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Adaptive Base Class Boost for Multi-class Classification

Adaptive Base Class Boost for Multi-class Classification

8 November 2008
Ping Li
ArXiv (abs)PDFHTML

Papers citing "Adaptive Base Class Boost for Multi-class Classification"

21 / 21 papers shown
Title
MONOPOLY: Learning to Price Public Facilities for Revaluing Private
  Properties with Large-Scale Urban Data
MONOPOLY: Learning to Price Public Facilities for Revaluing Private Properties with Large-Scale Urban Data
M. Fan
Jizhou Huang
An Zhuo
Ying Li
P. Li
Haifeng Wang
166
3
0
27 Nov 2024
Condensed Gradient Boosting
Condensed Gradient Boosting
S. Emami
Gonzalo Martínez-Munoz
55
4
0
26 Nov 2022
Package for Fast ABC-Boost
Package for Fast ABC-Boost
Ping Li
Weijie Zhao
61
6
0
18 Jul 2022
pGMM Kernel Regression and Comparisons with Boosted Trees
pGMM Kernel Regression and Comparisons with Boosted Trees
Ping Li
Weijie Zhao
95
3
0
18 Jul 2022
Integrity Authentication in Tree Models
Integrity Authentication in Tree Models
Weijie Zhao
Yingjie Lao
Ping Li
137
5
0
30 May 2022
Fast ABC-Boost: A Unified Framework for Selecting the Base Class in
  Multi-Class Classification
Fast ABC-Boost: A Unified Framework for Selecting the Base Class in Multi-Class Classification
Ping Li
Weijie Zhao
59
6
0
22 May 2022
Plackett-Luce model for learning-to-rank task
Plackett-Luce model for learning-to-rank task
Tian Xia
Shaodan Zhai
Shaojun Wang
18
2
0
15 Sep 2019
Analysis of Regression Tree Fitting Algorithms in Learning to Rank
Analysis of Regression Tree Fitting Algorithms in Learning to Rank
Tian Xia
Shaodan Zhai
Shaojun Wang
23
0
0
12 Sep 2019
Several Tunable GMM Kernels
Several Tunable GMM Kernels
Ping Li
23
13
0
08 May 2018
Tunable GMM Kernels
Tunable GMM Kernels
Ping Li
35
8
0
09 Jan 2017
Towards the effectiveness of Deep Convolutional Neural Network based
  Fast Random Forest Classifier
Towards the effectiveness of Deep Convolutional Neural Network based Fast Random Forest Classifier
M. Panda
37
4
0
28 Sep 2016
Linearized GMM Kernels and Normalized Random Fourier Features
Linearized GMM Kernels and Normalized Random Fourier Features
Ping Li
52
10
0
18 May 2016
A Comparison Study of Nonlinear Kernels
A Comparison Study of Nonlinear Kernels
Ping Li
23
1
0
21 Mar 2016
CoRE Kernels
CoRE Kernels
Ping Li
49
7
0
24 Apr 2014
Correlation-based construction of neighborhood and edge features
Correlation-based construction of neighborhood and edge features
Balázs Kégl
54
0
0
20 Dec 2013
The return of AdaBoost.MH: multi-class Hamming trees
The return of AdaBoost.MH: multi-class Hamming trees
Balázs Kégl
60
111
0
20 Dec 2013
Robust LogitBoost and Adaptive Base Class (ABC) LogitBoost
Robust LogitBoost and Adaptive Base Class (ABC) LogitBoost
Ping Li
117
166
0
15 Mar 2012
b-Bit Minwise Hashing for Large-Scale Linear SVM
b-Bit Minwise Hashing for Large-Scale Linear SVM
Ping Li
Joshua L. Moore
A. König
42
3
0
23 May 2011
Fast ABC-Boost for Multi-Class Classification
Fast ABC-Boost for Multi-Class Classification
Ping Li
91
5
0
25 Jun 2010
An Empirical Evaluation of Four Algorithms for Multi-Class
  Classification: Mart, ABC-Mart, Robust LogitBoost, and ABC-LogitBoost
An Empirical Evaluation of Four Algorithms for Multi-Class Classification: Mart, ABC-Mart, Robust LogitBoost, and ABC-LogitBoost
Ping Li
110
9
0
07 Jan 2010
ABC-LogitBoost for Multi-class Classification
ABC-LogitBoost for Multi-class Classification
Ping Li
113
9
0
28 Aug 2009
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