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Tensor Decomposition
The principles of matrix decomposition can be generalized to apply to high-order tensors. In machine learning, these tensor decompositions are utilized to discover underlying, low-dimensional structures in complex datasets that possess more than two axes, enabling the solution of advanced prediction problems.
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Tensor Decomposition
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Single Image Representation as a 3rd-Order Tensor
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Tensor Concatenation
Elementwise Tensor Operation
Tensor Element Summation
Tensor Class Interface Summary
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Tensor Initialization with Zeros
Tensor Initialization with Ones
Evenly Spaced Tensor Initialization
Random Tensor Initialization
Programmatic Construction of Tensors from Nested Lists
Tensor as a Software Object
Tensor Decomposition