Visualising My News Diet

On Sunday, at the Visu­al­ize Your Media Diet learn­ing lab at the Moz­ila Fest­ival ran by Nate Matias, Matt Stem­peck and Dan Schultz from the MIT Media Lab’s Cen­ter for Civic Media, the par­ti­cipants had to draw how would they like to visu­al­ise their media diet, then dis­cuss it.

Here is the sketch I made there on how I would like to visu­al­ise my news diet in order to under­stand not only the time spent with and the fre­quency of use of sev­eral channels/​formats, but also the actual nav­ig­a­tion rela­tion­ships, the way I dis­cover and I engage with the news.

The idea is that you can see on a timeline the fre­quency and dur­a­tion of what sources and types of news items you con­sume, and how they inter­re­late; for example, a tweet leads to an art­icle, then to a Hacker News art­icle, then I come back to the art­icle. Another Hacker News art­icle leads to con­tent cre­ation (com­ment, or share via tweet, etc.), other tweet might get just retweeted, etc.

If I would have other dimen­sions like sources, authors, top­ics, etc. I might be able in time to have an algorithm that mon­itor the usual sources will pre­dict what I might con­sume as news item, and only if I won’t actu­ally find it via the usual way, then notify me “you might have missed this art­icle, you usu­ally read this type of art­icle because…”.

Timeboxing the News

This Sat­urday at the Touch the News design chal­lenge at the Moz­illa Fest­ival, I was in team 6 with Heather Les­sonPeter O’ShaughnessyCarlo FrinolliNick SmithGavin McFar­land and Chris War­ring.

We focused on how people con­sume news on the iPad with regard to loc­a­tion, time of day and time avail­able to spend on news.

We dis­cussed on the needed changes in font sizes and lay­out needed for vari­ous read­ing pos­i­tions, dis­cussed Craig Mod’s Bib­lio­type art­icle (A List Apart: A Sim­pler page) and pro­to­type.

Then we dis­cussed how the news site could use time of day and loc­a­tion as inform­a­tion to learn from vari­ous user set­tings (font sizes, lay­out) to what cat­egor­ies of news the user is read­ing at home, work, in the morn­ing, etc. to adjust accord­ingly the sug­ges­tions of related articles.

The major issue we tackled with was: given a known time to spend with the iPad (while com­mut­ing, etc.) how do you choose what to read? How do you know what can be read in that time?

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