What is a Neural Network? (C1W1L02)  Summary and Q&A
TL;DR
Deep learning networks are used to predict outputs based on input data, and can be trained to accurately map input to output in supervised learning settings.
Key Insights
 🚂 Deep learning networks are used for predicting outputs based on input data, and can be trained in supervised learning settings.
 🔂 Basic neural networks consist of single neurons that apply linear functions to predict outputs.
 🌥️ Larger neural networks can incorporate multiple features to improve prediction accuracy.
Transcript
the term deep learning refers to training neural network sometimes very large neural networks so what exactly is in your network in this video let's try to give you some of the basic intuitions let's start with a housing price prediction example let's say you have a data set with six houses so you know the size of holders in square feet or square m... Read More
Questions & Answers
Q: What is deep learning?
Deep learning involves training neural networks to predict outputs based on input data. It is used in various applications, including image recognition and natural language processing.
Q: How does a basic neural network work?
In a basic neural network, input data is processed by a single neuron, which applies a linear function and outputs the predicted value. The neuron can have a rectified linear function, which ensures nonnegativity in predictions.
Q: How can multiple features be incorporated into a neural network?
By stacking multiple neurons together, each representing a different feature, a larger neural network can be created. Each neuron takes as input all the features and outputs the predicted value based on those inputs.
Q: How does a neural network learn to accurately map input to output?
By training the neural network with a large number of examples of inputoutput pairs, the network can learn the relationships between the inputs and outputs. It adjusts its internal weights to minimize the prediction error and improve accuracy.
Q: What is deep learning?
Deep learning involves training neural networks to predict outputs based on input data. It is used in various applications, including image recognition and natural language processing.
More Insights

Deep learning networks are used for predicting outputs based on input data, and can be trained in supervised learning settings.

Basic neural networks consist of single neurons that apply linear functions to predict outputs.

Larger neural networks can incorporate multiple features to improve prediction accuracy.

Neural networks learn to accurately map inputs to outputs by adjusting their internal weights through training.
Summary & Key Takeaways

Deep learning refers to training neural networks to predict outputs based on input data.

A basic example is predicting house prices based on house size.

Larger neural networks can incorporate multiple features, such as number of bedrooms, zip code, and walkability, to predict house prices.