Designing and Evaluating Interfaces that Highlight News Coverage
Diversity Using Discord Questions
- URL: http://arxiv.org/abs/2302.08997v1
- Date: Fri, 17 Feb 2023 16:59:31 GMT
- Title: Designing and Evaluating Interfaces that Highlight News Coverage
Diversity Using Discord Questions
- Authors: Philippe Laban, Chien-Sheng Wu, Lidiya Murakhovs'ka, Xiang 'Anthony'
Chen, Caiming Xiong
- Abstract summary: This paper shows that navigating large source collections for a news story can be challenging without further guidance.
We design three interfaces -- the Annotated Article, the Recomposed Article, and the Question Grid -- aimed at accompanying news readers in discovering coverage diversity while they read.
- Score: 84.55145223950427
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Modern news aggregators do the hard work of organizing a large news stream,
creating collections for a given news story with tens of source options. This
paper shows that navigating large source collections for a news story can be
challenging without further guidance. In this work, we design three interfaces
-- the Annotated Article, the Recomposed Article, and the Question Grid --
aimed at accompanying news readers in discovering coverage diversity while they
read. A first usability study with 10 journalism experts confirms the designed
interfaces all reveal coverage diversity and determine each interface's
potential use cases and audiences. In a second usability study, we developed
and implemented a reading exercise with 95 novice news readers to measure
exposure to coverage diversity. Results show that Annotated Article users are
able to answer questions 34% more completely than with two existing interfaces
while finding the interface equally easy to use.
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