设计一种基于迁移学习的社交媒体俄语文本数据标注算法

D.S. Bakanov, A.V. Kupriyanov
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引用次数: 0

摘要

本文考虑了如何构建一种算法,用于对来自社交媒体的俄语文本进行注释。注释将被定义为对文本的情感色彩的估计。本文讨论了统计学习的经典基本方法和基于迁移学习和转换的现代深度学习方法。解决俄语文本情感确定问题的主要问题是缺乏大量的标记数据语料库,这严重限制了模型的训练。综上所述,将建立变压器模型和梯度增压相结合的模型。这项工作的意义在于创建一个低内存消耗和帖子主题独立性的模型,在少量数据的训练下,可以用来分析社交媒体中帖子的文本内容。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Designing an algorithm for annotating Russian-language text data of social media using transfer learning
This article considers ways to build an algorithm for annotating Russian-language texts from social media. Annotation will be defined as the estimation of the emotional coloring of the text. The article addresses both classical basic methods of statistical learning and modern methods of deep learning based on transfer learning and transformers. The main problem in solving the problem of determining the sentiment of Russian-language texts is the lack of a large corpus of labeled data, which severely limits the training of the model. In conclusion, a model that combines the transformer model and gradient boosting will be developed. The relevance of this work is to create a model with low memory consumption and thematic independence of posts, trained on a small amount of data, which can be used to analyze the textual content of posts in social media.
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