使用机器学习方法对SemeVal数据集进行Twitter情感分析

Azhar Imran, M. Fahim, Abdulkareem Alzahrani, Safa Fahim, K. Alheeti, S. Rehman
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引用次数: 1

摘要

近年来,情感分析吸引了许多研究者。由于缺乏合适的数据集,许多科学家和研究人员在他们的研究中遇到了障碍。我们使用Semeval数据集,因为它是计算情感分析的真实数据集。当涉及到自然灾害、政治动荡和恐怖主义时,社会科学家和心理学家对了解个人如何表达他们的感受和观点很感兴趣。在本文中,我们提出了SemEva1-2017数据集的方法。众所周知,随着科技的进步,社交媒体已经建立了强大的全球连接和信息共享。社会媒体和媒体网络网站的广泛使用产生了前所未有的海量数据。使用这些网站共享信息已经变得非常普遍。检测触发因素对于理解行为和情绪状态以避免反社会行为和极端或冲动的反应是必要的。我们揭示了使用不同的策略来识别情感文本数据。根据情感分析对推文进行分类在社会、经济和政治世界中具有重要作用。解决和应对这一问题的有效策略是使用计算技术来识别语音类型。对于特征提取,我们使用各种机器学习分类器。正确检测文本中的相关特征至关重要。因此,使用和改进NLP方法有助于提高对数据的理解和分析。简而言之,我们使用无监督。TF-IDF用于特征提取训练词嵌入技术,该技术被调优为转换训练数据和转换测试数据。最后利用推特情感分析上的向量化对模型进行初始化,对后者进行训练。然后,对模型进行转换,生成转换后的数据集。介绍了SemEva1-2017关于识别和分类Twitter社交媒体中语言情感的主要发现和结果,并基于应用不同分类器进行机器学习建模来评估结果。
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Twitter Sentimental Analysis using Machine Learning Approaches for SemeVal Dataset
In recent years, Sentimental Analysis has enticed many researchers in this field. Due to the lack of suitable datasets, many scientists and researchers faced hindrances in their research. We used Semeval dataset because it’s the authentic dataset for computational sentimental Analysis. When it comes to natural catastrophes, political turmoil, and terrorism, social scientists and psychologists are interested in learning how individuals express their feelings and opinions. In this paper, we present the approach to the SemEva1-2017 dataset. As we know, with the advancement of technology, social media have established strong worldwide connectivity and information sharing. The wide use of social media and media-networking sites produced an unprecedented amount of data. Sharing information using these websites has become very common. To detect the triggering factors has become necessary to understand the behavioural and emotional state to avoid anti-social behaviour and extreme or impulsive responses. We reveal to identify the emotional textual data using different strategies. Classification of the Tweets according to the Sentimental Analysis has an important role in the social, economic, and political world s. The effective strategy for tackling and coping with it is to use computational techniques to identify the speech type. For feature extraction, we use a variety of machine learning classifiers. It’s crucial to detect related features in a text correctly. As a result, using and improving NLP approaches can aid in improved understanding and analysis of data. Briefly, we use an unsupervised. TF-IDF for the Feature Extraction to train the word Embedding Techniques that are tuned into transform training data and transformed Test data. The model is finally initialized using vectorization on Twitter sentiment analysis to train the latter. Then, transformed the model to create the transformed dataset. The major findings and outcomes of SemEva1-2017 on Identifying and Categorizing the Sentiments of the Language in social media of Twitter are presented and evaluated results based on applying different classifiers for Machine learning Modeling.
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