SKYNET: an efficient and robust neural network training tool for machine learning in astronomy
Philip Graff, Farhan Feroz, Michael P. Hobson, Anthony N. Lasenby

TL;DR
SkyNet is a versatile, efficient neural network training tool capable of handling large, complex models for various machine learning tasks in astronomy, using advanced pre-training and optimization techniques.
Contribution
The paper introduces SkyNet, a new neural network training algorithm that combines pre-training with a regularized Newton's method, enabling training of complex networks efficiently.
Findings
Successfully trained deep networks for astronomical image analysis.
Demonstrated robustness and efficiency across multiple applications.
Achieved accurate results in structure recovery and object identification.
Abstract
We present the first public release of our generic neural network training algorithm, called SkyNet. This efficient and robust machine learning tool is able to train large and deep feed-forward neural networks, including autoencoders, for use in a wide range of supervised and unsupervised learning applications, such as regression, classification, density estimation, clustering and dimensionality reduction. SkyNet uses a `pre-training' method to obtain a set of network parameters that has empirically been shown to be close to a good solution, followed by further optimisation using a regularised variant of Newton's method, where the level of regularisation is determined and adjusted automatically; the latter uses second-order derivative information to improve convergence, but without the need to evaluate or store the full Hessian matrix, by using a fast approximate method to calculate…
Peer Reviews
No public reviews on file for this paper yet. If you reviewed it on a platform where reviews are public (OpenReview, ICLR, NeurIPS, ICML), you can paste yours below so the community can read it here.
Videos
No videos yet. Explain this paper in a talk, walkthrough, or lecture? Add one.
