Botometer
Principal Investigators: Filippo Menczer & Alessandro Flammini (IUB Informatics)
Botometer, formerly called BotOrNot, is a machine-learning algorithm that rates how likely a Twitter account is to be a bot, based on tens of thousands of labeled examples. Twitter users can log in and check the Botometer scores for their followers and other Twitter users. Botometer does not retain any data other than the account ID, scores, and any feedback optionally provided by the user. Technical details on Botometer's features, training, machine learning model, and accuracy can be found in our peer-reviewed publications.
Botometer is one of many tools in Indiana University's Observatory on Social Media (OSoMe). Mac app store catalina download.
IUNI is a joint partner on Botometer, along with CNetS, and IUNI's IT team helped create the Botometer tool and continues to enhance it. Emilio Ferrara (former IUNI research scientist), Onur Varol (former IUB PhD student), and current IUB PhD students Clayton Davis and Kevin Yang were all critical in the development of Botometer.
Bot Detector Tf2
Description: DeBot is real-time bot detection system. The project started on Feb 2015 and it has been collecting data since Aug 2015. High correlation in activities among users in social media is unusual and can be used as an indicator of bot behavior. DeBot identifies such bots in Twitter network. Botometer is a machine learning algorithms that considers more than a thousand features about an account and its activity to estimate the likelihood that the account is automated. We consider accounts with bot score above a high threshold to identify content generated by likely social bots. How is the BEV calculated?
Visit: https://botometer.iuni.iu.edu