Abstract

In recent years, social media analysis is arousing great interest in various scientific fields, such as sociology, political science, linguistics, and computer science. Large amounts of data gathered from social media are widely analyzed for extracting useful information concerning people’s behaviors and interactions. In particular, they can be exploited to analyze the collective sentiment of people, understand the behavior of user groups during global events, monitor public opinion close to important events, identify the main topics in a public discussion, or detect the most frequent routes followed by social media users. As an example of the countless works in the state-of-the-art on social media analysis, this paper presents three significant applications in the field of opinion and pattern mining from social media data: (i) an automatic application for discovering user mobility patterns, (ii) a novel application for estimating the political polarization of public opinion, and (iii) an application for discovering interesting social media discussion topics through a hashtag recommendation system. Such applications clearly highlight the abundance and wealth of useful information in many application contexts of human life that can be extracted from social media posts.

Highlights

  • Massive amounts of digital data, generated every day on social media platforms, can be used to extract useful information about human interests, opinions, and dynamics [1]

  • It discusses how these research activities can be exploited and, if necessary, combined for the analysis of large amounts of social media data, aimed at extracting different kind of knowledge from three different perspectives: (i) from the posts published by tourists who visit a city, we can discover the main tourist attractions and the mobility patterns across them [7]; (ii) from public discussions on social media close to important electoral events, it is possible to discover the political orientation of citizens and estimate the outcome of a political event [8]; (iii) from hashtags used by social media users, we discover the main topics underlying social media conversation and how users refer to them in publishing online content [9]

  • Taking into account the advances produced by research in this area, this paper presents the definition of three significant applications of Social Big Data analysis in the fields of trajectory mining, sentiment analysis, and topic detection

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Summary

Introduction

Massive amounts of digital data, generated every day on social media platforms, can be used to extract useful information about human interests, opinions, and dynamics [1]. This paper presents some of the most recent activities we carried out in the field of Social Big Data analysis It discusses how these research activities can be exploited and, if necessary, combined for the analysis of large amounts of social media data, aimed at extracting different kind of knowledge from three different perspectives: (i) from the posts published by tourists who visit a city, we can discover the main tourist attractions and the mobility patterns (i.e., trajectories) across them [7]; (ii) from public discussions on social media close to important electoral events, it is possible to discover the political orientation of citizens and estimate the outcome of a political event [8]; (iii) from hashtags used by social media users, we discover the main topics underlying social media conversation and how users refer to them in publishing online content [9].

Background
Social Big Data Analysis Applications
Frequent Trajectory Mining from Social Media Data
RoI Detection
Trajectory Mining
Use Cases and Results
Opinion Mining from Social Media Data
Classification of Posts
Polarization of Users
Topic Discovery from Social Media
Semantic Mapping
Hashtags Recommendation
Topic Discovery
Conclusions
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