LDPP at the FinNLP-2022 ERAI task: Determinantal point processes and variational auto-encoders for identifying high-quality opinions from a pool of social media posts
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Published Version
Date
2022-12-08
Authors
Trust, Paul
Minghim, Rosane
Journal Title
Journal ISSN
Volume Title
Publisher
Association for Computational Linguistics
Published Version
Abstract
Social media and online forums have made it easier for people to share their views and opinions on various topics in society. In this paper, we focus on posts discussing investment related topics. When it comes to investment , people can now easily share their opinions about online traded items and also provide rationales to support their arguments on social media. However, there are millions of posts to read with potential of having some posts from amateur investors or completely unrelated posts. Identifying the most important posts that could lead to higher maximal potential profit (MPP) and lower maximal loss for investment is not a trivial task. In this paper, propose to use determinantal point processes and variational autoencoders to identify high quality posts from the given rationales. Experimental results suggest that our method mines quality posts compared to random selection and also latent variable modeling improves improves the quality of selected posts.
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Keywords
Investment , Social media , Maximal potential profit
Citation
Trust, P. and Minghim, R. (2022) 'LDPP at the FinNLP-2022 ERAI task: Determinantal point processes and variational auto-encoders for identifying high-quality opinions from a pool of social media posts', Proceedings of the Fourth Workshop on Financial Technology and Natural Language Processing (FinNLP), pp. 136-140, Vienna, Austria, 23-25 July. Available at: https://aclanthology.org/2022.finnlp-1.18/ (Accessed: 21 February 2023)