TL;DR
This paper introduces a simulation-based method to incorporate measurement error into astronomical object classification, improving uncertainty quantification and candidate identification accuracy.
Contribution
It proposes a novel approach that integrates heteroscedastic measurement errors into existing classifiers using Bayesian simulations, enhancing classification reliability.
Findings
Identified 3,146 potential misclassifications among high-z quasar candidates.
Discovered 936 new candidates when accounting for measurement errors.
Demonstrated improved uncertainty quantification in astronomical classification.
Abstract
Most general-purpose classification methods, such as support-vector machine (SVM) and random forest (RF), fail to account for an unusual characteristic of astronomical data: known measurement error uncertainties. In astronomical data, this information is often given in the data but discarded because popular machine learning classifiers cannot incorporate it. We propose a simulation-based approach that incorporates heteroscedastic measurement error into existing classification method to better quantify uncertainty in classification. The proposed method first simulates perturbed realizations of the data from a Bayesian posterior predictive distribution of a Gaussian measurement error model. Then, a chosen classifier is fit to each simulation. The variation across the simulations naturally reflects the uncertainty propagated from the measurement errors in both labeled and unlabeled data…
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