SocialVec: Social Entity Embeddings

11/05/2021
by   Nir Lotan, et al.
0

This paper introduces SocialVec, a general framework for eliciting social world knowledge from social networks, and applies this framework to Twitter. SocialVec learns low-dimensional embeddings of popular accounts, which represent entities of general interest, based on their co-occurrences patterns within the accounts followed by individual users, thus modeling entity similarity in socio-demographic terms. Similar to word embeddings, which facilitate tasks that involve text processing, we expect social entity embeddings to benefit tasks of social flavor. We have learned social embeddings for roughly 200,000 popular accounts from a sample of the Twitter network that includes more than 1.3 million users and the accounts that they follow, and evaluate the resulting embeddings on two different tasks. The first task involves the automatic inference of personal traits of users from their social media profiles. In another study, we exploit SocialVec embeddings for gauging the political bias of news sources in Twitter. In both cases, we prove SocialVec embeddings to be advantageous compared with existing entity embedding schemes. We will make the SocialVec entity embeddings publicly available to support further exploration of social world knowledge as reflected in Twitter.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
06/28/2023

Social World Knowledge: Modeling and Applications

Social world knowledge is a key ingredient in effective communication an...
research
05/17/2016

Digital Stylometry: Linking Profiles Across Social Networks

There is an ever growing number of users with accounts on multiple socia...
research
05/12/2019

The Secret Lives of Names? Name Embeddings from Social Media

Your name tells a lot about you: your gender, ethnicity and so on. It ha...
research
04/06/2023

BotTriNet: A Unified and Efficient Embedding for Social Bots Detection via Metric Learning

A persistently popular topic in online social networks is the rapid and ...
research
09/08/2018

Lost in the Digital Wild: Hiding Information in Digital Activities

This paper presents a new general framework of information hiding, in wh...
research
03/22/2022

A Method for Estimating Individual Socioeconomic Status of Twitter Users

The rise of social media and computational social science (CSS) has open...
research
01/28/2022

Boosting Entity Mention Detection for Targetted Twitter Streams with Global Contextual Embeddings

Microblogging sites, like Twitter, have emerged as ubiquitous sources of...

Please sign up or login with your details

Forgot password? Click here to reset