Abstract

Withthe technological advent, the clustering phenomenon is recently being used in various domains and in natural language recognition. This article contributes to the clustering phenomenon of natural language and fulfills the requirements for the dynamic update of the knowledge system. This article proposes a method of dynamic knowledge extraction based on sentence clustering recognition using a neural network-based framework. The conversion process from natural language papers to object-oriented knowledge system is studied considering the related problems of sentence vectorization. This article studies the attributes of sentence vectorization using various basic definitions, judgment theorem, and postprocessing elements. The sentence clustering recognition method of the network uses the concept of prereliability as a measure of the credibility of sentence recognition results. An ART2 neural network simulation program is written using MATLAB, and the effect of the neural network on sentence recognition is utilized for the corresponding analysis. A postreliability evaluation indexing is done for the credibility of the model construction, and the implementation steps for the conjunctive rule sentence pattern are specifically introduced. A new method of structural modeling is utilized to generate the structured derivation relationship, thus completing the natural language knowledge extraction process of the object-oriented knowledge system. An application example with mechanical CAD is used in this work to demonstrate the specific implementation of the example, which confirms the effectiveness of the proposed method.

Highlights

  • Clustering is a fundamental approach that explores data mining, image analysis, and various other pattern recognition methods for grouping the data into clusters

  • Natural language processing deals with the introduction of clustering phenomenon utilizing the various aspects of deep learning [1]. e previous studies demonstrated the utilization of artificial intelligence [2, 3] methods in order to refine it to form structured knowledge using the primitive knowledge of human natural language. is link is called knowledge extraction

  • The formal language understanding mechanism requires a high degree of consistency in language expression and lacks flexibility, so it is lacking in the adaptability of natural language processing [4]

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Summary

Introduction

Clustering is a fundamental approach that explores data mining, image analysis, and various other pattern recognition methods for grouping the data into clusters. According to the inclusive relationship between the various knowledge objects involved in natural language, structural modeling methods can be used to dynamically generate knowledge objects, their structure, and the relationship between them (such as the derived relationship between objects) Based on this knowledge structure generation mechanism, as long as a new knowledge description (such as natural sentences) appears, the system can describe the augmented knowledge. Is article proposes a dynamic knowledge extraction method based on sentence clustering recognition. E work provides a novel research framework of the dynamic knowledge extraction method while considering the conversion process from natural language processing to object-oriented knowledge system. E article proposes a new method of structural modeling for the generation of structured derivation relationship, completing the natural language knowledge extraction process of the object-oriented knowledge system.

Literature Review
Research Foundation of the Knowledge Dynamic Extraction Method
Related Definitions and eorems
Background thesaurus
Statement Clustering Recognition Based on Neural Network
10 Vector dimension
Intermediate Code Generation
Dynamic Generation of Object-Oriented Knowledge Structure
Method presented in this article
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