A probabilistic approach to emission-line galaxy classification

03/22/2017
by   R. S. de Souza, et al.
0

We invoke a Gaussian mixture model (GMM) to jointly analyse two traditional emission-line classification schemes of galaxy ionization sources: the Baldwin-Phillips-Terlevich (BPT) and W_Hα vs. [NII]/Hα (WHAN) diagrams, using spectroscopic data from the Sloan Digital Sky Survey Data Release 7 and SEAGal/STARLIGHT datasets. We apply a GMM to empirically define classes of galaxies in a three-dimensional space spanned by the [OIII]/Hβ, [NII]/Hα, and EW(Hα), optical parameters. The best-fit GMM based on several statistical criteria suggests a solution around four Gaussian components (GCs), which are capable to explain up to 97 per cent of the data variance. Using elements of information theory, we compare each GC to their respective astronomical counterpart. GC1 and GC4 are associated with star-forming galaxies, suggesting the need to define a new starburst subgroup. GC2 is associated with BPT's Active Galaxy Nuclei (AGN) class and WHAN's weak AGN class. GC3 is associated with BPT's composite class and WHAN's strong AGN class. Conversely, there is no statistical evidence -- based on four GCs -- for the existence of a Seyfert/LINER dichotomy in our sample. Notwithstanding, the inclusion of an additional GC5 unravels it. The GC5 appears associated to the LINER and Passive galaxies on the BPT and WHAN diagrams respectively. Subtleties aside, we demonstrate the potential of our methodology to recover/unravel different objects inside the wilderness of astronomical datasets, without lacking the ability to convey physically interpretable results. The probabilistic classifications from the GMM analysis are publicly available within the COINtoolbox (https://cointoolbox.github.io/GMM_Catalogue/).

READ FULL TEXT
research
02/21/2020

Petrophysically and geologically guided multi-physics inversion using a dynamic Gaussian mixture model

In a previous paper, we introduced a framework for carrying out petrophy...
research
04/30/2021

Number and quality of diagrams in scholarly publications is associated with number of citations

Diagrams are often used in scholarly communication. We analyse a corpus ...
research
02/21/2020

Joint geophysical, petrophysical and geologic inversion using a dynamic Gaussian mixture model

We present a framework for petrophysically and geologically guided inver...
research
11/18/2020

Skewed Distributions or Transformations? Modelling Skewness for a Cluster Analysis

Because of its mathematical tractability, the Gaussian mixture model hol...
research
06/11/2019

Estimating Homogeneous Data-driven BRDF Parameters from a Reflectance Map under Known Natural Lighting

In this paper we demonstrate robust estimation of the model parameters o...
research
12/01/2022

GMM-IL: Image Classification using Incrementally Learnt, Independent Probabilistic Models for Small Sample Sizes

Current deep learning classifiers, carry out supervised learning and sto...
research
03/21/2022

A new perspective on probabilistic image modeling

We present the Deep Convolutional Gaussian Mixture Model (DCGMM), a new ...

Please sign up or login with your details

Forgot password? Click here to reset