Auto-abstracting of texts in the Kazakh language

D. Rakhimova, A. Turganbayeva
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引用次数: 4

Abstract

In this article, the authors propose an approach for abstracting text resources and documents in the Kazakh language. Using software solutions to normalize texts in the Kazakh language, the text data developed by the scientific team of the authors of this work was prepared for further processing. Reviewing is based on keywords and phrases. To extract keywords and phrases, an algorithm is used TF-IDF algorithm to extract keywords and phrases from texts in the Kazakh language. To solve the problem, an approach based on machine learning was applied. To determine the similarity of the sentence, the cosine similarities of the data of the sentence are calculated, and thus the semantic content of the text is determined. When outputting text annotations, the volume of text is taken into account, that is, the amount of annotation depends on the volume of the document. Abstracting of texts in the Kazakh language is an urgent task of classification, clustering of text and information retrieval. The paper presents the results of experimental calculations for various approaches. The results of the study show that the presented approach is the best solution for extracting annotations from texts in the Kazakh language.
哈萨克语文本的自动抽象
在本文中,作者提出了一种哈萨克语文本资源和文档的抽象方法。使用软件解决方案对哈萨克语文本进行规范化,为这项工作的作者科学团队开发的文本数据进行了进一步处理。复习是基于关键词和短语。为了提取关键字和短语,采用TF-IDF算法从哈萨克语文本中提取关键字和短语。为了解决这个问题,我们采用了一种基于机器学习的方法。为了确定句子的相似度,计算句子数据的余弦相似度,从而确定文本的语义内容。在输出文本注释时,要考虑到文本的体积,即注释的数量取决于文档的体积。哈萨克语文本摘要是哈萨克语文本分类、聚类和信息检索的迫切任务。本文给出了各种方法的实验计算结果。研究结果表明,该方法是从哈萨克语文本中提取注释的最佳解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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