Each day, we face an information overload with claims, facts and figures flowing across screens faster than we can check them. This is fertile ground for inaccurate reports and “fake news” to abound. When presented with seemingly limitless sources and channels of information, it’s hard to know who and what to trust in relation to our health or our governments. Never has the ability to critically assess and communicate information been more important. So, what can universities to do equip students, staff and the wider public with the tools and knowledge they need to understand the complex nature of evidence, invite varied perspectives and seek the truth?
From the COVID-19 pandemic to the war in Ukraine, misinformation is rife worldwide. Many tools have been designed to help people spot misinformation. The problem with most of them is how hard they are to deliver at scale.
But we may have found a solution. In our new study we designed and tested five short videos that “prebunk” viewers, in order to inoculate them from the deceptive and manipulative techniques often used online to mislead people. Our study is the largest of its kind and the first to test this kind of intervention on YouTube. Five million people were shown the videos, of which one million watched them.
A satirical website that claims to offer protesters-for-hire has ignited conspiracy theories among far-right Facebook groups suggesting the current protest actions in the United States are staged…
For bureaucratic reasons, a colleague of mine had to print, sign, scan and send by email a high number of pages. To save trees, ink, time, and to stick it...
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