Abstract

Micro-blogs, such as Twitter, have become important tools to share opinions and information among users. Messages concerning any topic are daily posted. A message posted by a given user reaches all the users that decided to follow her/him. Some users post many messages, because they aim at being recognized as influencers, typically on specific topics. How a user can discover influencers concerned with her/his interest? Micro-blog apps and web sites lack a functionality to recommend users with influencers, on the basis of the content of posted messages. In this paper, we envision such a scenario and we identify the problem that constitutes the basic brick for developing a recommender of (possibly influencer) users: training a classification model by exploiting messages labeled with topical classes, so as this model can be used to classify unlabeled messages, to let the hidden topic they talk about emerge. Specifically, the paper reports the investigation activity we performed to demonstrate the suitability of our idea. To perform the investigation, we developed an investigation framework that exploits various patterns for extracting features from within messages (labeled with topical classes) in conjunction with the mostly-used classifiers for text classification problems. By means of the investigation framework, we were able to perform a large pool of experiments, that allowed us to evaluate all the combinations of feature patterns with classifiers. By means of a cost-benefit function called “Suitability”, that combines accuracy with execution time, we were able to demonstrate that a technique for discovering topics from within messages suitable for the application context is available.

Highlights

  • Micro-blogs have become widely-used online platforms for sharing ideas, political views, emotions and so on

  • The proposed approach fetched and pre-processed tweets related to vaccine and applied Support Vector Machines (SVM) to perform classification of tweets and achieved an accuracy of 64.84%, that is acceptable but not very good

  • We have posed the basic brick towards the extension of micro-blog user interfaces with a new functionality: a tool to recommend users with other users to follow on the basis of topics their message talk about

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Summary

Introduction

Micro-blogs have become widely-used online platforms for sharing ideas, political views, emotions and so on. One very famous micro-blog is Twitter: it is an online social network that allows users to publish short sentences; every day, millions of messages ( called tweets) concerning a very large variety of topics are published (or posted) by users. According to [1], Twitter is a famous micro-blogging site where more than 313 million users from all over the world are active monthly. Tweets are analyzed to find out political friends [8], so this implies that texts are analyzed to detect their political polarity.

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