Publication | Open Access
FAST: Financial News and Tweet Based Time Aware Network for Stock Trading
36
Citations
54
References
2021
Year
Unknown Venue
EngineeringLearning To RankBusiness AnalyticsJournalismText MiningStock TradingSocial MediaProfitable Trading StrategiesData ScienceAlgorithmic TradingQuantitative ManagementEnglish TweetsHigh-frequency TradingPredictive AnalyticsQuantitative FinanceAccountingKnowledge DiscoveryTrading ModelFinancial NewsTime Aware NetworkFinanceAutomated TradingBusinessStock Market Prediction
Designing profitable trading strategies is complex as stock movements are highly stochastic; the market is influenced by large volumes of noisy data across diverse information sources like news and social media. Prior work mostly treats stock movement prediction as a regression or classification task and is not directly optimized towards profit-making. Further, they do not model the fine-grain temporal irregularities in the release of vast volumes of text that the market responds to quickly. Building on these limitations, we propose a novel hierarchical, learning to rank approach that uses textual data to make time-aware predictions for ranking stocks based on expected profit. Our approach outperforms state-of-the-art methods by over 8% in terms of cumulative profit and risk-adjusted returns in trading simulations on two benchmarks: English tweets and Chinese financial news spanning two major stock indexes and four global markets. Through ablative and qualitative analyses, we build the case for our method as a tool for daily stock trading.
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