Talk
Forecasting financial time series using deep learning techniques
Anabela Costa (Costa, A.); Filipe R. Ramos (Ramos, F.R.); Vivaldo Mendes (Mendes, V.); Vivaldo Mendes (Mendes, V.);
Event Title
IO2019 - XX Congresso da APDIO 2019
Year (definitive publication)
2019
Language
English
Country
Portugal
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Times Cited: 6

(Last checked: 2024-11-18 11:30)

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Abstract
In this article, we propose the use of recurrent neural networks based on long short-term memory (LSTM) architecture in order to forecast financial time series. Artificial neural networks have proven to be efficient in forecasting financial time series. In particular, recurrent neural networks have been able to store past inputs to produce the currently desired output, which justifies their application in financial time series prediction. First, we study the main features of the Standard and Poor’s 500 index, S&P500, such as the linearity, stationarity, descriptive statistics, Hurst exponents, among others. Secondly, we train several types of recurrent neural networks for the S&P500 index and use the models to make short-term forecasts. Finally, we compare the out-of-sample forecast error (MAE) for the employed models, in order to conclude about the forecasting performance
Acknowledgements
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Keywords
Time-series,Recurrent Neural Network,LSTM,Forecasting