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∑MathIntermediate

Kronecker Product & Vec Operator

The Kronecker product A ⊗ B expands a small matrix into a larger block matrix by multiplying every entry of A with the whole matrix B.

#kronecker product#vec operator#block matrix+12
∑MathIntermediate

Matrix Calculus Fundamentals

Matrix calculus extends single-variable derivatives to matrices so we can differentiate functions built from matrix multiplications, traces, and norms.

#matrix calculus
Advanced
Filtering by:
#kronecker product
#frobenius norm
#trace trick
+12
∑MathIntermediate

Tensor Operations

A tensor is a multi-dimensional array that generalizes scalars (0-D), vectors (1-D), and matrices (2-D) to higher dimensions.

#tensor#multi-dimensional array#broadcasting+12