EPISODE · Aug 17, 2018 · 46 MIN
Algorithmic Detection of Fake News
from Data Skeptic · host Kyle Polich with guests Mike Tamir and Kai Shu
The scale and frequency with which information can be distributed on social media makes the problem of fake news a rapidly metastasizing issue. To do any content filtering or labeling demands an algorithmic solution. In today's episode, Kyle interviews Kai Shu and Mike Tamir about their independent work exploring the use of machine learning to detect fake news. Kai Shu and his co-authors published Fake News Detection on Social Media: A Data Mining Perspective, a research paper which both surveys the existing literature and organizes the structure of the problem in a robust way. Mike Tamir led the development of fakerfact.org, a website and Chrome/Firefox plugin which leverages machine learning to try and predict the category of a previously unseen web page, with categories like opinion, wiki, and fake news.
NOW PLAYING
Algorithmic Detection of Fake News
No transcript for this episode yet
Similar Episodes
May 11, 2026 ·66m
May 11, 2026 ·67m
May 5, 2026 ·4m
May 4, 2026 ·4m