paint-brush
Deep Learning: Feedforward Neural Networks Explainedby@NKumar
15,583 reads
15,583 reads

Deep Learning: Feedforward Neural Networks Explained

by NiranjanKumar9mApril 1st, 2019
Read on Terminal Reader
Read this story w/o Javascript
tldt arrow

Too Long; Didn't Read

Feedforward neural networks are also known as <strong>Multi-layered Network of Neurons</strong> (MLN). These networks of models are called feedforward because the information only travels forward in the neural network, through the input nodes then through the hidden layers (single or many layers) and finally through the output nodes. In MLN there are no feedback connections such that the output of the network is fed back into itself. These networks are represented by a combination of many simpler models(sigmoid neurons).

Company Mentioned

Mention Thumbnail
featured image - Deep Learning: Feedforward Neural Networks Explained
NiranjanKumar HackerNoon profile picture
NiranjanKumar

NiranjanKumar

@NKumar

DeepLearning Enthusiast. Data Science Writer @marktechpost.com

About @NKumar
LEARN MORE ABOUT @NKUMAR'S
EXPERTISE AND PLACE ON THE INTERNET.
L O A D I N G
. . . comments & more!

About Author

NiranjanKumar HackerNoon profile picture
NiranjanKumar@NKumar
DeepLearning Enthusiast. Data Science Writer @marktechpost.com

TOPICS

THIS ARTICLE WAS FEATURED IN...

Permanent on Arweave
Read on Terminal Reader
Read this story in a terminal
 Terminal
Read this story w/o Javascript
Read this story w/o Javascript
 Lite