FinSense: An Assistant System for Financial Journalists and Investors
Journal
WSDM 2021 - Proceedings of the 14th ACM International Conference on Web Search and Data Mining
Pages
882-885
Date Issued
2021
Author(s)
Abstract
This paper demonstrates FinSense, a system that improves the working efficiency of financial information processing. Given the draft of a financial news story, FinSense extracts the explicit-mentioned stocks and further infers the implicit stocks, providing insightful information for decision making. We propose a novel graph convolutional network model that performs implicit financial instrument inference toward the in-domain data. In addition, FinSense generates candidate headlines for the draft, reducing a significant amount of time in journalism production. The proposed system also provides assistance to investors to sort out the information in the financial news articles. ? 2021 Owner/Author.
Subjects
Convolutional neural networks; Decision making; Finance; Information retrieval; Websites; Convolutional networks; Financial news; Working efficiency; Data mining
Type
conference paper