Skip to content

Data and code to create a news discovery tool for science reporters.

License

Notifications You must be signed in to change notification settings

nishalsach/SciNewsDiscovery

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

5 Commits
 
 
 
 
 
 

Repository files navigation

Computational News Discovery in Science Journalism

Abstract

Science and technology journalists today face challenges in finding newsworthy leads due to increased workloads, reduced resources, and expanding scientific publishing ecosystems. Given this context, we explore computational methods to aid these journalists' news discovery in terms of time-efficiency and agency. In particular, we prototyped three computational information subsidies into an interactive tool that we used as a probe to better understand how such a tool may offer utility or more broadly shape the practices of professional science journalists. Our findings highlight central considerations around science journalists' agency, context, and responsibilities that such tools can influence and could account for in design. Based on this, we suggest design opportunities for greater and longer-term user agency; incorporating contextual, personal and collaborative notions of newsworthiness; and leveraging flexible interfaces and generative models. Overall, our findings contribute a richer view of the sociotechnical system around computational news discovery tools, and suggest ways to improve such tools to better support the practices of science journalists.

Paper

You can find the ACM version of our paper here and the preprint version is available here.

User Interface

This is what the UI looks like ...

This is what the UI can do ...

Data

We crawled ...

Code

...

Citation

If you use our data or code in your own projects, please cite: