Pairwise Ranking with Gaussian Kernels

04/06/2023
by   Guanhang Lei, et al.
0

Regularized pairwise ranking with Gaussian kernels is one of the cutting-edge learning algorithms. Despite a wide range of applications, a rigorous theoretical demonstration still lacks to support the performance of such ranking estimators. This work aims to fill this gap by developing novel oracle inequalities for regularized pairwise ranking. With the help of these oracle inequalities, we derive fast learning rates of Gaussian ranking estimators under a general box-counting dimension assumption on the input domain combined with the noise conditions or the standard smoothness condition. Our theoretical analysis improves the existing estimates and shows that a low intrinsic dimension of input space can help the rates circumvent the curse of dimensionality.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/13/2020

SVM Learning Rates for Data with Low Intrinsic Dimension

We derive improved regression and classification rates for support vecto...
research
03/13/2020

Adaptive Learning Rates for Support Vector Machines Working on Data with Low Intrinsic Dimension

We derive improved regression and classification rates for support vecto...
research
02/28/2019

Oracle inequalities for square root analysis estimators with application to total variation penalties

We study the analysis estimator directly, without any step through a syn...
research
12/17/2015

Oracle inequalities for ranking and U-processes with Lasso penalty

We investigate properties of estimators obtained by minimization of U-pr...
research
10/07/2021

Heterogeneous Overdispersed Count Data Regressions via Double Penalized Estimations

This paper studies the non-asymptotic merits of the double ℓ_1-regulariz...
research
02/25/2015

Online Pairwise Learning Algorithms with Kernels

Pairwise learning usually refers to a learning task which involves a los...
research
07/04/2022

Dynamic Ranking and Translation Synchronization

In many applications, such as sport tournaments or recommendation system...

Please sign up or login with your details

Forgot password? Click here to reset