4.7 Article

A Multimodal Event-Driven LSTM Model for Stock Prediction Using Online News

Journal

IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING
Volume 33, Issue 10, Pages 3323-3337

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TKDE.2020.2968894

Keywords

Companies; Media; Tensors; Stock markets; Predictive models; Solid modeling; Computational modeling; Stock prediction; tensor; multimodality; deep learning; LSTM

Funding

  1. National Natural Science Foundation of China (NSFC) [71671141, 71873108]
  2. Fundamental Research Funds for the Central Universities [JBK 171113, JBK 170505, JBK 1806003]
  3. Sichuan Province Science and Technology Department [2019YJ0250]
  4. Financial Innovation Center of the Southwestern University of Finance and Economics
  5. U.S. National Science Foundation at the University of Arizona [ACI-1443019, CMMI-1442116]

Ask authors/readers for more resources

In financial markets, it is believed that market information affects stock movements, creating a multimodal challenge; handling this challenge involves addressing data mode interactions and sampling time heterogeneity; previous research assumed news affects specific stocks, but in reality impacts related stocks.
In finance, it is believed that market information, namely, fundamentals and news information, affects stock movements. Such media-aware stock movements essentially comprise a multimodal problem. Two unique challenges arise in processing these multimodal data. First, information from one data mode will interact with information from other data modes. A common strategy is to concatenate various data modes into one compound vector; however, this strategy ignores the interactions among different modes. The second challenge is the heterogeneity of the data in terms of sampling time. Specifically, fundamental data consist of continuous values sampled at fixed time intervals, whereas news information emerges randomly. This heterogeneity can cause valuable information to be partially missing or can distort the feature spaces. In addition, the study of media-aware stock movements in previous work has focused on the one-to-one problem, in which it is assumed that news affects only the performance of the stocks mentioned in the reports. However, news articles also impact related stocks and cause stock co-movements. In this article, we propose a tensor-based event-driven LSTM model to address these challenges. Experiments performed on the China securities market demonstrate the superiority of the proposed approach over state-of-the-art algorithms, including AZFinText, eMAQT, and TeSIA.

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