Weak gravitational lensing with the Square Kilometre Array

Sissa Medialab Srl (2015) 023

Authors:

Michael L Brown, DJ Bacon, Stefano Camera, Ian Harrison, Benjamin Joachimi, R Benton Metcalf, Alkistis Pourtsidou, Keitaro Takahashi, Joe Zuntz, Filipe Batoni Abdalla, Sarah Bridle, Matt Jarvis, Thomas Kitching, Lance Miller, Prina Patel

A Sparse Gaussian Process Framework for Photometric Redshift Estimation

Monthly Notices of the Royal Astronomical Society Oxford University Press (OUP): Policy P - Oxford Open Option A (2015)

Authors:

IA Almosallam, SN Lindsay, MJ Jarvis, SJ Roberts

Abstract:

Accurate photometric redshifts are a lynchpin for many future experiments to pin down the cosmological model and for studies of galaxy evolution. In this study, a novel sparse regression framework for photometric redshift estimation is presented. Simulated and real data from SDSS DR12 were used to train and test the proposed models. We show that approaches which include careful data preparation and model design offer a significant improvement in comparison with several competing machine learning algorithms. Standard implementations of most regression algorithms have as the objective the minimization of the sum of squared errors. For redshift inference, however, this induces a bias in the posterior mean of the output distribution, which can be problematic. In this paper we directly target minimizing $\Delta z = (z_\textrm{s} - z_\textrm{p})/(1+z_\textrm{s})$ and address the bias problem via a distribution-based weighting scheme, incorporated as part of the optimization objective. The results are compared with other machine learning algorithms in the field such as Artificial Neural Networks (ANN), Gaussian Processes (GPs) and sparse GPs. The proposed framework reaches a mean absolute $\Delta z = 0.0026(1+z_\textrm{s})$, over the redshift range of $0 \le z_\textrm{s} \le 2$ on the simulated data, and $\Delta z = 0.0178(1+z_\textrm{s})$ over the entire redshift range on the SDSS DR12 survey, outperforming the standard ANNz used in the literature. We also investigate how the relative size of the training set affects the photometric redshift accuracy. We find that a training set of \textgreater 30 per cent of total sample size, provides little additional constraint on the photometric redshifts, and note that our GP formalism strongly outperforms ANNz in the sparse data regime for the simulated data set.

nIFTy Cosmology: Comparison of Galaxy Formation Models

(2015)

Authors:

Alexander Knebe, Frazer R Pearce, Peter A Thomas, Andrew Benson, Jeremy Blaizot, Richard Bower, Jorge Carretero, Francisco J Castander, Andrea Cattaneo, Sofia A Cora, Darren J Croton, Weiguang Cui, Daniel Cunnama, Gabriella De Lucia, Julien E Devriendt, Pascal J Elahi, Andreea Font, Fabio Fontanot, Juan Garcia-Bellido, Ignacio D Gargiulo, Violeta Gonzalez-Perez, John Helly, Bruno Henriques, Michaela Hirschmann, Jaehyun Lee, Gary A Mamon, Pierluigi Monaco, Julian Onions, Nelson D Padilla, Chris Power, Arnau Pujol, Ramin A Skibba, Rachel S Somerville, Chaichalit Srisawat, Cristian A Vega-Martinez, Sukyoung K Yi

CFHTLenS: a Gaussian likelihood is a sufficient approximation for a cosmological analysis of third-order cosmic shear statistics

Monthly Notices of the Royal Astronomical Society Oxford University Press (OUP) 449:2 (2015) 1505-1525

Authors:

P Simon, E Semboloni, L van Waerbeke, H Hoekstra, T Erben, L Fu, J Harnois-Déraps, C Heymans, H Hildebrandt, M Kilbinger, TD Kitching, L Miller, T Schrabback

The galaxy–halo connection from a joint lensing, clustering and abundance analysis in the CFHTLenS/VIPERS field

Monthly Notices of the Royal Astronomical Society Oxford University Press (OUP) 449:2 (2015) 1352-1379

Authors:

J Coupon, S Arnouts, L van Waerbeke, T Moutard, O Ilbert, E van Uitert, T Erben, B Garilli, L Guzzo, C Heymans, H Hildebrandt, H Hoekstra, M Kilbinger, T Kitching, Y Mellier, L Miller, M Scodeggio, C Bonnett, E Branchini, I Davidzon, G De Lucia, A Fritz, L Fu, P Hudelot, MJ Hudson, K Kuijken, A Leauthaud, O Le Fèvre, HJ McCracken, L Moscardini, BTP Rowe, T Schrabback, E Semboloni, M Velander