Batres-Estrada, 2015 - Google Patents
Deep learning for multivariate financial time seriesBatres-Estrada, 2015
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- 8726665273084118954
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- Batres-Estrada B
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Deep learning is a framework for training and modelling neural networks which recently have surpassed all conventional methods in many learning tasks, prominently image and voice recognition. This thesis uses deep learning algorithms to forecast financial data. The …
- 230000001537 neural 0 abstract description 125
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