On the Efficiency of the Information Networks in Social Media
Mahmoudreza Babaei, Przemyslaw A. Grabowicz, Isabel Valera, Krishna P., Gummadi, Manuel Gomez-Rodriguez

TL;DR
This paper introduces a computational framework to measure social media users' efficiency in selecting information sources, revealing sub-optimal behaviors influenced by network formation mechanisms and proposing algorithms for improvement.
Contribution
The work defines three novel efficiency metrics for social media information acquisition and demonstrates their application to Twitter, uncovering factors behind inefficiency and ways to enhance user performance.
Findings
Twitter users are generally inefficient at acquiring information.
Efficiency varies between popular and non-popular information.
A heuristic algorithm can improve user efficiency significantly.
Abstract
Social media sites are information marketplaces, where users produce and consume a wide variety of information and ideas. In these sites, users typically choose their information sources, which in turn determine what specific information they receive, how much information they receive and how quickly this information is shown to them. In this context, a natural question that arises is how efficient are social media users at selecting their information sources. In this work, we propose a computational framework to quantify users' efficiency at selecting information sources. Our framework is based on the assumption that the goal of users is to acquire a set of unique pieces of information. To quantify user's efficiency, we ask if the user could have acquired the same pieces of information from another set of sources more efficiently. We define three different notions of efficiency --…
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