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Kernel Methods
73 directly classified papers
Papers per year
2006: 4
2007: 1
2008: 3
2009: 3
2010: 1
2011: 1
2012: 2
2013: 3
2014: 2
2015: 4
2016: 5
2017: 6
2018: 5
2019: 6
2020: 9
2021: 2
2022: 6
2023: 2
2024: 7
2025: 1
Papers
Bridging the Gap Between Hyperdimensional Computing and Kernel Methods via the Nyström Method
AAAI 2025
A Comprehensive Analysis on the Learning Curve in Kernel Ridge Regression
NIPS 2024
Inverse M-Kernels for Linear Universal Approximators of Non-Negative Functions
NIPS 2024
Statistical and Geometrical properties of the Kernel Kullback-Leibler divergence
NIPS 2024
Optimal Rates for Vector-Valued Spectral Regularization Learning Algorithms
NIPS 2024
Graph Learning for Numeric Planning
NIPS 2024
Overfitting Behaviour of Gaussian Kernel Ridgeless Regression: Varying Bandwidth or Dimensionality
NIPS 2024
Learning to Embed Distributions via Maximum Kernel Entropy
NIPS 2024
Deep learning with kernels through RKHM and the Perron-Frobenius operator
NIPS 2023
Graph Convolutional Kernel Machine versus Graph Convolutional Networks
NIPS 2023
Fast Instrument Learning with Faster Rates
NIPS 2022
Distributed Learning of Conditional Quantiles in the Reproducing Kernel Hilbert Space
NIPS 2022
Efficient Aggregated Kernel Tests using Incomplete $U$-statistics
NIPS 2022
Target alignment in truncated kernel ridge regression
NIPS 2022
Positively Weighted Kernel Quadrature via Subsampling
NIPS 2022
FourierFormer: Transformer Meets Generalized Fourier Integral Theorem
NIPS 2022
Neural Splines: Fitting 3D Surfaces With Infinitely-Wide Neural Networks
CVPR 2021
An analysis of Ermakov-Zolotukhin quadrature using kernels
NIPS 2021
Statistical Optimal Transport posed as Learning Kernel Embedding
NIPS 2020
A kernel test for quasi-independence
NIPS 2020
Learning with Operator-valued Kernels in Reproducing Kernel Krein Spaces
NIPS 2020
Finite Versus Infinite Neural Networks: an Empirical Study
NIPS 2020
Reservoir Computing meets Recurrent Kernels and Structured Transforms
NIPS 2020
A Fair Classifier Using Kernel Density Estimation
NIPS 2020
Random Fourier Features via Fast Surrogate Leverage Weighted Sampling
AAAI 2020
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