Indonesian Clickbait Detection Using Improved Backpropagation Neural Network

Bellatasya Unrica Nadia, Irene Anindaputri Iswanto
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引用次数: 1

Abstract

Clickbait has been considered a problem in the modern age of technology, especially in Indonesia. Various attempts have been made to research clickbait detection, however, researches which use Indonesian data are relatively scarce compared to other languages such as English because the availability of Indonesian datasets are lacking. Backpropagation Neural Network was used in clickbait detection on article's title and has achieved quite good accuracy result, however there is still a chance to improve the accuracy. This paper shows the results of using a modified backpropagation neural network algorithm to detect clickbait using article titles when compared to the standard algorithm. The research compares the results of standard stochastic gradient descent algorithm, mini-batch gradient descent algorithm, and a version of stochastic gradient descent with Adam optimizer and three hidden layers. The results show that using Adam optimizer and three hidden layers in stochastic gradient descent algorithm significantly improves the results compared to the standard architecture. The modified algorithm shows a precision score of 78% and a recall and F1 score of 76%, where the standard algorithm has a precision score of 67% and a recall and F1 score of 66%. The resulting algorithm is then implemented to a desktop application, which is considered easy to use.
印度尼西亚使用改进的反向传播神经网络检测标题党
标题党一直被认为是现代科技时代的一个问题,尤其是在印度尼西亚。已经有各种各样的尝试来研究标题党检测,然而,与其他语言(如英语)相比,使用印度尼西亚数据的研究相对较少,因为缺乏印度尼西亚数据集的可用性。将反向传播神经网络用于文章标题的标题党检测,已经取得了较好的准确率结果,但准确率仍有提高的空间。本文展示了与标准算法相比,使用改进的反向传播神经网络算法来检测使用文章标题的标题党。研究比较了标准随机梯度下降算法、小批量梯度下降算法以及带有Adam优化器和三个隐藏层的随机梯度下降算法的结果。结果表明,在随机梯度下降算法中使用Adam优化器和三个隐藏层,与标准结构相比,结果有明显改善。改进算法的精度分数为78%,召回率和F1分数为76%,而标准算法的精度分数为67%,召回率和F1分数为66%。然后将得到的算法实现到桌面应用程序中,这被认为是易于使用的。
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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