Linear Transformations and Polynomials
Linear Transformations and Polynomials ... All of the results that we prove in the present chapter for canonical forms of operators also follow from the development in Chapter 8. ... be chosen to have degree at most n (this is the famous Cayley-Hamilton theo-rem).
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