Graph convolutional network relationship extraction method based on multi-dependency relationship representation mechanism

A technology of dependency relationship and convolutional network, applied in neural learning methods, biological neural network models, instruments, etc., can solve problems such as poor compatibility of model sentences, easy to ignore relational indicators, inflexible screening methods, etc., to improve recognition Accuracy, effect of auxiliary relationship extraction

Active Publication Date: 2021-08-10
中国科学院电子学研究所苏州研究院
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Problems solved by technology

[0004] The purpose of the present invention is to propose a graph convolutional network relationship extraction method based on a multi-dependency representation mechanism to solve the problem that the existing graph convolutional network-based relationship extracti

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  • Graph convolutional network relationship extraction method based on multi-dependency relationship representation mechanism
  • Graph convolutional network relationship extraction method based on multi-dependency relationship representation mechanism
  • Graph convolutional network relationship extraction method based on multi-dependency relationship representation mechanism

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Embodiment

[0113] In order to verify the validity of the present invention, combine below image 3 The steps of the present invention are described in detail. This description is based on the optimal relationship extraction model that has been trained, and uses the corpus in the test set to carry out relationship prediction.

[0114] Step 1: Select an input example sentence from the test set "There were rumors that Sean Preston’s real name was Christian Michael."

[0115] Step 1.1: Segment the sentence, the result is:

[0116] “There / were / rumors / that / Sean / Preston / ’s / real / name / was / Christian / Michael”

[0117] Step 1.2: Perform part-of-speech tagging on sentence segmentation, the result is:

[0118] "RB / VBD / NNS / IN / NNP / NNP / POS / JJ / NN / VBD / JJ / NNP / "

[0119] Step 1.3: Utilize the syntactic analysis tool to carry out dependency analysis on the sentence, and generate the dependency tree (see Figure 4 ).

[0120] Step 1.4: The entity pair of the sentence is labeled {Sean Preston,Christian Mi...

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Abstract

The invention provides a graph convolutional network relationship extraction method based on a multi-dependency relationship representation mechanism, and the method comprises the following steps: carrying out preprocessing on a collected unstructured text, including sentence segmentation, word segmentation, part-of-speech tagging, entity type tagging, relationship type annotation and generation of a semantic embedding vector of each segmented word, performing dependency relationship analysis on sentences, and generating a dependency relationship tree; capturing context semantic features of sentences based on a bidirectional long-short-term memory recurrent neural network; generating a full adjacency matrix, a concentrated adjacency matrix and a distance weight adjacency matrix according to the dependency relationship tree, performing convolution operation on the adjacency matrix, the concentrated adjacency matrix and the distance weight adjacency matrix in combination with context semantic features of the sentence, and performing maximum pooling processing on a result after the convolution operation to obtain a sentence representation vector; obtaining the entity relationship feature information based on the feedforward neural network, and carrying out the entity relationship classification. According to the method, relation extraction can be better assisted, and the recognition precision is improved.

Description

technical field [0001] The invention relates to the field of natural language processing, in particular to a graph convolution network relation extraction method based on a multi-dependency relation representation mechanism. Background technique [0002] In the era of big data, Internet information is increasing rapidly. How to effectively mine high-quality and structured knowledge information from massive unstructured texts is a difficult point in the research of natural language processing technology. Relation extraction is an important part of information extraction, and its purpose is to classify the semantic relationship between entities in the text. Relation classification is divided into supervised classification, unsupervised classification, semi-supervised classification and open domain classification. At present, the supervised extraction method based on deep neural network is the mainstream of relation extraction. [0003] Deep neural networks can learn the sema...

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Application Information

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IPC IPC(8): G06F16/35G06F40/211G06F40/295G06F40/30G06N3/04G06N3/08
CPCG06F16/355G06F40/211G06F40/30G06F40/295G06N3/08G06N3/084G06N3/044G06N3/045
Inventor 沈红刘欣刘午凌罗晋彭晨闵飞乔雪
Owner 中国科学院电子学研究所苏州研究院
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