Linear Transformations
In this section, we will introduce linear transformations. Linear transformations are the backbone of modeling with ANNs. In fact, all the processes of ANN modeling can be thought of as a series of linear transformations. The working components of linear transformations are scalars, vectors, matrices, and tensors. Operations such as addition
, transposition
, and multiplication
are performed on these components.
Scalars, Vectors, Matrices, and Tensors
Scalars
, vectors
, matrices
, and tensors
are the actual components of any deep learning model. Having a fundamental understanding of how to utilize these components, as well as the operations that can be performed on them, is key to understanding how ANNs operate. Scalars
, vectors
, and matrices
are examples of the general entity known as a tensor
, so the term tensors
may be used throughout this chapter but may refer to any component. Scalars
, vectors
, and matrices
refer to tensors
with a specific number...