Scalable Variational Gaussian Processes for Crowdsourcing: Glitch Detection in LIGO
Pablo Morales-\'Alvarez, Pablo Ruiz, Scott Coughlin, Rafael, Molina, Aggelos K. Katsaggelos

TL;DR
This paper introduces SVGPCR, a scalable Gaussian process method for crowdsourcing that improves glitch detection in LIGO data by providing accurate uncertainty estimates and handling large datasets efficiently.
Contribution
The paper develops a novel sparse variational Gaussian process approach for crowdsourcing, enabling scalable and accurate uncertainty quantification in large datasets like LIGO.
Findings
SVGPCR outperforms deep learning methods in LIGO glitch detection.
The approach effectively scales GPs to large datasets using mini-batch factorization.
SVGPCR provides superior uncertainty estimates compared to previous probabilistic methods.
Abstract
In the last years, crowdsourcing is transforming the way classification training sets are obtained. Instead of relying on a single expert annotator, crowdsourcing shares the labelling effort among a large number of collaborators. For instance, this is being applied to the data acquired by the laureate Laser Interferometer Gravitational Waves Observatory (LIGO), in order to detect glitches which might hinder the identification of true gravitational-waves. The crowdsourcing scenario poses new challenging difficulties, as it deals with different opinions from a heterogeneous group of annotators with unknown degrees of expertise. Probabilistic methods, such as Gaussian Processes (GP), have proven successful in modeling this setting. However, GPs do not scale well to large data sets, which hampers their broad adoption in real practice (in particular at LIGO). This has led to the recent…
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