In the fields of machine learning, the theory of computation, and random matrix theory, a probability distribution over vectors is said to be in isotropic position if its covariance matrix is equal to the identity matrix.

Formal definitions edit

Let   be a distribution over vectors in the vector space  . Then   is in isotropic position if, for vector   sampled from the distribution,

 

A set of vectors is said to be in isotropic position if the uniform distribution over that set is in isotropic position. In particular, every orthonormal set of vectors is isotropic.

As a related definition, a convex body   in   is called isotropic if it has volume  , center of mass at the origin, and there is a constant   such that

 
for all vectors   in  ; here   stands for the standard Euclidean norm.

See also edit

References edit

  • Rudelson, M. (1999). "Random Vectors in the Isotropic Position". Journal of Functional Analysis. 164 (1): 60–72. arXiv:math/9608208. doi:10.1006/jfan.1998.3384. S2CID 7652247.