Statement

The Eckart-Young Theorem provides the optimal low-rank approximation of a matrix in terms of the Singular Value Decomposition (SVD). It states:

Let with singular value decomposition , where is the diagonal matrix of singular values. For any , the rank- approximation that minimizes the Frobenius Norm or Spectral Norm of the error satisfies:

where and are the th left and right singular vectors, respectively.

Equivalently:

where , , and are obtained by truncating , , and to their first components.

Optimality

  1. Frobenius Norm:
    The rank- approximation minimizes the Frobenius norm of the error:

  2. Spectral Norm:
    also minimizes the spectral norm of the error: