Social World Knowledge: Modeling and Applications

06/28/2023
by   Nir Lotan, et al.
0

Social world knowledge is a key ingredient in effective communication and information processing by humans and machines alike. As of today, there exist many knowledge bases that represent factual world knowledge. Yet, there is no resource that is designed to capture social aspects of world knowledge. We believe that this work makes an important step towards the formulation and construction of such a resource. We introduce SocialVec, a general framework for eliciting low-dimensional entity embeddings from the social contexts in which they occur in social networks. In this framework, entities correspond to highly popular accounts which invoke general interest. We assume that entities that individual users tend to co-follow are socially related, and use this definition of social context to learn the entity embeddings. Similar to word embeddings which facilitate tasks that involve text semantics, we expect the learned social entity embeddings to benefit multiple tasks of social flavor. In this work, we elicited the social embeddings of roughly 200K entities from a sample of 1.3M Twitter users and the accounts that they follow. We employ and gauge the resulting embeddings on two tasks of social importance. First, we assess the political bias of news sources in terms of entity similarity in the social embedding space. Second, we predict the personal traits of individual Twitter users based on the social embeddings of entities that they follow. In both cases, we show advantageous or competitive performance using our approach compared with task-specific baselines. We further show that existing entity embedding schemes, which are fact-based, fail to capture social aspects of knowledge. We make the learned social entity embeddings available to the research community to support further exploration of social world knowledge and its applications.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/05/2021

SocialVec: Social Entity Embeddings

This paper introduces SocialVec, a general framework for eliciting socia...
research
02/06/2019

Word Embeddings for Entity-annotated Texts

Many information retrieval and natural language processing tasks due to ...
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
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
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...
research
10/25/2019

Fast and Accurate Knowledge-Aware Document Representation Enhancement for News Recommendations

Knowledge graph contains well-structured external information and has sh...
research
10/05/2020

LEAPME: Learning-based Property Matching with Embeddings

Data integration tasks such as the creation and extension of knowledge g...

Please sign up or login with your details

Forgot password? Click here to reset