Predicting the Industry of Users on Social Media

12/24/2016
by   Konstantinos Pappas, et al.
0

Automatic profiling of social media users is an important task for supporting a multitude of downstream applications. While a number of studies have used social media content to extract and study collective social attributes, there is a lack of substantial research that addresses the detection of a user's industry. We frame this task as classification using both feature engineering and ensemble learning. Our industry-detection system uses both posted content and profile information to detect a user's industry with 64.3 significantly outperforming the majority baseline in a taxonomy of fourteen industry classes. Our qualitative analysis suggests that a person's industry not only affects the words used and their perceived meanings, but also the number and type of emotions being expressed.

READ FULL TEXT
research
07/15/2022

Yourfeed: Towards open science and interoperable systems for social media

Existing social media platforms (SMPs) make it incredibly difficult for ...
research
04/10/2017

Matching Media Contents with User Profiles by means of the Dempster-Shafer Theory

The media industry is increasingly personalizing the offering of content...
research
03/10/2021

On spatial variation in the detectability and density of social media user protest supporters

Although much has been published regarding street protests on social med...
research
07/10/2019

Exploiting user-frequency information for mining regionalisms from Social Media texts

The task of detecting regionalisms (expressions or words used in certain...
research
02/12/2016

Identifying Structures in Social Conversations in NSCLC Patients through the Semi-Automatic extraction of Topical Taxonomies

The exploration of social conversations for addressing patient's needs i...
research
12/27/2018

The Clickbait Challenge 2017: Towards a Regression Model for Clickbait Strength

Clickbait has grown to become a nuisance to social media users and socia...
research
10/16/2020

Hit Song Prediction Based on Early Adopter Data and Audio Features

Billions of USD are invested in new artists and songs by the music indus...

Please sign up or login with your details

Forgot password? Click here to reset