Degenerations of algebras. José-Antonio de la Peña UNAM, México Advanced School and Conference on Homological and Geometrical Methods in Representation.

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Degenerations of algebras. José-Antonio de la Peña UNAM, México Advanced School and Conference on Homological and Geometrical Methods in Representation Theory January18- February 5, 2010.

Degenerations of algebras. Lecture 1. Table of contents. José-Antonio de la P eña

Degenerations of algebras. Lecture 1. Notation. José-Antonio de la P eña

Degenerations of algebras. Lecture 1. Notation: representations. José-Antonio de la P eña

Degenerations of algebras. Lecture 1. Basic geometric concepts. José-Antonio de la P eña

Examples Let k be the field of complex numbers C. Let A 2 be a two dimensional affine space over C. The polynomials ƒ in the ring k[x, y] can be viewed as complex valued functions on A 2 by evaluating ƒ at the points in A 2. Let S be the subset of k[x, y] containing a single element ƒ(x, y): The zero-locus of ƒ(x, y) the set of points in A 2 on which this function vanishes: it is the set of all pairs of complex numbers (x,y) such that y = 1 − x, known as a line. This is the set Z(ƒ): Thus the subset V = Z(ƒ) of A 2 is an algebraic set. The set V is not an empty set. It is irreducible, that is, it cannot be written as the union of two proper algebraic subsets. Let subset S of k[x, y] contain a single element g(x, y): The zero-locus of g(x, y), that is the set of points (x,y) such that x 2 + y 2 = 1, is a circle. The variety defined by is a cone. Hence the variety. is the intersection of a cone and a plane, therefore a conic section. Degenerations of algebras. Lecture 1. Basic geometric concepts.

Degenerations of algebras. Lecture 1. Geometric concepts: irreducibility.

Degenerations of algebras. Lecture 1. Example: commuting matrices. The fact that commuting matrices have a common eigenvector – and hence by induction stabilize a common flag and are simultaneously triangularizable -- can be interpreted as a result of the Nullstellensatz, as follows:flag and are simultaneously triangularizable -- can be interpreted as a result of the Nullstellensatz, as follows: commuting matrices A 1,…,A s form a commutative algebra k[A 1,…,A s ] over the polynomial ring k[x 1,…,x s ] the matrices satisfy various polynomials such as their minimal polynomials, which form a proper ideal (because they are not all zero, in which case the result is trivial); one might call this the characteristic ideal, by analogy with the characteristic polynomial. Define an eigenvector for a commutative algebra as a vector v such that x(v)= λ(v)x for a linear functional and for all x in A.λ Observe that a common eigenvector, as if v is a common eigenvector, meaning A i (v) = λ i v, then the functional is defined as (treating scalars as multiples of the identity matrix A 0 : = I, which has eigenvalue 1 for all vectors), and conversely an eigenvector for such a functional λ is a common eigenvector. Geometrically, the eigenvalue corresponds to the point in affine k-space with coordinates with respect to the basis given by A i. Then the existence of an eigenvalue λ is equivalent to the ideal generated by the A i being non-empty. Observe this proof generalizes the usual proof of existence of eigenvalues.

Degenerations of algebras. Lecture 1. Example: varieties of modules. José-Antonio de la P eña We consider the set of representatations of vector dimension (2,2,2). They satisfy the system of (polynomial!) equations: Th is is the intersection of 4 quadrics and dim mod A (2,2,2)=4. But this variety is not irreducible. Observe it contains two 4 dimensional affine spaces A 4, which are irreducible components. t 0 0 t 2 The map f: k  mod A (2,2,2), such that f(t)=, is polynomial 0 t t 0 in the coordinates, hence continuous in the Zariski topology. Observe that the lim t  0 f(t) is a semisimple module. =0

Degenerations of algebras. Lecture 1. Geometric concepts: regular map.

Degenerations of algebras. Lecture 1. Geometric concepts: variety of algebras.

Degenerations of algebras. Lecture 1. Geometric concepts: action of groups. José-Antonio de la P eña A an algebra and g in GL(n) A g has multiplication: a.b=gabg -1

Degenerations of algebras. Lecture 1. Geometric concepts: degenerations. José-Antonio de la P eña A B

Degenerations of algebras. Lecture 1. Geometric concepts: connectedness.

Degenerations of algebras. Lecture 1. Geometric concepts: generic structures.

Degenerations of algebras. Lecture 1. Describing Alg(n).

Degenerations of algebras. Lecture 1. Geometric concepts: Chevalley theorem. José-Antonio de la P eña

Degenerations of algebras. Lecture 1. Geometric concepts: upper semicontinouos

Degenerations of algebras. Lecture 1. Geometric concepts. José-Antonio de la P eña

Degenerations of algebras. Lecture 2. Cohomology and deformations. José-Antonio de la P eña

Degenerations of algebras. Lecture 2. Hochschild cohomology. José-Antonio de la P eña

semidirect product gl dim A=s, then for t>s we have H t (A)=0.

Degenerations of algebras. Lecture 2. Hochschild cohomology. José-Antonio de la P eña Case n=1 in detail: V Hom(V,V) Hom(V V, V) f (a b f(a b) ) a (x ax – xa) 0

Degenerations of algebras. Lecture 2.

