Machine learning (ML) methods often require large volumes of labeled data to achieve meaningful performance. The expertise necessary for labeling data in medical applications like pathology presents a significant challenge in developing clinical-grade tools. Crowdsourcing approaches address this challenge by collecting labels from multiple annotators with varying degrees of expertise. In recent years, multiple methods have been adapted to learn from noisy crowdsourced labels. Among them, Gaussian Processes (GPs) have achieved excellent performance due to their ability to model uncertainty. Deep Gaussian Processes (DGPs) address the limitations of GPs using multiple layers to enable the learning of more complex representations. In this work,...
Gaussian process (GP) models are powerful tools for Bayesian classification, but their limitation is...
With crowdsourcing systems, labels can be obtained with low cost, which facilitates the creation of ...
We propose a parameter efficient Bayesian layer for hierarchical convolutional Gaussian Processes th...
This work was supported by the Agencia Estatal de Investigacion of the Spanish Ministerio de Ciencia...
Probabilistic methods have achieved empirical success in many predictive modeling and inference tas...
The labeling process within a supervised learning task is usually carried out by an expert, which pr...
Over the last few years, deep learning has revolutionized the field of machine learning by dramatica...
The computational power is increasing day by day. Despite that, there are some tasks that are still...
Although supervised learning requires a labeled dataset, obtaining labels from experts is generally ...
Abstract We present a noise resilient probabilistic model for active learning of a Gaussian process ...
In this paper we introduce deep Gaussian process (GP) models. Deep GPs are a deep belief network bas...
We present a noise resilient probabilistic model for ac-tive learning of a Gaussian process classifi...
Although supervised learning requires a labeled dataset, ob- taining labels from experts is generall...
Crowdsourcing in pathology has been performed on tasks that are assumed to be manageable by nonexper...
We propose a simple method that combines neural networks and Gaussian processes. The proposed method...
Gaussian process (GP) models are powerful tools for Bayesian classification, but their limitation is...
With crowdsourcing systems, labels can be obtained with low cost, which facilitates the creation of ...
We propose a parameter efficient Bayesian layer for hierarchical convolutional Gaussian Processes th...
This work was supported by the Agencia Estatal de Investigacion of the Spanish Ministerio de Ciencia...
Probabilistic methods have achieved empirical success in many predictive modeling and inference tas...
The labeling process within a supervised learning task is usually carried out by an expert, which pr...
Over the last few years, deep learning has revolutionized the field of machine learning by dramatica...
The computational power is increasing day by day. Despite that, there are some tasks that are still...
Although supervised learning requires a labeled dataset, obtaining labels from experts is generally ...
Abstract We present a noise resilient probabilistic model for active learning of a Gaussian process ...
In this paper we introduce deep Gaussian process (GP) models. Deep GPs are a deep belief network bas...
We present a noise resilient probabilistic model for ac-tive learning of a Gaussian process classifi...
Although supervised learning requires a labeled dataset, ob- taining labels from experts is generall...
Crowdsourcing in pathology has been performed on tasks that are assumed to be manageable by nonexper...
We propose a simple method that combines neural networks and Gaussian processes. The proposed method...
Gaussian process (GP) models are powerful tools for Bayesian classification, but their limitation is...
With crowdsourcing systems, labels can be obtained with low cost, which facilitates the creation of ...
We propose a parameter efficient Bayesian layer for hierarchical convolutional Gaussian Processes th...