新闻分类的高级计算方法:神经网络和CNN与GPT集成的研究

Fahim Sufi
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引用次数: 0

摘要

在一个信息泛滥的时代,高效的新闻分类势在必行。本研究探讨了神经网络和卷积神经网络(CNN)与生成预训练变形器(GPT)的复杂集成,以提高新闻分类的精度和效率。新闻的快速数字化传播需要先进的计算方法,能够准确分类和预测事件,包括金融和经济事件。利用机器学习和自然语言处理(NLP)的最新进展,本研究利用大型语言模型(llm),如GPT和BERT,以其出色的理解和生成类人文本而闻名。在232天的时间里,我们的方法将33,979篇新闻文章分类为教育和;学习、健康&;医学与科学技术,进一步细分为32个不同的子类别。为了评估,使用真阳性(TP)、真阴性(TN)、假阳性(FP)、假阴性(FN)、精度、召回率和F1-Score等指标对5000篇文章的样本进行评估。与已有研究相比,本文方法的平均准确率为0.986 (Precision),召回率为0.987 (Recall), F1-Score为0.987 (F1-Score)。这项研究提供了大量的实际贡献,提供了对新闻来源贡献的详细见解,有效的异常检测,以及使用神经网络进行预测趋势分析。理论贡献是深刻的,展示了GPT与cnn和递归神经网络的数学集成。这种集成推进了计算新闻分类,并举例说明了复杂的数学框架如何增强大规模文本数据分析,标志着在现实世界场景中应用先进计算方法的关键进步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advanced computational methods for news classification: A study in neural networks and CNN integrated with GPT
In an era inundated with vast amounts of information, the imperative for efficient news classification is paramount. This research explores the sophisticated integration of neural networks and convolutional neural networks (CNN) with Generative Pre-trained Transformers (GPT) to enhance the precision and efficacy of news categorization. The rapid digital dissemination of news necessitates advanced computational methodologies capable of accurate classification and event prediction that include finance and economic events. Leveraging recent advancements in machine learning and natural language processing (NLP), this study utilizes large language models (LLMs) such as GPT and BERT, known for their exceptional comprehension and generation of human-like text. Over 232 days, our methodology classified 33,979 news articles into Education & Learning, Health & Medicine, and Science & Technology, with further subcategorization into 32 distinct subcategories. For evaluation, a sample of 5000 articles was assessed using metrics such as True Positive (TP), True Negative (TN), False Positive (FP), False Negative (FN), Precision, Recall, and F1-Score. In comparison with the existing studies, the proposed method achieving significantly higher with average scores of 0.986 (Precision), 0.987 (Recall), and 0.987 (F1-Score). This research offers substantial practical contributions, providing detailed insights into news source contributions, effective anomaly detection, and predictive trend analysis using neural networks. The theoretical contributions are profound, demonstrating the mathematical integration of GPT with CNNs and recurrent neural networks. This integration advances computational news classification and exemplifies how sophisticated mathematical frameworks enhance large-scale text data analysis, marking a pivotal advancement in applying advanced computational methods in real-world scenarios.
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