Results 11 to 20 of about 47,583 (209)
Rectangularization of Gaussian process regression for optimization of hyperparameters
Gaussian process regression (GPR) is a powerful machine learning method which has recently enjoyed wider use, in particular in physical sciences. In its original formulation, GPR uses a square matrix of covariances among training data and can be viewed ...
Sergei Manzhos, Manabu Ihara
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Bayesian Optimization of Hyperparameters in Kernel-Based Delay Rational Models [PDF]
This paper presents an automatic procedure for the optimization of the hyperparameters of a delay rational model approximating the frequency-domain behavior of high-speed interconnects.
Treviso, Felipe +2 more
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Hyperparameter Optimization of CNN for Map Building
This article describes an approach for solving the task of finding hyperparameters of an artificial neural network, which is used for making a 2D land map.
Alexandra Akinina, Mikhail Nikiforov
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Tuning of Bayesian optimization for materials synthesis: simulation of the one-dimensional case
Materials exploration requires the optimization of a multidimensional space including the chemical composition and synthesis parameters such as temperature and pressure.
Ryo Nakayama +8 more
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Hyperparameter Optimization with Differentiable Metafeatures
Metafeatures, or dataset characteristics, have been shown to improve the performance of hyperparameter optimization (HPO). Conventionally, metafeatures are precomputed and used to measure the similarity between datasets, leading to a better initialization of HPO models.
Hadi S. Jomaa +2 more
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Hyperparameters values used during model optimization.
Hyperparameters values used during model optimization.
Ethel Dominique Viray (11564842) +6 more
core +1 more source
Scaling Laws for Hyperparameter Optimization
Accepted at NeurIPS ...
Arlind Kadra +3 more
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Use of Static Surrogates in Hyperparameter Optimization [PDF]
http://www.optimization-online.org/DB_HTML/2021/03/8296 ...
Dounia Lakhmiri, Sébastien Le Digabel
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Tuning hyperparameters of doublet‐detection methods for single‐cell RNA sequencing data
Doublet is a major confounder in single‐cell RNA sequencing data analysis. Computational doublet‐detection methods aim to remove doublets from scRNA‐seq data. The performance of those methods relies on the appropriate setting of their hyperparameters. In
Nan Miles Xi, Angelos Vasilopoulos
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Bayesian Optimized Echo State Network Applied to Short-Term Load Forecasting
Load forecasting impacts directly financial returns and information in electrical systems planning. A promising approach to load forecasting is the Echo State Network (ESN), a recurrent neural network for the processing of temporal dependencies.
Gabriel Trierweiler Ribeiro +4 more
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