利用机器学习技术检测和分类 Twitter 用户对伊朗干旱危机的看法

Somayeh Labafi, Leila Rabiei, Zeinab Rajabi
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引用次数: 0

摘要

本研究的主要目的是对讲波斯语的 Twitter 用户有关伊朗干旱危机的观点进行识别和分类,并随后开发一个模型来检测平台上的这些观点。为了实现这一目标,我们使用机器学习和文本挖掘方法开发了一个模型,用于检测波斯语 Twitter 用户对伊朗干旱问题的看法。研究的统计对象包括 42,028 条一年内发布的与干旱相关的推文。随后,对 2300 条推文样本进行了定性分析、标记、分类和研究。接下来,对用户有关干旱危机和伊朗人抗旱能力的观点进行了四类分类。基于这四个类别,训练了一个基于逻辑回归的机器学习模型来预测和检测 Twitter 帖子中的各种观点。所开发模型的准确率为 66.09%,F 值为 60%,表明该模型在检测伊朗 Twitter 用户对干旱危机的看法方面具有良好的性能。利用机器学习方法检测 Twitter 等平台上有关干旱危机的意见,可以智能地反映伊朗社会在面对这些危机时的应变能力水平,并为该领域的决策者提供有关民意变化的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection and Classification of Twitter Users' Opinions on Drought Crises in Iran Using Machine Learning Techniques
The main objective of this research is to identify and classify the opinions of Persian-speaking Twitter users related to drought crises in Iran and subsequently develop a model for detecting these opinions on the platform. To achieve this, a model has been developed using machine learning and text mining methods to detect the opinions of Persian-speaking Twitter users regarding the drought issues in Iran. The statistical population for the research included 42,028 drought-related tweets posted over a one-year period. These tweets were extracted from Twitter using keywords related to the drought crises in Iran. Subsequently, a sample of 2,300 tweets was qualitatively analyzed, labeled, categorized, and examined. Next, a four-category classification of users` opinions regarding drought crises and Iranians' resilience to these crises was identified. Based on these four categories, a machine learning model based on logistic regression was trained to predict and detect various opinions in Twitter posts. The developed model exhibits an accuracy of 66.09% and an F-score of 60%, indicating that this model has good performance for detecting Iranian Twitter users' opinions regarding drought crises. The ability to detect opinions regarding drought crises on platforms like Twitter using machine learning methods can intelligently represent the resilience level of the Iranian society in the face of these crises, and inform policymakers in this area about changes in public opinion.
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