Host: The Japanese Society for Artificial Intelligence
Name : The 27th Annual Conference of the Japanese Society for Artificial Intelligence, 2013
Number : 27
Location : [in Japanese]
Date : June 04, 2013 - June 07, 2013
Expression of emotion, namely affect, is an important part of natural language. For a text-based affect prediction system using supervised learning algorithms, quality of training data is critical to its performance. This paper explores some methods for estimating multiple affects from multi-affect annotations obtained by crowdsourcing, taking into consideration relationships among the affects.