Deep Gaussian Processes with Decoupled Inducing Inputs Jan 9, 2018 Gaussian Processes
— Unverified 00 Deep Horseshoe Gaussian Processes Mar 4, 2024 Gaussian Processes regression
— Unverified 00 Deep Importance Sampling based on Regression for Model Inversion and Emulation Oct 20, 2020 Gaussian Processes regression
— Unverified 00 Deep kernel processes Oct 4, 2020 Gaussian Processes Variational Inference
— Unverified 00 Deep learning applied to computational mechanics: A comprehensive review, state of the art, and the classics Dec 18, 2022 Gaussian Processes Misconceptions
— Unverified 00 Deep learning generalizes because the parameter-function map is biased towards simple functions May 22, 2018 Gaussian Processes Learning Theory
— Unverified 00 Deep Manifold Prior Apr 8, 2020 Denoising Gaussian Processes
— Unverified 00 Meta-Learning Mean Functions for Gaussian Processes Jan 23, 2019 Gaussian Processes Meta-Learning
— Unverified 00 Deep Neural Networks as Point Estimates for Deep Gaussian Processes May 10, 2021 Bayesian Inference Gaussian Processes
— Unverified 00 Quantum neural networks form Gaussian processes May 17, 2023 Form Gaussian Processes
— Unverified 00 Deep Random Splines for Point Process Intensity Estimation Mar 27, 2019 Gaussian Processes Point Processes
— Unverified 00 Deep Reinforcement Learning with Weighted Q-Learning Mar 20, 2020 Deep Reinforcement Learning Gaussian Processes
— Unverified 00 Deep Reinforcement Multi-agent Learning framework for Information Gathering with Local Gaussian Processes for Water Monitoring Jan 9, 2024 Deep Reinforcement Learning Gaussian Processes
— Unverified 00 DeepRV: pre-trained spatial priors for accelerated disease mapping Mar 27, 2025 Bayesian Inference Decoder
— Unverified 00 Deep Sigma Point Processes Feb 21, 2020 Gaussian Processes Point Processes
— Unverified 00 Deep Transformed Gaussian Processes Oct 27, 2023 Gaussian Processes Variational Inference
— Unverified 00 Density Ratio Estimation-based Bayesian Optimization with Semi-Supervised Learning May 24, 2023 Bayesian Optimization Density Ratio Estimation
— Unverified 00 Dependence between Bayesian neural network units Nov 29, 2021 Gaussian Processes
— Unverified 00 Designing Robust Biotechnological Processes Regarding Variabilities using Multi-Objective Optimization Applied to a Biopharmaceutical Seed Train Design May 6, 2022 Cultural Vocal Bursts Intensity Prediction Gaussian Processes
— Unverified 00 Using Gaussian Processes to Design Dynamic Experiments for Black-Box Model Discrimination under Uncertainty Feb 7, 2021 Gaussian Processes
— Unverified 00 Design of Experiments for Verifying Biomolecular Networks Nov 20, 2020 Bayesian Optimization Gaussian Processes
— Unverified 00 Detecting British Columbia Coastal Rainfall Patterns by Clustering Gaussian Processes Dec 23, 2018 Clustering Gaussian Processes
— Unverified 00 Deterministic Global Optimization of the Acquisition Function in Bayesian Optimization: To Do or Not To Do? Mar 5, 2025 Bayesian Optimization CPU
— Unverified 00 Dialogue manager domain adaptation using Gaussian process reinforcement learning Sep 9, 2016 Domain Adaptation Gaussian Processes
— Unverified 00 Diffusion-BBO: Diffusion-Based Inverse Modeling for Online Black-Box Optimization Jun 30, 2024 Gaussian Processes scientific discovery
— Unverified 00 Differentially Private Gaussian Processes Jun 2, 2016 Gaussian Processes regression
— Unverified 00 Differentially Private Regression and Classification with Sparse Gaussian Processes Sep 19, 2019 Classification Gaussian Processes
— Unverified 00 Differentiating the multipoint Expected Improvement for optimal batch design Mar 18, 2015 Bayesian Optimization Gaussian Processes
— Unverified 00 Graph Based Gaussian Processes on Restricted Domains Oct 14, 2020 Gaussian Processes
— Unverified 00 Diffusion models for Gaussian distributions: Exact solutions and Wasserstein errors May 23, 2024 Gaussian Processes Image Generation
— Unverified 00 Dimensionality Reduction as Probabilistic Inference Apr 15, 2023 Dimensionality Reduction Gaussian Processes
— Unverified 00 Dimensionality Reduction Techniques for Global Bayesian Optimisation Dec 12, 2024 Bayesian Optimisation Dimensionality Reduction
— Unverified 00 Direct Integration of Recursive Gaussian Process Regression Into Extended Kalman Filters With Application to Vapor Compression Cycle Control Jun 6, 2025 Gaussian Processes State Estimation
— Unverified 00 Dirichlet Logistic Gaussian Processes for Evaluation of Black-Box Stochastic Systems under Complex Requirements Aug 6, 2024 Gaussian Processes
— Unverified 00 Discovering and forecasting extreme events via active learning in neural operators Apr 5, 2022 Active Learning Experimental Design
— Unverified 00 Discovery of Probabilistic Dirichlet-to-Neumann Maps on Graphs Jun 3, 2025 Gaussian Processes Uncertainty Quantification
— Unverified 00 Discriminative training for Convolved Multiple-Output Gaussian processes Feb 7, 2015 Activity Recognition Emotion Recognition
— Unverified 00 Disentangling the Gauss-Newton Method and Approximate Inference for Neural Networks Jul 21, 2020 Deep Learning Gaussian Processes
— Unverified 00 Disentangling Trainability and Generalization in Deep Learning Sep 25, 2019 Deep Learning Gaussian Processes
— Unverified 00 Disentangling Trainability and Generalization in Deep Neural Networks Dec 30, 2019 Gaussian Processes
— Unverified 00 Cooperative Online Learning for Multi-Agent System Control via Gaussian Processes with Event-Triggered Mechanism: Extended Version Apr 11, 2023 Gaussian Processes regression
— Unverified 00 Distributed Experiment Design and Control for Multi-agent Systems with Gaussian Processes Mar 25, 2021 Computational Efficiency Distributed Optimization
— Unverified 00 Distributed Gaussian Process Based Cooperative Visual Pursuit Control for Drone Networks May 27, 2022 Gaussian Processes
— Unverified 00 Distributed Gaussian Processes Feb 10, 2015 Form Gaussian Processes
— Unverified 00 Distributed Learning Consensus Control for Unknown Nonlinear Multi-Agent Systems based on Gaussian Processes Mar 29, 2021 Gaussian Processes regression
— Unverified 00 Distributed non-parametric deep and wide networks Jan 1, 2018 Action Recognition Gaussian Processes
— Unverified 00 Distributional Gaussian Processes Layers for Out-of-Distribution Detection Jun 27, 2022 Gaussian Processes Out-of-Distribution Detection
— Unverified 00 Distributional Gaussian Process Layers for Outlier Detection in Image Segmentation Apr 28, 2021 Gaussian Processes Image Segmentation
— Unverified 00 Distributionally Robust Model-based Reinforcement Learning with Large State Spaces Sep 5, 2023 Gaussian Processes Model-based Reinforcement Learning
— Unverified 00 Distributionally Robust Model Predictive Control with Mixture of Gaussian Processes Feb 8, 2025 Gaussian Processes Model Predictive Control
— Unverified 00