2023
DOI: 10.20944/preprints202302.0004.v1
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Online Hybrid Neural Network for Stock Prices Prediction: A Case Study of High-frequency Stock Trading in China Market

Abstract: Time series data having low signal-to-noise ratio, non-stationarity and non-linearity are commonly seen in high-frequency stock trading, where the objective is to increase the likelihood of profit by taking advantage of tiny discrepancies in prices and trading on them quickly and in huge quantities. For this purpose, it is essential to apply a trading method that is capable of fast and accurate prediction from such time series data. In this paper, we develop an online time series forecasting method for … Show more

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“…Real-time data, including stock prices and trading volumes, are crucial for investment decisionmaking and can significantly impact investment profitability [34]. Timely access to accurate stock prices and trading volumes is essential for making profitable investment decisions [35], [36] .…”
Section: Profitabilitymentioning
confidence: 99%
“…Real-time data, including stock prices and trading volumes, are crucial for investment decisionmaking and can significantly impact investment profitability [34]. Timely access to accurate stock prices and trading volumes is essential for making profitable investment decisions [35], [36] .…”
Section: Profitabilitymentioning
confidence: 99%