Optimizing high redshift galaxy surveys for environmental information
Tobias J. Looser, Simon J. Lilly, Larry P. T. Sin, Bruno M. B., Henriques, Roberto Maiolino, Michele Cirasuolo

TL;DR
This paper evaluates how different survey design choices affect the ability to reconstruct galaxy groups at high redshift, using mock data and various metrics to optimize environmental information extraction.
Contribution
It introduces a comprehensive set of metrics to assess group-finding performance and analyzes the impact of survey parameters on high-redshift galaxy environment studies.
Findings
Group-finding algorithms perform broadly similarly at low redshift.
Survey design parameters significantly influence group identification accuracy.
Trade-offs exist between survey depth, sampling rate, and observational costs.
Abstract
We investigate the performance of group finding algorithms that reconstruct galaxy groups from the positional information of tracer galaxies that are observed in redshift surveys carried out with multiplexed spectrographs. We use mock light-cones produced by the L-Galaxies semi-analytic model of galaxy evolution in which the underlying reality is known. We particularly focus on the performance at high redshift, and how this is affected by choices of the mass of the tracer galaxies (largely equivalent to their co-moving number density) and the (assumed random) sampling rate of these tracers. We first however compare two different approaches to group finding as applied at low redshift, and conclude that these are broadly comparable. For simplicity we adopt just one of these, "Friends-of-Friends" (FoF) as the basis for our study at high redshift. We introduce 12 science metrics that are…
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