Deep Tweets Analyzer Model for Twitter Mood Visualization and Prediction Based Deep Learning Approach

Maha Al-Ghalibi, Adil Al-Azzawi, K. Lawonn
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Abstract

In many of today’s big data analytics applications, it might need to analyze social media feeds as well as to visualize users’ opinions. This will provide a viable alternative source to establish new metrics in our digital life. Social interaction with people in Twitter is open-ended, making media analysis in Twitter easier in comparison with other social media. That is because the interaction in those media is often different since most of them are private. This work is therefore devoted to focus merely on design and implementation a Deep model for Twitter opinion (Mood) visualization based Deep Learning network. It is concerned with Natural Language Processing (NLP)-based sentiment analysis and Deep Learning framework for Twitter’s opinion mining visualization and classification. The utilized methodology is based on applying sentiment analysis NLP on a large number of tweets in order to visualize the predicted mood scoring of the tweet and thus to exploit public tweeting for knowledge discovery. This will moreover serve for fake news detection. The pertinent mechanism involves several consecutive steps, namely: dataset collection stage, the pre-processing stage, NLP stage, sentiment analysis stage, and prediction and classification stage using Deep Learning Model. The U.S. Airlines Sentiment Analysis Twitter dataset has been utilized which is already provided with Data for Everyone. The presented system is monitoring Twitter streams from both the media and the public. It is capable to visualize and extract meaningful data from tweets in real-time and store them into a Deep model for analysis. It is convenient for a wide application spectrum involving: big data analytics solutions, predicting e-commerce customer’s behavior, improving marketing strategy, getting market competitive advantages, besides visualization in various data mining applications.
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基于深度学习方法的推特情绪可视化和预测的深度推特分析器模型
在当今的许多大数据分析应用程序中,它可能需要分析社交媒体提要以及可视化用户的意见。这将为在我们的数字生活中建立新的度量标准提供一个可行的替代来源。在Twitter上与人的社交互动是开放式的,这使得Twitter上的媒体分析比其他社交媒体更容易。这是因为这些媒体中的互动往往是不同的,因为它们大多数是私人的。因此,这项工作专注于设计和实现一个基于Twitter意见(Mood)可视化的深度学习网络的深度模型。它涉及基于自然语言处理(NLP)的情感分析和深度学习框架,用于Twitter的意见挖掘可视化和分类。所使用的方法是基于对大量推文应用情感分析NLP,以便将推文的预测情绪评分可视化,从而利用公共推文进行知识发现。此外,这将有助于假新闻的检测。相关机制涉及几个连续的步骤,即:数据集收集阶段,预处理阶段,NLP阶段,情感分析阶段,以及使用深度学习模型的预测和分类阶段。美国航空公司情绪分析推特数据集已经被利用,它已经为每个人提供了数据。该系统正在监控来自媒体和公众的推特信息流。它能够实时可视化并从推文中提取有意义的数据,并将其存储到Deep模型中进行分析。它方便了广泛的应用范围,包括:大数据分析解决方案,预测电子商务客户行为,改进营销策略,获得市场竞争优势,以及各种数据挖掘应用的可视化。
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