Between News and History: Identifying Networked Topics of Collective Attention on Wikipedia

11/14/2022
by   Patrick Gildersleve, et al.
0

The digital information landscape has introduced a new dimension to understanding how we collectively react to new information and preserve it at the societal level. This, together with the emergence of platforms such as Wikipedia, has challenged traditional views on the relationship between current events and historical accounts of events, with an ever-shrinking divide between "news" and "history". Wikipedia's place as the Internet's primary reference work thus poses the question of how it represents both traditional encyclopaedic knowledge and evolving important news stories. In other words, how is information on and attention towards current events integrated into the existing topical structures of Wikipedia? To address this we develop a temporal community detection approach towards topic detection that takes into account both short term dynamics of attention as well as long term article network structures. We apply this method to a dataset of one year of current events on Wikipedia to identify clusters distinct from those that would be found solely from page view time series correlations or static network structure. We are able to resolve the topics that more strongly reflect unfolding current events vs more established knowledge by the relative importance of collective attention dynamics vs link structures. We also offer important developments by identifying and describing the emergent topics on Wikipedia. This work provides a means of distinguishing how these information and attention clusters are related to Wikipedia's twin faces of encyclopaedic knowledge and current events – crucial to understanding the production and consumption of knowledge in the digital age.

READ FULL TEXT

page 11

page 12

research
05/23/2021

Modeling Collective Anticipation and Response on Wikipedia

The dynamics of popularity in online media are driven by a combination o...
research
09/19/2019

Characterizing Collective Attention via Descriptor Context in Public Discussions of Crisis Events

Collective attention is central to the spread of real world news and the...
research
03/26/2019

Detecting and Gauging Impact on Wikipedia Page Views

Understanding how various external campaigns or events affect readership...
research
10/01/2017

Wikipedia graph mining: dynamic structure of collective memory

Wikipedia is the biggest encyclopedia ever created and the fifth most vi...
research
12/15/2021

Event Linking: Grounding Event Mentions to Wikipedia

Comprehending an article requires understanding its constituent events. ...
research
09/17/2020

What if we had no Wikipedia? Domain-independent Term Extraction from a Large News Corpus

One of the most impressive human endeavors of the past two decades is th...
research
03/30/2018

Build up of a subject classification system from collective intelligence

Systematized subject classification is essential for funding and assessi...

Please sign up or login with your details

Forgot password? Click here to reset