Gopal Sridhar
2018
Implicit and Explicit Aspect Extraction in Financial Microblogs
Thomas Gaillat
|
Bernardo Stearns
|
Gopal Sridhar
|
Ross McDermott
|
Manel Zarrouk
|
Brian Davis
Proceedings of the First Workshop on Economics and Natural Language Processing
This paper focuses on aspect extraction which is a sub-task of Aspect-based Sentiment Analysis. The goal is to report an extraction method of financial aspects in microblog messages. Our approach uses a stock-investment taxonomy for the identification of explicit and implicit aspects. We compare supervised and unsupervised methods to assign predefined categories at message level. Results on 7 aspect classes show 0.71 accuracy, while the 32 class classification gives 0.82 accuracy for messages containing explicit aspects and 0.35 for implicit aspects.