A drug entity relationship extraction method and system based on an attention mechanism neural network

A neural network and entity relationship technology, applied in the field of extraction method and system of drug entity interaction relationship in medicinal chemistry literature, can solve problems such as affecting performance, poor extraction effect, error propagation, etc., and achieve the effect of improving accuracy.

Active Publication Date: 2019-05-21
PEKING UNIV
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Problems solved by technology

[0007] Practice has shown that the rule-based method is not effective in extracting complex relationships from long sentences, and the literature in the field of pharmaceutical chemistry contains a large number of long sentences with complex structures such as appositions and parallel structures; making rules is time-consuming and labor-intensive and requires the participation of professional p

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  • A drug entity relationship extraction method and system based on an attention mechanism neural network
  • A drug entity relationship extraction method and system based on an attention mechanism neural network
  • A drug entity relationship extraction method and system based on an attention mechanism neural network

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Embodiment Construction

[0032] The present invention will be described in further detail below through specific embodiments and accompanying drawings.

[0033] The technical method of the present invention is to implement vectorized input from text content analysis, analyze the associated features of each word through the cyclic neural network to obtain the medicinal entity through the combined input vector, and then pay attention to the entity category information weight through the attention mechanism, and combine the weights The information and associated features are used as the input of the convolutional neural network classifier, and the output is the mutual category information between entities.

[0034] figure 1 Is the general flowchart of the method of the present invention. The steps of this method are as follows:

[0035] (1) Segment the text content into sentences and obtain each word as the basic element of the sentence. According to the word2vec algorithm, the preprocessed word vecto...

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Abstract

The invention relates to a drug entity relationship extraction method and system based on an attention mechanism neural network. The method comprises the following steps: (1) analyzing the text content of a pharmaceutical document, using sentences as basic units for sentence segmentation, and performing vectorization representation on each word in the sentences; (2) inputting a vectorized representation result into a recurrent neural network, extracting association characteristics of words in the sentences according to a front-back bidirectional word sequence through the recurrent neural network, and identifying all medicine entities; (3) obtaining inter-word importance weights in the sentences through an attention mechanism neural network, and combining the inter-word importance weights with the output in the step (2); And (4) inputting a result obtained in the step (3) into a convolutional neural network, and predicting a category relation between every two medicated entity words through the convolutional neural network. According to the classification method for increasing the attention mechanism concerned entity class information weight, the influence caused by wrong dependencyanalysis results in long sentences can be reduced, and the accuracy of extracting the pharmacochemical entity relationship is improved.

Description

technical field [0001] The invention belongs to the field of natural language processing and relates to an information extraction technology, in particular to a method and system for extracting drug entity interaction relations in medicinal chemistry documents. Background technique [0002] The extraction of medicinal chemistry entity relationship is the basic task in the construction of medicinal chemistry knowledge base. The built system automatically extracts the relationship between entities from the literature, which provides more important reference value for disease treatment, drug development, and life science research. The construction and maintenance of medicinal chemistry knowledge databases provide deeper information. Entity relationship extraction is the cornerstone of medicinal chemistry knowledge acquisition, in order to build a knowledge base to improve the cognitive level of medicinal chemistry phenomena. [0003] Since the relationship between medicinal an...

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Application Information

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IPC IPC(8): G06F16/332G06F16/36G06N3/04
Inventor 张亮仁杨波刘振明宗晓琳胡建星
Owner PEKING UNIV
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