基于上下文的新闻标题分析:机器学习和深度学习算法的比较研究

Syeda Sumbul Hossain, Y. Arafat, Md. Ekram Hossain
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引用次数: 3

摘要

在线新闻博客和网站对任何社会都有影响力,因为它们将世界聚集在一个地方。除此之外,在线新闻博客和网站都有有效的策略来抓住读者的注意力,即通过识别新闻标题的情绪倾向或极性来避免对任何事实的误解。在这项研究中,我们检查了由五家不同的全球报纸创建的3383个新闻标题。为了区分新闻标题的情感极性(或情感倾向),我们用七种机器学习和两种深度学习算法训练了我们的模型。最后,对它们的性能进行比较。其中Bernoulli naïve Bayes和Convolutional Neural Network (CNN)分别取得了比其他机器学习和深度学习算法更高的准确率。这样的研究将有助于观众确定他们对任何领导人或治理的印象;并将协助识别最冷漠的报纸或新闻博客。
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Context-Based News Headlines Analysis: A Comparative Study of Machine Learning and Deep Learning Algorithms
Online news blogs and websites are becoming influential to any society as they accumulate the world in one place. Aside from that, online news blogs and websites have efficient strategies in grabbing readers’ attention by the headlines, that being so to recognize the sentiment orientation or polarity of the news headlines for avoiding misinterpretation against any fact. In this study, we have examined 3383 news headlines created by five different global newspapers. In the interest of distinguishing the sentiment polarity (or sentiment orientation) of news headlines, we have trained our model by seven machine learning and two deep learning algorithms. Finally, their performance was compared. Among them, Bernoulli naïve Bayes and Convolutional Neural Network (CNN) achieved higher accuracy than other machine learning and deep learning algorithms, respectively. Such a study will help the audience in determining their impression against or for any leader or governance; and will provide assistance to recognize the most indifferent newspaper or news blogs.
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