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Deep learning applied to cryptocurrencies prices one step forecast

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Figure

Figure 2.1 Comparison  between artificial  intelligence, machine learning _ and  deep learning
Figure 2.4: Gradient  descent algorithm. [69].
Figure 2.6: Artificial  neuron. [74].
Figure 2.8: Rectified  Linear Activation  Function.
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