首页> 外国专利> Probabilistic Boosting Tree Framework For Learning Discriminative Models

Probabilistic Boosting Tree Framework For Learning Discriminative Models

机译:学习判别模型的概率助推树框架

摘要

A probabilistic boosting tree framework for computing two-class and multi-class discriminative models is disclosed. In the learning stage, the probabilistic boosting tree (PBT) automatically constructs a tree in which each node combines a number of weak classifiers (e.g., evidence, knowledge) into a strong classifier or conditional posterior probability. The PBT approaches the target posterior distribution by data augmentation (e.g., tree expansion) through a divide-and-conquer strategy. In the testing stage, the conditional probability is computed at each tree node based on the learned classifier which guides the probability propagation in its sub-trees. The top node of the tree therefore outputs the overall posterior probability by integrating the probabilities gathered from its sub-trees. In the training stage, a tree is recursively constructed in which each tree node is a strong classifier. The input training set is divided into two new sets, left and right ones, according to the learned classifier. Each set is then used to train the left and right sub-trees recursively.
机译:公开了一种用于计算两类和多类判别模型的概率助推树框架。在学习阶段,概率提升树(PBT)自动构建一棵树,其中每个节点将许多弱分类器(例如证据,知识)组合成一个强分类器或条件后验概率。 PBT通过分而治之策略通过数据增强(例如,树扩展)来接近目标后验分布。在测试阶段,基于学习的分类器在每个树节点上计算条件概率,该分类器指导概率在其子树中的传播。因此,树的顶部节点通过整合从其子树收集的概率来输出整体后验概率。在训练阶段,递归构造一棵树,其中每个树节点都是一个强分类器。根据学习到的分类器,输入训练集分为两个新集,左集和右集。然后,将每个集合用于递归训练左和右子树。

著录项

  • 公开/公告号US2008285862A1

    专利类型

  • 公开/公告日2008-11-20

    原文格式PDF

  • 申请/专利权人 ZHUOWEN TU;ADRIAN BARBU;

    申请/专利号US20080180696

  • 发明设计人 ZHUOWEN TU;ADRIAN BARBU;

    申请日2008-07-28

  • 分类号G06K9/62;

  • 国家 US

  • 入库时间 2022-08-21 19:33:16

相似文献

  • 专利
  • 外文文献
  • 中文文献
获取专利

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号