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Deep-Structured Conditional Random Fields for Sequential Labeling and Classification

机译:用于顺序标记和分类的深度结构条件随机场

摘要

Described is a technology by which a deep-structured (multiple layered) conditional random field model is trained and used for classification of sequential data. Sequential data is processed at each layer, from the lowest layer to a final (highest) layer, to output data in the form of conditional probabilities of classes given the sequential input data. Each higher layer inputs the conditional probability data and the sequential data jointly to output further probability data, and so forth, until the final layer which outputs the classification data. Also described is layer-by-layer training, supervised or unsupervised. Unsupervised training may process raw features to minimize average frame-level conditional entropy while maximizing state occupation entropy, or to minimize reconstruction error. Also described is a technique for back-propagation of error information of the final layer to iteratively fine tune the parameters of the lower layers, and joint training, including joint training via subgroups of layers.
机译:描述了一种技术,通过该技术可以训练深度结构化(多层)条件随机场模型并将其用于顺序数据的分类。从最低层到最终(最高)层的每一层都处理顺序数据,以给定顺序输入数据的类的条件概率形式输出数据。每个更高层共同输入条件概率数据和顺序数据以输出其他概率数据,依此类推,直到输出分类数据的最后一层。还描述了有监督或无监督的逐层训练。无监督训练可以处理原始特征,以最小化平均帧级条件熵,同时最大化状态占用熵,或最小化重构误差。还描述了一种用于反向传播最终层的错误信息以迭代地微调较低层的参数的技术,以及联合训练,包括通过层子组进行联合训练的技术。

著录项

  • 公开/公告号US2011191274A1

    专利类型

  • 公开/公告日2011-08-04

    原文格式PDF

  • 申请/专利权人 DONG YU;LI DENG;SHIZHEN WANG;

    申请/专利号US20100696051

  • 发明设计人 DONG YU;LI DENG;SHIZHEN WANG;

    申请日2010-01-29

  • 分类号G06F15/18;G06N5/02;

  • 国家 US

  • 入库时间 2022-08-21 18:12:30

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