面向智慧社会的基于卷积神经网络的印尼社交媒体情感分析

Dian Isnaeni Nurul Afra, Agung Santosa, Radhiyatul Fajri, N. Hidayati, Elvira Nurfadhilah, Siska Pebiana, Lyla Ruslana Aini, Harnum A. Prafitia, Yosi Sahreza, Junanto Prihantoro, Gunarso, Andi Djalal Latief, M. T. Uliniansyah, Hammam Riza
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引用次数: 4

摘要

挖掘国民对具体国家发展问题的意见的需要可以通过情感分析来实现。印尼语的情绪分析研究很多,但仍有改进的空间。在这项研究中,我们进行了实验,将之前测试过的卷积神经网络(CNN)架构与我们使用预训练的词嵌入模型进行比较:Word2Vec和GloVe,后者被证明具有更好的准确性。实验使用了来自IndoBERTweet的11000个句子的SmSA数据集。利用从1620万个BRIN单语文本语料库中创建的预训练的Word2Vec和GloVe模型可以更好地表示文本。词嵌入模型可以捕捉词的语义和句法意义,从而构思出可用于提高分类性能的知识。实验结果表明,较好的F1分数值为80.06%,提高了约2.24%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Developing Sentiment Analysis of Indonesian Social Media Based on Convolutional Neural Network for Smarter Society
The need for mining the public's opinion on specific national development issues can be attained by sentiment analysis. There has been much research on sentiment analysis in Indonesian, but there is room for improvement. In this study, we performed experimentation by comparing previously tested convolutional neural network (CNN) architecture with our proposal utilizing a pre-trained word-embedded model: Word2Vec and GloVe that proved to be having better accuracy. The experiment used the SmSA dataset from IndoBERTweet of 11000 sentences. Utilization of the pretrained Word2Vec and GloVe model that was created from 16.2 million BRIN monolingual text corpus could represent a text in a better way. The word-embedding model can capture the semantic and syntactic meaning of a word so that they can conceive knowledge that may be used to raise classification performances. The experimental results show a better F1 score value of 80.06%, which increases by approximately 2.24%.
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