Machine Learning in Astronomy (IAU S368)

Machine Learning in Astronomy (IAU S368)

Possibilities and Pitfalls

Mahabal, Ashish; McIver, Jess; Fluke, Christopher

Cambridge University Press

03/2025

200

Dura

9781009345194

Pré-lançamento - envio 15 a 20 dias após a sua edição

Descrição não disponível.
Enhancing exoplanet surveys via physics-informed machine earning Eric Ford; How do we design data sets for machine learning in astronomy? Renee Hlozek; Deep machine learning in cosmology: Evolution or revolution? Ofer Lahav; An astronomers guide to machine learning Sara Webb; Panel discussion: practical problem solving for machine learning David Parkinson; Panel discussion: methodology for fusion of large datasets Kai Polsterer; The entropy of galaxy spectra Ignacio Ferreras; Unsupervised classification: a necessary step for deep learning? Didier Fraix-Burnet; Spectral identi?cation and classi?cation of dusty stellar sources using spectroscopic and multiwavelength observations through machine learning Sepideh Ghaziasgar; Simulating transient burst noise with gengli Melissa Lopez; Detecting complex sources in large surveys using an apparent complexity measure David Parkinson; Machine learning in the study of star clusters with Gaia EDR3 Priya Shah; Assessing the quality of massive spectroscopic surveys with unsupervised machine learning John Suarez-Perez; Neural networks for meteorite and meteor recognition Aisha Alowais; Unsupervised clustering visualisation tool for Gaia DR3 Marco Alvarez Gonzalez; Kinematic Planetary Signature Finder (KPSFinder): Convolutional neural network-based tool to search for exoplanets in ALMA data Jaehan Bae; Predicting physical parameters of Cepheid and RR Lyrae variables in an instant with machine learning Anupam Bhardwaj; Bayesian deconvolution of a rotating spectral line profile to a non-rotating one Michel Cure; A short study on the representation of gravitational waves data for convolutional neural network Margherita Grespan; Search for microlensing signature in gravitational waves from binary black hole events Kyungmin Kim; Deep learning and numerical simulations to infer the evolution of MaNGA galaxies Johan Knapen; Data pre-extraction for better classification of galaxy mergers William Pearson; Stellar spectra classification and clustering using deep learning Tomasz Rozanski; Is GMM effective in membership determination of open clusters? Priya Shah; Deep radio image segmentation Hattie Stewart; Computational techniques for high energy astrophysics and medical image processing Nicolas Vasquez; Deep learning proves to be an effective tool for detecting previously undiscovered exoplanets in Kepler data Amelia Yu.
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