Exploring Embeddings for Measuring Text Relatedness: Unveiling Sentiments and Relationships in Online Comments
Anthony Olakangil, Cindy Wang, Justin Nguyen, Qunbo Zhou, Kaavya, Jethwa, Jason Li, Aryan Narendra, Nishk Patel, Arjun Rajaram

TL;DR
This paper explores how word embeddings and NLP models like BERT can analyze sentiment and semantic relationships in online comments across social media platforms, revealing interconnected public opinions worldwide.
Contribution
It introduces multiple methods using embeddings to measure text relatedness and sentiment across diverse social media comments, highlighting the interconnectedness of online opinions.
Findings
Embeddings effectively capture semantic relationships in comments.
Clustering and KL-divergence reveal shared sentiments across platforms.
Analysis demonstrates the internet as an interconnected opinion network.
Abstract
After the COVID-19 pandemic caused internet usage to grow by 70%, there has been an increased number of people all across the world using social media. Applications like Twitter, Meta Threads, YouTube, and Reddit have become increasingly pervasive, leaving almost no digital space where public opinion is not expressed. This paper investigates sentiment and semantic relationships among comments across various social media platforms, as well as discusses the importance of shared opinions across these different media platforms, using word embeddings to analyze components in sentences and documents. It allows researchers, politicians, and business representatives to trace a path of shared sentiment among users across the world. This research paper presents multiple approaches that measure the relatedness of text extracted from user comments on these popular online platforms. By leveraging…
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Taxonomy
TopicsMisinformation and Its Impacts · Sentiment Analysis and Opinion Mining
