The Importance of Being Interpretable: Toward An Understandable Machine Learning Encoder for Galaxy Cluster Cosmology
Michelle Ntampaka, Alexey Vikhlinin

TL;DR
This paper introduces an interpretable deep machine learning approach for constraining cosmological parameters from galaxy cluster observations, achieving near-theoretical accuracy and revealing a new self-calibration mode.
Contribution
It presents a novel interpretable ML framework with three interpretation schemes, discovering a new self-calibration mode for galaxy cluster surveys.
Findings
ML estimates sigma_8 near theoretical limit
Three interpretation schemes for ML models
Discovery of a new self-calibration mode
Abstract
We present a deep machine learning (ML) approach to constraining cosmological parameters with multi-wavelength observations of galaxy clusters. The ML approach has two components: an encoder that builds a compressed representation of each galaxy cluster and a flexible CNN to estimate the cosmological model from a cluster sample. It is trained and tested on simulated cluster catalogs built from the Magneticum simulations. From the simulated catalogs, the ML method estimates the amplitude of matter fluctuations, sigma_8, at approximately the expected theoretical limit. More importantly, the deep ML approach can be interpreted. We lay out three schemes for interpreting the ML technique: a leave-one-out method for assessing cluster importance, an average saliency for evaluating feature importance, and correlations in the terse layer for understanding whether an ML technique can be safely…
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Taxonomy
TopicsGalaxies: Formation, Evolution, Phenomena · Gamma-ray bursts and supernovae · Astronomy and Astrophysical Research
