Predicate central word recognition method based on neural network

The invention discloses a predicate center word recognition method based on a neural network. The method comprises the following steps of 1, performing vector mapping on a text based on a pre-trainingword vector and a random word vector; 2, acquiring features and long-term dependency relationships o...

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Hauptverfasser: JIN WENFAN, ZHONG XINYANG, HUANG RUIZHANG, QIN YONGBIN, CHEN YANPING
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creator JIN WENFAN
ZHONG XINYANG
HUANG RUIZHANG
QIN YONGBIN
CHEN YANPING
description The invention discloses a predicate center word recognition method based on a neural network. The method comprises the following steps of 1, performing vector mapping on a text based on a pre-trainingword vector and a random word vector; 2, acquiring features and long-term dependency relationships of sentences through a neural network model; 3, relieving the problem of gradient disappearance in the depth model by using a Highway network; and 4, constraining the output path marked by the sequence through a constraint function. According to the method, a long-term dependency relationship in a sentence is obtained through multi-layer Bi-LSTM superposition, then the problem of gradient disappearance of the deep layer model is relieved through highway connection, finally, normalizing is performed through a Softmax layer to obtain a maximum annotation path, and in addition, an output path is planned through a constraint function to solve the uniqueness problem of a predicate center word. 本发明公开了一种基于神经网络的谓语中心词识别方法,所述
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subjects CALCULATING
COMPUTER SYSTEMS BASED ON SPECIFIC COMPUTATIONAL MODELS
COMPUTING
COUNTING
ELECTRIC DIGITAL DATA PROCESSING
HANDLING RECORD CARRIERS
PHYSICS
PRESENTATION OF DATA
RECOGNITION OF DATA
RECORD CARRIERS
title Predicate central word recognition method based on neural network
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