Degenerations of algebras. Lecture 2. Hochschild dim. is upper semicontinous

Degenerations of algebras. Lecture 2. Proof (cont.) José-Antonio de la P eña

Degenerations of algebras. Lecture 2. Tangent space. José-Antonio de la P eña In algebraic geometry, the Zariski tangent space is a construction that defines a tangent space, at a point P on an algebraic variety V. It does not use differential calculus, being based directly on abstract algebra.algebraic geometrytangent spacealgebraic varietydifferential calculusabstract algebra For example, suppose given a plane curve C defined by a polynomial equationplane curve F(X,Y) = 0 and take P to be the origin (0,0). When F is considered only in terms of its first-degree terms, we get a 'linearised' equation reading L(X,Y) = 0 in which all terms X a Y b have been discarded if a + b > 1. We have two cases: L may be 0, or it may be the equation of a line. In the first case the (Zariski) tangent space to C at (0,0) is the whole plane, considered as a two-dimensional affineaffine space space. In the second case, the tangent space is that line, considered as affine space.

Degenerations of algebras. Lecture 2. Tangent spaces (geometry). José-Antonio de la P eña

Degenerations of algebras. Lecture 2. Hochschild coh. and rigidity.

Degenerations of algebras. Lecture 2. Hochschild cohomology and degenerations. José-Antonio de la P eña

Degenerations of algebras. Lecture 2. A tool for calculation. José-Antonio de la P eña

Degenerations of algebras. Lecture 2. An example. José-Antonio de la P eña

Degenerations of algebras. Lecture 2. Formal deformations. José-Antonio de la P eña

Degenerations of algebras. Lecture 2. Deformations as inverse of degenerations. José-Antonio de la P eña A Alg(n)

Degenerations of algebras. Lecture 2. Lifting deformations. José-Antonio de la P eña

Degenerations of algebras. Lecture 2. Methodology of proofs. José-Antonio de la P eña

Degenerations of algebras. Lecture 3. Tame and wild algebras. José-Antonio de la P eña

Degenerations of algebras. Lecture 3. Tame and wild definitions. José-Antonio de la P eña

Degenerations of algebras. Lecture 3. The tame behavior. José-Antonio de la P eña

Degenerations of algebras. Lecture 3. The wild behavior. José-Antonio de la P eña

Degenerations of algebras. Lecture 3. Why wild algebras are ‘wild’?. José-Antonio de la P eña

Degenerations of algebras. Lecture 3. Module varieties. José-Antonio de la P eña

Degenerations of algebras. Lecture 3. Degenerations of modules. José-Antonio de la P eña GL(r)X

Degenerations of algebras. Lecture 3. Indecomposable are constructible. José-Antonio de la P eña

Degenerations of algebras. Lecture 3. Number of parameters. José-Antonio de la P eña

Degenerations of algebras. Lecture 3. Tame and wild number of parameters.. José-Antonio de la P eña

Degenerations of algebras. Lecture 3. Degenerations of wild algebras. José-Antonio de la P eña

Degenerations of algebras. Lecture 3. An example. José-Antonio de la P eña

Degenerations of algebras. Lecture 3. Tameness and the structure of the AR quiver. José-Antonio de la P eña

Degenerations of algebras. Proof of proposition. Lecture 3.. José-Antonio de la P eña

Degenerations of algebras. Lecture 3. Algebras which are neither tame nor wild. José-Antonio de la P eña

Degenerations of algebras. Lecture 3. Next lecture: in 1 hour!. José-Antonio de la P eña

Degenerations of algebras. Lecture 4. The Tits quadratic form. Module varieties. José-Antonio de la P eña

Degenerations of algebras. Lecture 4. Action of groups and orbits. José-Antonio de la P eña

Degenerations of algebras. Lecture 4. Voigt´s theorem. José-Antonio de la P eña

Degenerations of algebras. Lecture 4. Definition of the Tits form. José-Antonio de la P eña

Degenerations of algebras. Lecture 4. Tits form and the homology. José-Antonio de la P eña

Degenerations of algebras. Lecture 4. Tits form and tameness. José-Antonio de la P eña

Degenerations of algebras. Lecture 4. Strongly simply connected algebras. José-Antonio de la P eña A is strongly simply connected if for every convex B in A we have that The first Hochschild cohomology H 1 (A)=0. The Tits form of a strongly simply connected algebra A is weakly nonnegative if and only if A does not contain a convex subcategory (called a hypercritical algebra) which is a preprojective tilt of a wild hereditary algebra of one of the following tree types

Degenerations of algebras. Lecture 4. pg-critical algebras. José-Antonio de la P eña Proposition. Let A be a strongly simply connected algebra. Tfae: (i) A is of polynomial growth. (ii) A does not contain a convex subcategory which is pg-critical or hypercritical. (iii) The Tits form q A of A is weakly nonnegative and A does not contain a convex subcategory which is pg-critical. 16 families.

Degenerations of algebras. Lecture 4. Main Theorem for Tits form. José-Antonio de la P eña Theorem. Let A be a strongly simply connected algebra. Then A is tame if and only if the Tits form q A of A is weakly non-negative. Corollary 1. Let A be a strongly simply connected algebra. Then A is tame if and only if A does not contain a convex hypercritical subcategory. Since the quivers of hypercritical algebras have at most 10 vertices, we obtain also the following consequence. Corollary 2. Let A be a strongly simply connected algebra. Then A is tame if and only if every convex subcategory of A with at most 10 objects is tame.

Degenerations of algebras. Lecture 4. Biserial algebras. José-Antonio de la P eña An Proposition. Every special biserial algebra is tame.

Degenerations of algebras. Lecture 4. Degenerations of pg-critical algebras. José-Antonio de la P eña An essential role in the proof of our main result will be played by the following proposition. Proposition. Every pg-critical algebra degenerates to a special biserial algebra.

Degenerations of algebras. Lecture 4. A typical result on degenerations. José-Antonio de la P eña

Degenerations of algebras. Lecture 4. All pieces together. José-Antonio de la P eña

Degenerations of algebras. Lecture 4. Deciding wildness. José-Antonio de la P eña

Degenerations of algebras. Lecture 4. Deciding tameness. José-Antonio de la P eña