Colloquium on Apr. 7, 2022
On Modelling Complex Systems in Astronomy
Speaker: Yuan-Sen Ting (ANU)
Venue: Video Conference
Time: 16:00 PM, Thursday, Apr. 7, 2022
Abstract:
Astronomy today is fundamentally different than it was even just a decade ago. Our increasing ability to collect a large amount of data from ever more powerful instrumental has enabled many new opportunities. However, such opportunity also comes with new challenges. The bottleneck stems from the fact most astronomical observations are inherently high dimension — from “imaging” the Universe at the finest details to fully characterizing tens of millions of spectra which consists of tens of thousands of wavelength pixels. In this regime, classical astrostatistics approaches struggle. I will present two different machine learning approaches to quantify complex systems in astronomy. (1) Reductionist approach: I will discuss how machine learning can optimally compress information and extract higher-order moment information in stochastic processes. (2) A generative approach: I will discuss how generative models, such as normalizing flow, allow us to properly model the vast astronomy data set, enabling the study of complex astronomy systems directly in their raw dimensional space.
Report PPT: https://www.mso.anu.edu.au/~yting/Talks/Complex_Systems.html