mathematical techniques that operate directly on observations -data-, and "circumvent" the serious thinking that goes into selecting variables and parameters and writing equations. The process then may appear to the user a little like making predictions by "looking into a crystal ball". Yet the "serious thinking" is still there and uses the same -and some new- mathematics: it goes into building algorithms that "jump directly" from data to the analysis of the model (which is never available in closed form) so as to make predictions. I will present a couple of efforts that illustrate this new path from data to predictions. It really is the same old path, but it is travelled by new means.
Available Formats
Format Quality Bitrate Size
MPEG-4 Video 640x360    1.94 Mbits/sec 1.00 GB View Download
WebM * 640x360    951.83 kbits/sec 488.00 MB View Download
iPod Video 480x270    523.1 kbits/sec 268.19 MB View Download
MP3 44100 Hz 250.9 kbits/sec 128.64 MB Listen Download
Auto (Allows browser to choose a format it supports)