{0,1}-Brauer Configuration Algebras and Their Applications in Graph Energy Theory
Abstract
:1. Introduction
Contributions
2. Background and Related Work
2.1. Graph Energy
- The Nikiforov energy of a matrix M, which is the sum of the singular values of a matrix.
- The Laplacian energy of a graph G of order n and size m defined as the sum of the absolute values of the eigenvalues of the matrix , where is the identity matrix of order n, and is the Laplacian matrix associated with G whose entries are given by the following identities:
- The Randić energy, which is the sum of the absolute values of the Randić matrix of a graph G, with
2.2. Path Algebras
2.3. {0,1}-Brauer Configuration Algebras
- is said to be the set of vertices.
- is a collection of multisets consisting of vertices called polygons.
- The word defined by the polygon has the form;
- is a map , such that . is said to be the multiplicity function associated with .
- Successor sequences and associated with the vertices are defined by an orientation , which is an ordering on the polygons of the form:Successor sequences is a way of recording how vertices appear in the polygons.
- Add a circular relation , to each successor sequence and . , is said to be a special cycle associated with i.
- Define as the set of vertices of Q.
- Each cover in a special cycle defines an arrow .
- If a polygon contains vertices and are special cycles then .
- If a is the first arrow of a special cycle then .
- , , for all possible values of and s.
- , for all possible values of i.
- , , for all possible values of i and j.
- , for all possible values of i and j.
- , , for all possible values of i and j.
- 1.
- Λ is reduced and connected.
- 2.
- , where denotes the jth triangular number.
- 3.
- .
2.4. Posets
3. Applications
- For fixed, let us consider the {0,1}-Brauer configuration , such that:The orientation is defined in such a way that in successor sequences associated with vertices 0 and 1, it holds that , for .Polygons can be seen as -matrices over or as -matrices over the vector space of polynomials of degree . Its construction goes as follows:
- (a)
- For any i, , is a symmetric matrix,
- (b)
- ,
- (c)
- (d)
- Blocks , with are defined as follows:
- Over , , , ,
- Over , ,
Corollary 2.If is the Brauer configuration algebra induced by the {0,1}-Brauer configuration then the following statements hold:Proof.For fixed, consider the following set:is endowed with a partial order ⊴, which defines the following coverings:defines a matrix whose entries are given by the following identities:Now we are interested in estimating the eigenvalues of . Since the polygons can be seen as square symmetric matrices described in the previous proof as . We will assume that for each n, the real eigenvalues of a matrix are indexed in the following decreasing order:The next result, which derives two inequalities for the eigenvalues of Hermitian matrices, was proved by Bollobás and Nikiforov [35].Theorem 4([35], Theorem 2). Suppose that and let be a Hermitian matrix of size n. For every partition we haveThe following result on the eigenvalues of can be obtained by applying Theorem 4 to the matrix associated with the polygon .Corollary 3.For and . Let be the matrix associated with the polygon . For partition where . We have - For fixed, let be a {0,1}-Brauer configuration such that:The orientation is defined in such a way that in successor sequences associated with vertices 0 and 1, it holds that .Polygons can be seen as -matrices over using the Kronecker product, denoted by ⊗, as follows:Corollary 4.For , if is the Brauer configuration algebra induced by the {0,1}-Brauer configuration then the following statements hold:Proof.Given , let . For , define if . In this case the poset consists of all subsets of ordered by inclusion.We associate to each finite poset of size n the following -matrix:Under appropriate labeling of poset points , the matrix can be viewed using the Kronecker product as follows:is the matrix associated with the polygon , thus can be computed in the following fashion:Therefore and thus the result holds. □Now we are interested in computing the trace norm of the {0,1}-Brauer configuration . For this, we recall the following theorem about the singular values of the Kronecker product:Theorem 5([36], Theorem 4.2.15). Let and have singular value decompositions and and let and . Then . The nonzero singular values of are the positive numbers (including multiplicities).The following Lemma 1 is helpful to prove Theorem 6.Lemma 1.Let be a given matrix. If then the singular values of B are and for , where is the golden ratio.Proof.Note that . The singular values for are and , then by Theorem 5 the result holds. □Theorem 6.For each , if is the matrix associated with the polygon thenProof.By induction on n. For , . Let us suppose that and let us see that the result is fulfilled for , i.e.,Since , then for the Lemma 1 the singular values of are□Corollary 5.Proof.By Theorem 6, we have:□
- For fixed, let be a {0,1}-Brauer configuration such that:For , the word associated with the polygon has the form , , , .The orientation is defined in such a way that for successor sequences associated with vertices 0 and 1, it holds that .Polygons can be seen as -matrices over . Each row is defined by coefficients of a polynomial with the form , .
- 1.
- ,
- 2.
- ,
- 3.
- .
4. Concluding Remarks
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Abbreviations
(Dimension of a Brauer configuration algebra) | |
(Dimension of the center of a Brauer configuration algebra) | |
(Vertices in a Brauer configuration ) | |
(Message of a Brauer configuration ) | |
(Reduced message of a Brauer configuration ) | |
(Number of occurrences of a vertex in a polygon V) | |
(Ordered sequence of polygons) | |
(Valency of a vertex ) | |
(Word associated with a polygon of a Brauer configuration) | |
(Frobenius norm of matrix M) | |
(Trace norm of matrix M) | |
⊗ | (Kronecker product) |
(Golden ratio) | |
(Eigenvalues of matrix M) | |
(Spectral radius of a graph G) | |
(Singular values of matrix M) | |
(The jth triangular number) | |
(Matrix associated with the polygon ) |
Appendix A
n | ||||
---|---|---|---|---|
3 | 96,630 | 230 | ||
2 | 7358 | 105 | ||
1 | 2942 | 80 |
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Agudelo Muñetón, N.; Cañadas, A.M.; Espinosa, P.F.F.; Gaviria, I.D.M. {0,1}-Brauer Configuration Algebras and Their Applications in Graph Energy Theory. Mathematics 2021, 9, 3042. https://doi.org/10.3390/math9233042
Agudelo Muñetón N, Cañadas AM, Espinosa PFF, Gaviria IDM. {0,1}-Brauer Configuration Algebras and Their Applications in Graph Energy Theory. Mathematics. 2021; 9(23):3042. https://doi.org/10.3390/math9233042
Chicago/Turabian StyleAgudelo Muñetón, Natalia, Agustín Moreno Cañadas, Pedro Fernando Fernández Espinosa, and Isaías David Marín Gaviria. 2021. "{0,1}-Brauer Configuration Algebras and Their Applications in Graph Energy Theory" Mathematics 9, no. 23: 3042. https://doi.org/10.3390/math9233042
APA StyleAgudelo Muñetón, N., Cañadas, A. M., Espinosa, P. F. F., & Gaviria, I. D. M. (2021). {0,1}-Brauer Configuration Algebras and Their Applications in Graph Energy Theory. Mathematics, 9(23), 3042. https://doi.org/10.3390/math9233042