Bayesian group finder based on marked point processes. Method and feasibility study using the 2MRS data set
Elmo Tempel, Maarja Kruuse, Rain Kipper, Taavi Tuvikene, Jenny G., Sorce, Radu S. Stoica

TL;DR
This paper introduces a Bayesian probabilistic algorithm for detecting galaxy groups using marked point processes, validated on the 2MRS dataset, offering a flexible framework for cosmological surveys and other sciences.
Contribution
It presents a novel Bayesian group detection method based on marked point processes, with an implementation using simulated annealing and validation on real astronomical data.
Findings
Comparable to existing FoF group finders in results
Provides additional probabilistic information for validation
Framework adaptable to various datasets and surveys
Abstract
Galaxy groups and clusters are formidable cosmological probes. They permit the studying of the environmental effects on galaxy formation. A reliable detection of galaxy groups is an open problem and is important for ongoing and future cosmological surveys. We propose a probabilistic galaxy group detection algorithm based on marked point processes with interactions. The pattern of galaxy groups in a catalogue is seen as a random set of interacting objects. The positions and the interactions of these objects are governed by a probability density. The estimator of the unknown cluster pattern is given by the configuration of objects maximising the proposed probability density. Adopting the Bayesian framework, the proposed probability density is maximised using a simulated annealing algorithm. The method provides "for free" additional information such as the probabilities that a point or…
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Taxonomy
TopicsScientific Research and Discoveries · Bayesian Methods and Mixture Models · Target Tracking and Data Fusion in Sensor Networks
