APPLICATION OF SEMANTIC MODELS IN LITERARY STUDIES AND EXPERTISE OF COPYRIGHT OBJECTS

Mykhaylo Kalinichenko
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Abstract

The article examines the application of semantic models in the fields of copyright expertise and literary analysis. The content showcases various types of semantic models utilized for text analysis, such as Latent Semantic Analysis (LSA), topic modeling, named entity recognition (NER), sentiment analysis, and dependency parsing. While each model has its own advantages and drawbacks, challenges in their utilization exist, such as over-reliance on quantitative analysis, model biases, lack of contextual information, and potential misinterpretation of meaning. Nevertheless, semantic models have significantly impacted the field by enabling the identification of instances of plagiarism and copyright infringement more efficiently and accurately. The overview presented in the publication on the essence and peculiarities of using semantic models in copyright expertise and literary analysis allows for the following conclusions. Semantic models significantly improve the efficiency of text analysis. These models use advanced technologies to identify structural patterns, themes, and similar elements in texts, as well as allowing experts to gain a deeper understanding of the works they are analyzing. In the field of copyright expertise, semantic models are used for analyzing significant volumes of text and identifying possible copyright infringements. Although semantic models have many advantages, they also have functional limitations. It is important to be aware of these limitations and use analytical models in combination with other methods to ensure a more comprehensive understanding of the text. There are several ways to address possible problems with using semantic models, including combining quantitative and qualitative analysis, using multiple models at once, taking into account selection biases of analytical information, studying the broader context, and additional verification of results by human experts. Ultimately, the use of semantic models in copyright expertise and literary analysis has enormous practical value, but it is important to be aware of their limitations and use them in conjunction with other analysis methods to ensure the most objective and comprehensive research. As technology develops, new and more advanced semantic models will be developed that will allow for even more detailed analysis of texts.
语义模型在文学研究中的应用及版权对象的专业知识
本文探讨了语义模型在版权专业知识和文学分析领域的应用。内容展示了用于文本分析的各种类型的语义模型,例如潜在语义分析(LSA)、主题建模、命名实体识别(NER)、情感分析和依赖项解析。虽然每个模型都有自己的优点和缺点,但它们的使用存在挑战,例如过度依赖定量分析,模型偏差,缺乏上下文信息以及潜在的意义误解。然而,语义模型通过更有效和准确地识别剽窃和版权侵权实例,对该领域产生了重大影响。该出版物对在版权专业知识和文学分析中使用语义模型的本质和特点进行了概述,可以得出以下结论。语义模型显著提高了文本分析的效率。这些模型使用先进的技术来识别文本中的结构模式、主题和类似元素,并使专家能够更深入地了解他们正在分析的作品。在版权专业知识领域,语义模型用于分析大量文本并识别可能的版权侵权。尽管语义模型有很多优点,但它们也有功能上的局限性。重要的是要意识到这些局限性,并将分析模型与其他方法结合使用,以确保对文本有更全面的理解。有几种方法可以解决使用语义模型时可能出现的问题,包括结合定量和定性分析,同时使用多个模型,考虑分析信息的选择偏差,研究更广泛的背景,以及由人类专家对结果进行额外验证。最终,在版权专业知识和文学分析中使用语义模型具有巨大的实用价值,但重要的是要意识到它们的局限性,并将它们与其他分析方法结合使用,以确保最客观和全面的研究。随着技术的发展,新的更先进的语义模型将被开发出来,这将允许对文本进行更详细的分析。
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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