A Temporal Recurrent Neural Network Approach to Detecting Market Anomaly Attacks
Title | A Temporal Recurrent Neural Network Approach to Detecting Market Anomaly Attacks |
Publication Type | Conference Paper |
Year of Publication | 2018 |
Authors | Huang, Yifan, Chung, Wingyan, Tang, Xinlin |
Conference Name | 2018 IEEE International Conference on Intelligence and Security Informatics (ISI) |
Date Published | Nov. 2018 |
Publisher | IEEE |
ISBN Number | 978-1-5386-7848-0 |
Keywords | anomaly detection, Artificial neural networks, Cognitive Hacking, Collaboration, commodities markets, deep learning approaches, feature extraction, financial market security, financial social media messages, financial stocks markets, learning (artificial intelligence), market anomaly attacks detection, Metrics, Neural Network Security, policy-based governance, pubcrawl, recurrent neural nets, recurrent neural network, Recurrent neural networks, resilience, Resiliency, security of data, Sequence Prediction, social media, Social network services, social networking (online), stock markets, temporal recurrent neural network approach, text sequence dependency, TRNN, Twitter, U.S. technology companies |
Abstract | In recent years, the spreading of malicious social media messages about financial stocks has threatened the security of financial market. Market Anomaly Attacks is an illegal practice in the stock or commodities markets that induces investors to make purchase or sale decisions based on false information. Identifying these threats from noisy social media datasets remains challenging because of the long time sequence in these social media postings, ambiguous textual context and the difficulties for traditional deep learning approaches to handle both temporal and text dependent data such as financial social media messages. This research developed a temporal recurrent neural network (TRNN) approach to capturing both time and text sequence dependencies for intelligent detection of market anomalies. We tested the approach by using financial social media of U.S. technology companies and their stock returns. Compared with traditional neural network approaches, TRNN was found to more efficiently and effectively classify abnormal returns. |
URL | https://ieeexplore.ieee.org/document/8587397 |
DOI | 10.1109/ISI.2018.8587397 |
Citation Key | huang_temporal_2018 |
- recurrent neural nets
- U.S. technology companies
- TRNN
- text sequence dependency
- temporal recurrent neural network approach
- stock markets
- social networking (online)
- Social network services
- social media
- Sequence Prediction
- security of data
- Resiliency
- resilience
- Recurrent neural networks
- recurrent neural network
- Anomaly Detection
- pubcrawl
- policy-based governance
- Neural Network Security
- Metrics
- market anomaly attacks detection
- learning (artificial intelligence)
- financial stocks markets
- financial social media messages
- financial market security
- feature extraction
- deep learning approaches
- commodities markets
- collaboration
- Cognitive Hacking
- Artificial Neural Networks