Muhammad Ichwandar Akrianto, Adhistya Erna Permanasari, Indriana Hidayah, M. Sholihin
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Bag of Word (BOW) is a word embedding model that is often used, but this model is considered not optimal because it has disadvantages such as dependence on certain languages. Therefore, we suggest the fastText model minimizes dependency on pre-processing words and use 2 classification methods, namely SVM and KNN. This study aims to compare the performance results using the fastText model with conventional models that are often used, namely Bag of Word (BOW) and Term Frequency – Inverse Document Frequency (TF-IDF) to find the best accuracy value produced. 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引用次数: 0
摘要
Waqf在发展和增加福利方面发挥着重要作用。除了减少对印尼政府资金的依赖外,waqf还对振兴经济产生了重大影响,特别是在新冠病毒爆发以来。科技的快速发展也改变了waqf,其中之一就是人们可以通过几个数字应用程序在线捐赠waqf的钱。但是到目前为止,应用程序用户仍然感受到一些优点和缺点。为了更容易地获得基于用户体验的信息,我们建议开发一个可以自动将情绪分为积极、消极和中立的模型。使用词嵌入进行文本分类是获得最佳性能结果的基础。BOW (Bag of Word)是一种常用的词嵌入模型,但由于其对某些语言的依赖等缺点,被认为不是最优模型。因此,我们建议fastText模型最大限度地减少对预处理词的依赖,并使用2种分类方法,即SVM和KNN。本研究旨在将fastText模型的性能结果与常用的传统模型(即Word Bag (BOW)和Term Frequency - Inverse Document Frequency (TF-IDF))进行比较,以找到产生的最佳精度值。基于本研究,可以解释为总体而言,fastText模型比BOW和TF-IDF能产生更好的性能。
Analysis of Google Play Store's Sentiment Review on Waqf Digital Platform Using Fasttext Embedding
Waqf has an important role in the development and increase in welfare. In addition to reducing dependence on funds from the Indonesian government, waqf has also had a significant impact on reviving the economy, especially since the outbreak of the COVID-19 virus. The rapid advancement of technology has also transformed waqf, one of which is that people can donate waqf money online through several digital applications. But so far, several advantages and disadvantages are felt by application users. To make it easier to get information based on user experience, we propose to develop a model that can classify sentiments into positive, negative, and neutral automatically. Text classification using word embedding is the basis for getting the best performance results. Bag of Word (BOW) is a word embedding model that is often used, but this model is considered not optimal because it has disadvantages such as dependence on certain languages. Therefore, we suggest the fastText model minimizes dependency on pre-processing words and use 2 classification methods, namely SVM and KNN. This study aims to compare the performance results using the fastText model with conventional models that are often used, namely Bag of Word (BOW) and Term Frequency – Inverse Document Frequency (TF-IDF) to find the best accuracy value produced. Based on this research, it can be interpreted that in general, the fastText model can produce better performance than BOW and TF-IDF.