Explore the application of deep generative models to improve merger tree construction in galaxy formation studies through this 28-minute conference talk by Tri Nguyen from MIT. Delve into the FLORAH method, which uses machine learning to plant better merger trees, and understand its potential impact on astrophysical research. Learn about the background, objectives, and methodology of this innovative approach, including the use of Chat CBT simulations and training processes. Examine the results through power spectrum analysis and visualizations, and consider the future implications of this work for the field of galaxy evolution. Gain insights into how data-driven tools and astrostatistics are advancing our understanding of galaxy formation physics in the context of current and upcoming astronomical surveys.
FLORAH - Planting Better Merger Trees with Deep Generative Models - Tri Nguyen (MIT)