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Deep Learning A-Z™: Artificial Neural Networks (ANN) - How do Neural Networks Learn
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Deep Learning A-Z™: Artificial Neural Networks (ANN) - How do Neural Networks Learn
1.
© SuperDataScienceDeep Learning
A-Z
2.
© SuperDataScienceDeep Learning
A-Z
3.
© SuperDataScienceDeep Learning
A-Z y Input value 1 Input value 2 Input value m X1 X2 Xm w1 w2 wm Output value y Actual value ŷ
4.
© SuperDataScienceDeep Learning
A-Z Input value 1 Input value 2 Input value m ŷ X1 X2 Xm w1 w2 wm Output value y Actual value C = ½(ŷ- y)2 ŷ y C
5.
© SuperDataScienceDeep Learning
A-Z Input value 1 Input value 2 Input value m Output value Actual value X1 X2 Xm w1 w2 wm ŷ y ŷ y C
6.
© SuperDataScienceDeep Learning
A-Z Input value 1 Input value 2 Input value m X1 X2 Xm w1 w2 wm Output value Actual value ŷ y C = ½(ŷ- y)2 ŷ y C
7.
© SuperDataScienceDeep Learning
A-Z Input value 1 Input value 2 Input value m X1 X2 Xm w1 w2 wm Output value Actual value ŷ y C = ½(ŷ- y)2 ŷ y C
8.
© SuperDataScienceDeep Learning
A-Z Input value 1 Input value 2 Input value m X1 X2 Xm w1 w2 wm Output value Actual value ŷ y C = ½(ŷ- y)2 ŷ y C
9.
© SuperDataScienceDeep Learning
A-Z Input value 1 Input value 2 Input value m X1 X2 Xm w1 w2 wm Output value Actual value ŷ y C = ½(ŷ- y)2 ŷ y C
10.
© SuperDataScienceDeep Learning
A-Z Input value 1 Input value 2 Input value m X1 X2 Xm w1 w2 wm Output value Actual value ŷ y C = ½(ŷ- y)2 ŷ y C
11.
© SuperDataScienceDeep Learning
A-Z Input value 1 Input value 2 Input value m X1 X2 Xm w1 w2 wm Output value Actual value ŷ y C = ½(ŷ- y)2 ŷ y C
12.
© SuperDataScienceDeep Learning
A-Z C = ∑ ½(ŷ- y)2 X1 X2 Xm w1 w2 wm ŷ y X1 X2 Xm w1 w2 wm ŷ y X1 X2 Xm w1 w2 wm ŷ y X1 X2 Xm w1 w2 wm ŷ y X1 X2 Xm w1 w2 wm ŷ y X1 X2 Xm w1 w2 wm ŷ y X1 X2 Xm w1 w2 wm ŷ y X1 X2 Xm w1 w2 wm ŷ y ŷ y C ŷ y ŷ y ŷ y ŷ y ŷ y ŷ y ŷ y Adjust w1, w2, w3
13.
© SuperDataScienceDeep Learning
A-Z A list of cost functions used in neural networks, alongside applications CrossValidated (2015) Link: http://stats.stackexchange.com/questions/154879/a-list-of-cost-functions- used-in-neural-networks-alongside-applications Additional Reading: