通过社会智能分析绘制孤独相关性的情感可视化图谱

Hurmat Ali Shah, Marco Agus, Mowafa Househ
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引用次数: 0

摘要

背景孤独是一个全球性的公共卫生问题,影响着相当多的人,也给公共卫生系统造成负担,并增加了其他危及生命和损害生命的疾病的风险。在美国,估计有 17% 年龄在 18-70 岁之间的成年人感到孤独。据估计,在英国,每人每年因孤独造成的经济损失在 8074.80 美元到 12077.70 美元之间。但人们并不了解孤独的动态。本文旨在可视化 Twitter 数据中与孤独相关的主题和话题的频率。通过使用自然语言(NLP)处理、情感分析和话题建模,我们试图了解普遍的情感和关注点。通过交互式树状图和雷达图,我们展示了孤独感的各个维度,让用户能够在社交媒体上探索并深入了解这一问题。通过分析美国和印度有关孤独的推文,我们重点对这两个国家进行了比较分析。就人口而言,这两个国家是允许合法访问 Twitter 的最大国家。第一部分,我们采用 NLP 技术和机器学习算法来提取和分析包含与孤独相关的关键词的推文。通过情感分析和主题建模,我们发现了语言模式和上下文信息,从而对重复出现的主题和话题进行分类。先进的文本分析技术可帮助我们深入了解与孤独有关的经历、情感和挑战。在第二部分中,我们开发了交互式可视化工具,以引人入胜的直观方式展示研究结果。利用树状图和雷达图等技术将分析数据转化为具有视觉吸引力的表现形式。结果对推特数据的分析产生了关于与孤独相关的主题和话题的普遍性和性质的宝贵知识。交互式可视化展示了 Twitter 用户所表达的情感和关注点的全貌。这些交互式图表提供了与孤独相关的主题和话题分布的整体视图,让专家能够探索数据并与之互动,从而更深入地了解围绕这一问题的复杂性。 结论 本文通过使用 NLP、情感分析和话题建模,成功地探索了 Twitter 上与孤独相关的主题和话题。交互式可视化提高了研究结果的可访问性和可用性,为不同利益相关者提供了有价值的见解。这项研究有助于深入理解社交媒体背景下的孤独感。
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Sentiment visualization of correlation of loneliness mapped through social intelligence analysis

Background

Loneliness is a global public health issue affecting a considerable number of people as well as burdening the public health system and increasing the risk of other life-threatening and life-damaging conditions. In USA an estimated 17% adults aged 18–70 report loneliness. The monetary loss as result of loneliness is estimated to be between USD 8074.80 and USD 12,0777.70 per person per year in the United Kingdom. But the dynamics of loneliness are not understood. Social media platforms have become a valuable source of data to study this phenomenon.

Objectives

This paper aims to visualize the frequency of loneliness-related themes and topics in Twitter data. By using natural language (NLP) processing, sentiment analysis, and topic modeling, we seek to understand prevalent sentiments and concerns. Through interactive tree maps and radar plots, we present an engaging view of loneliness dimensions, allowing users to explore and gain insights into this issue on social media. We focus on comparative analysis of USA and India through analyzing tweets from both countries on loneliness. These two countries are the biggest countries population-wise where access to Twitter is legally allowed.

Methods

This study consists of two parts. In the first part, we employ NLP techniques and machine learning algorithms to extract and analyze tweets containing keywords related to loneliness. Through sentiment analysis and topic modeling, we discern linguistic patterns and contextual information to categorize the recurring themes and topics. Advanced text analytics is used to gain nuanced insights into the experiences, emotions, and challenges connected with loneliness. In the second part, interactive visualizations are developed to present the findings in an engaging and intuitive manner. Techniques such as tree maps and radar plots are utilized to transform the analyzed data into visually appealing representations.

Results

The analysis of Twitter data yields valuable knowledge about the prevalence and nature of themes and topics associated with loneliness. The interactive visualizations present a comprehensive view of the sentiments and concerns expressed by Twitter users. These interactive plots provide a holistic view of the distribution of themes and topics associated with loneliness, allowing experts to explore and interact with the data, gaining deeper insights into the complexities surrounding this issue.

Conclusion

This paper successfully explores themes and topics related to loneliness on Twitter by employing NLP, sentiment analysis, and topic modeling. The interactive visualizations enhance the accessibility and usability of the findings, providing valuable insights for various stakeholders. The study contributes to a deeper comprehension of loneliness in the context of social media.

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CiteScore
5.90
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0.00%
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0
审稿时长
10 weeks
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