Over a Decade of Social Opinion Mining: A Systematic Review
Keith Cortis, Brian Davis

TL;DR
This systematic review analyzes twelve years of research on Social Opinion Mining, highlighting methods, datasets, and applications across social media platforms to advance AI understanding of human opinions.
Contribution
It provides a comprehensive overview of Social Opinion Mining research from 2007 to 2018, identifying trends, techniques, and future directions in the field.
Findings
Analyzed 485 studies over twelve years.
Identified key social media platforms and techniques.
Outlined future research directions.
Abstract
Social media popularity and importance is on the increase due to people using it for various types of social interaction across multiple channels. This systematic review focuses on the evolving research area of Social Opinion Mining, tasked with the identification of multiple opinion dimensions, such as subjectivity, sentiment polarity, emotion, affect, sarcasm and irony, from user-generated content represented across multiple social media platforms and in various media formats, like text, image, video and audio. Through Social Opinion Mining, natural language can be understood in terms of the different opinion dimensions, as expressed by humans. This contributes towards the evolution of Artificial Intelligence which in turn helps the advancement of several real-world use cases, such as customer service and decision making. A thorough systematic review was carried out on Social Opinion…
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