9 research outputs found
Cross-Correlation of Planck CMB Lensing with DESI-Like LRGs
Cross-correlations between the lensing of the cosmic microwave background
(CMB) and other tracers of large-scale structure provide a unique way to
reconstruct the growth of dark matter, break degeneracies between cosmology and
galaxy physics, and test theories of modified gravity. We detect a
cross-correlation between DESI-like luminous red galaxies (LRGs) selected from
DECaLS imaging and CMB lensing maps reconstructed with the Planck satellite at
a significance of over scales , . To correct for magnification bias, we determine the slope of the
LRG cumulative magnitude function at the faint limit as ,
and find corresponding corrections on the order of a few percent for across the scales of interest. We fit the large-scale
galaxy bias at the effective redshift of the cross-correlation using two different bias evolution agnostic models: a HaloFit
times linear bias model where the bias evolution is folded into the
clustering-based estimation of the redshift kernel, and a Lagrangian
perturbation theory model of the clustering evaluated at . We also
determine the error on the bias from uncertainty in the redshift distribution;
within this error, the two methods show excellent agreement with each other and
with DESI survey expectations.Comment: 18 pages, 14 figures, 6 tables; final version accepted for
publicatio
Despite "super-human" performance, current LLMs are unsuited for decisions about ethics and safety
Large language models (LLMs) have exploded in popularity in the past few
years and have achieved undeniably impressive results on benchmarks as varied
as question answering and text summarization. We provide a simple new prompting
strategy that leads to yet another supposedly "super-human" result, this time
outperforming humans at common sense ethical reasoning (as measured by accuracy
on a subset of the ETHICS dataset). Unfortunately, we find that relying on
average performance to judge capabilities can be highly misleading. LLM errors
differ systematically from human errors in ways that make it easy to craft
adversarial examples, or even perturb existing examples to flip the output
label. We also observe signs of inverse scaling with model size on some
examples, and show that prompting models to "explain their reasoning" often
leads to alarming justifications of unethical actions. Our results highlight
how human-like performance does not necessarily imply human-like understanding
or reasoning.Comment: ML Safety Workshop, NeurIPS 202
Characterizing the target selection pipeline for the Dark Energy Spectroscopic Instrument Bright Galaxy Survey
We present the steps taken to produce a reliable and complete input galaxy catalogue for the Dark Energy Spectroscopic Instrument (DESI) Bright Galaxy Survey (BGS) using the photometric Legacy Survey DR8 DECam. We analyse some of the main issues faced in the selection of targets for the DESI BGS, such as starâgalaxy separation, contamination by fragmented stars and bright galaxies. Our pipeline utilizes a new way to select BGS galaxies using Gaia photometry and we implement geometrical and photometric masks that reduce the number of spurious objects. The resulting catalogue is cross-matched with the Galaxy And Mass Assembly (GAMA) survey to assess the completeness of the galaxy catalogue and the performance of the target selection. We also validate the clustering of the sources in our BGS catalogue by comparing with mock catalogues and the Sloan Digital Sky Survey (SDSS) data. Finally, the robustness of the BGS selection criteria is assessed by quantifying the dependence of the target galaxy density on imaging and other properties. The largest systematic correlation we find is a 7 per cent suppression of the target density in regions of high stellar density
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Cosmic Cartography: Mapping the Universe for Next-Generation Dark Energy Voyages
Mapping the distribution of matter and light in the Universe is key to unlocking some of its most fundamental secrets. What drives the acceleration of cosmic expansion? Does Einstein's Theory of General Relativity fail on very large scales, requiring a new model of gravity to account for an accelerating expansion? Or is there some exotic and invisible form of "dark energy" that dominates the composition of our Universe? Beginning with the Dark Energy Spectroscopic Instrument (DESI), a series of next-generation galaxy surveys will revolutionize our understanding of dark energy, providing an unprecedented wealth of data to solve these and other cosmic mysteries. Several major challenges directly determine the ultimate success of ambitious missions such as DESI: how tightly systematic sources of error and contamination can be controlled, how well the biases and properties of the galaxy samples can be understood, and how accurately their positions can be mapped. This thesis presents contributions I have made towards addressing these challenges and doing early science with DESI, for which I received "Builder Status" by the DESI Collaboration. Approximately two-thirds of this thesis are devoted to performing the first major analysis of the systematics and clustering of DESI samples selected from deep imaging. In the final part of this thesis, I present a cross-correlation between DESI galaxies and the lensing of the cosmic microwave background, one of the most significant detections of this type of signal to date, from which I further characterize the DESI samples and also study how the accuracy of their positions impacts science goals. In addition to enabling future cosmology with DESI, the methodologies and frameworks developed in this thesis have broader applications in future dark energy experiments and, more generally, cosmological studies using deep imaging data
