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Norm variety


In mathematics, a norm variety is a particular type of algebraic variety V over a field F, introduced for the purposes of algebraic K-theory by Voevodsky. The idea is to relate Milnor K-theory of F to geometric objects V, having function fields F(V) that 'split' given 'symbols' (elements of Milnor K-groups).

The formulation is that p is a given prime number, different from the characteristic of F, and a symbol is the class mod p of an element

:{a_1, \dots, a_n}\

of the n-th Milnor K-group. A field extension is said to split the symbol, if its image in the K-group for that field is 0.

The conditions on a norm variety V are that V is irreducible and a non-singular complete variety. Further it should have dimension d equal to

:p^{n - 1} - 1.\

The key condition is in terms of the d-th Newton polynomial s**d, evaluated on the (algebraic) total Chern class of the tangent bundle of V. This number

:s_d(V)\

should not be divisible by p2, it being known it is divisible by p.

Examples

These include (n = 2) cases of the Severi–Brauer variety and (p = 2) Pfister forms. There is an existence theorem in the general case (paper of Markus Rost cited).

References

References

  1. Suslin, Andrei. (July 2006). "Norm varieties". Journal of Pure and Applied Algebra.
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