Fast evaluation of neural networks via confidence rating

被引:2
|
作者
Arenas-Garcia, Jeronimo [1 ]
Gomez-Verdejo, Vanessa [1 ]
Figueiras-Vidal, Anibal R. [1 ]
机构
[1] Univ Carlos III Madrid, Dept Signal Theory & Commun, E-28911 Madrid, Spain
关键词
artificial neural networks; fast classification; neural networks ensembles; RealAdaboost; radial basis function networks;
D O I
10.1016/j.neucom.2006.04.014
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Neural networks have become very useful tools for input-output knowledge discovery. However, some of the most powerful schemes require very complex machines and, thus, a large amount of calculation. This paper presents a general technique to reduce the computational burden associated with the operational phase of most neural networks that calculate their output as a weighted sum of terms, which comprises a wide variety of schemes, such as Multi-Net or Radial Basis Function networks. Basically, the idea consists on sequentially evaluating the sum terms, using a series of thresholds which are associated with the confidence that a partial output will coincide with the overall network classification criterion. Furthermore, we design some procedures for conveniently sorting out the network units, so that the most important ones are evaluated first. The possibilities of this strategy are illustrated with some experiments on a benchmark of binary classification problems, using RealAdaboost and RBF networks, which show that important computational savings can be achieved without significant degradation in terms of recognition accuracy. (c) 2007 Elsevier B.V. All rights reserved.
引用
收藏
页码:2775 / 2782
页数:8
相关论文
共 50 条
  • [11] Confidence intervals for calibration with neural networks
    Dathe, M
    Otto, M
    FRESENIUS JOURNAL OF ANALYTICAL CHEMISTRY, 1996, 356 (01): : 17 - 20
  • [12] Confidence estimation of GMDH neural networks
    Korbicz, J
    Metenidis, MF
    Mrugalski, M
    Witczak, M
    ARTIFICIAL INTELLIGENCE AND SOFT COMPUTING - ICAISC 2004, 2004, 3070 : 210 - 216
  • [13] Image Quality Evaluation and Fast Masking with Deep Neural Networks
    Song, Yu
    Ning, Runyu
    Lv, Jiameng
    Jia, Peng
    SOFTWARE AND CYBERINFRASTRUCTURE FOR ASTRONOMY VII, 2022, 12189
  • [14] Fast Learning of Deep Neural Networks via Singular Value Decomposition
    Cai, Chenghao
    Ke, Dengfeng
    Xu, Yanyan
    Su, Kaile
    PRICAI 2014: TRENDS IN ARTIFICIAL INTELLIGENCE, 2014, 8862 : 820 - 826
  • [15] Editorial: Advances in Robots Trajectories Learning via Fast Neural Networks
    Rubio, Jose de Jesus
    Pan, Yongping
    Pieper, Jeff
    Chen, Mu-Yen
    Sossa Azuela, Juan Humberto
    FRONTIERS IN NEUROROBOTICS, 2021, 15
  • [16] Fast modelling and control of unknown nonlinear systems via neural networks
    Wang, JH
    ICNN - 1996 IEEE INTERNATIONAL CONFERENCE ON NEURAL NETWORKS, VOLS. 1-4, 1996, : 2255 - 2260
  • [17] Deep Neural Networks for Behavioral Credit Rating
    Mercep, Andro
    Mrcela, Lovre
    Birov, Matija
    Kostanjcar, Zvonko
    ENTROPY, 2021, 23 (01) : 1 - 18
  • [18] PROBABILISTIC NEURAL NETWORKS FOR CREDIT RATING MODELLING
    Hajek, Petr
    ICFC 2010/ ICNC 2010: PROCEEDINGS OF THE INTERNATIONAL CONFERENCE ON FUZZY COMPUTATION AND INTERNATIONAL CONFERENCE ON NEURAL COMPUTATION, 2010, : 289 - 294
  • [19] Corporate bond rating using neural networks
    Brennan, D
    Brabazon, A
    IC-AI '04 & MLMTA'04 , VOL 1 AND 2, PROCEEDINGS, 2004, : 161 - 167
  • [20] CONDITION RATING OF RIGID PAVEMENTS BY NEURAL NETWORKS
    ELDIN, NN
    SENOUCI, AB
    CANADIAN JOURNAL OF CIVIL ENGINEERING, 1995, 22 (05) : 861 - 870