Imaging Systematics and Clustering of DESI Main Targets
International audienceWe evaluate the impact of imaging systematics on the clustering of luminous red galaxies (LRG), emission-line galaxies (ELG), and quasars (QSO) targeted for the upcoming Dark Energy Spectroscopic Instrument (DESI) survey. Using Data Release 7 of the DECam Legacy Survey, we study the effects of astrophysical foregrounds, stellar contamination, differences between north galactic cap and south galactic cap measurements, and variations in imaging depth, stellar density, galactic extinction, seeing, airmass, sky brightness, and exposure time before presenting survey masks and weights to mitigate these effects. With our sanitized samples in hand, we conduct a preliminary analysis of the clustering amplitude and evolution of the DESI main targets. From measurements of the angular correlation functions, we determine power law fits ||Mpc, γ = 1.98 ± 0.02 for LRGs and ||Mpc, γ = 1.54 ± 0.01 for ELGs. Additionally, from the angular power spectra, we measure the linear biases and model the scale-dependent biases in the weakly non-linear regime. Both sets of clustering measurements show good agreement with survey requirements for LRGs and ELGs, attesting that these samples will enable DESI to achieve precise cosmological constraints. We also present clustering as a function of magnitude, use cross-correlations with external spectroscopy to infer dN/dz and measure clustering as a function of luminosity, and probe higher order clustering statistics through counts-in-cells moments
Preliminary clustering properties of the DESI BGS bright targets using DR9 Legacy Imaging Surveys
We characterize the selection cuts and clustering properties of a magnitude-limited sample of bright galaxies that is part of the Bright Galaxy Survey (BGS) of the Dark Energy Spectroscopic Instrument (DESI) using the ninth data release of the Legacy Imaging Surveys (DR9). We describe changes in the DR9 selection compared to the DR8 one and we also compare the DR9 selection in three distinct regions: BASS/MzLS in the north Galactic Cap (NGC), DECaLS in the NGC, and DECaLS in the south Galactic Cap (SGC). We investigate the systematics associated with the selection and assess its completeness by matching the BGS targets with the Galaxy and Mass Assembly (GAMA) survey. We measure the angular clustering for the overall bright sample (rmag †19.5) and as function of apparent magnitude and colour. This enables to determine the clustering strength r0 and slope γ by fitting a power-law model that can be used to generate accurate mock catalogues for this tracer. We use a counts-in-cells technique to explore higher order statistics and cross-correlations with external spectroscopic data sets in order to check the evolution of the clustering with redshift and the redshift distribution of the BGS targets using clustering redshifts. While this work validates the properties of the BGS bright targets, the final target selection pipeline and clustering properties of the entire DESI BGS will be fully characterized and validated with the spectroscopic data of Survey Validation
The DESI experiment part I: science, targeting, and survey design
DESI (Dark Energy Spectroscopic Instrument) is a Stage IV ground-based dark energy experiment that will study baryon acoustic oscillations (BAO) and the growth of structure through redshift-space distortions with a wide-area galaxy and quasar redshift survey. To trace the underlying dark matter distribution, spectroscopic targets will be selected in four classes from imaging data. We will measure luminous red galaxies up to . To probe the Universe out to even higher redshift, DESI will target bright [O II] emission line galaxies up to . Quasars will be targeted both as direct tracers of the underlying dark matter distribution and, at higher redshifts (), for the Ly- forest absorption features in their spectra, which will be used to trace the distribution of neutral hydrogen. When moonlight prevents efficient observations of the faint targets of the baseline survey, DESI will conduct a magnitude-limited Bright Galaxy Survey comprising approximately 10 million galaxies with a median . In total, more than 30 million galaxy and quasar redshifts will be obtained to measure the BAO feature and determine the matter power spectrum, including redshift space distortions
The DESI Experiment Part II: Instrument Design
DESI (Dark Energy Spectropic Instrument) is a Stage IV ground-based dark energy experiment that will study baryon acoustic oscillations and the growth of structure through redshift-space distortions with a wide-area galaxy and quasar redshift survey. The DESI instrument is a robotically-actuated, fiber-fed spectrograph capable of taking up to 5,000 simultaneous spectra over a wavelength range from 360 nm to 980 nm. The fibers feed ten three-arm spectrographs with resolution between 2000 and 5500, depending on wavelength. The DESI instrument will be used to conduct a five-year survey designed to cover 14,000 deg. This powerful instrument will be installed at prime focus on the 4-m Mayall telescope in Kitt Peak, Arizona, along with a new optical corrector, which will provide a three-degree diameter field of view. The DESI collaboration will also deliver a spectroscopic pipeline and data management system to reduce and archive all data for eventual public use