2023
DOI: 10.1007/s42521-023-00089-7
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Dynamic and context-dependent stock price prediction using attention modules and news sentiment

Abstract: The growth of machine-readable data in finance, such as alternative data, requires new modeling techniques that can handle non-stationary and non-parametric data. Due to the underlying causal dependence and the size and complexity of the data, we propose a new modeling approach for financial time series data, the αt-RIM (recurrent independent mechanism). This architecture makes use of key-value attention to integrate top-down and bottom-up information in a context-dependent and dynamic way. To model the data i… Show more

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