Demonstrating a Social Intelligence Analysis Framework for Loneliness: Infodemiology Approach
Hurmat Ali Shah, Mowafa Househ, Loulwah Alsumait, Altaf Alfarhan

TL;DR
This paper introduces a framework using social media and web data to study loneliness, showing how online tools can provide insights into its dynamics.
Contribution
The novel contribution is a framework combining social media and web data to analyze loneliness, complementing traditional self-report methods.
Findings
The framework effectively collects and categorizes data related to loneliness from multiple online sources.
Sentiment analysis and social intelligence techniques revealed behavioral patterns and correlations with socioeconomic factors.
Tools like Google Trends and social media APIs provided regional and behavioral insights into loneliness trends.
Abstract
Loneliness is a dynamic phenomenon that can be investigated using social media and web data. This study aims to introduce a framework for studying loneliness through social media and online data sources. A case study is presented to demonstrate the deployment of this framework and its effectiveness in collecting and analyzing data related to loneliness. Our proposed framework involves collecting data from various social media and online sources. We discuss the modalities of analyzing the collected data based on the framework’s defined purpose. The analysis was conducted using tools such as Google Trends, the News application programming interface, X (formerly known as Twitter), Reddit, and other social media platforms. Different types of data were categorized according to the proposed framework to understand and study loneliness comprehensively. The results demonstrate the…
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Taxonomy
TopicsData-Driven Disease Surveillance
