Open main menu
Home
Random
Recent changes
Special pages
Community portal
Preferences
About Wikipedia
Disclaimers
Incubator escapee wiki
Search
User menu
Talk
Dark mode
Contributions
Create account
Log in
Editing
Expander graph
(section)
Warning:
You are not logged in. Your IP address will be publicly visible if you make any edits. If you
log in
or
create an account
, your edits will be attributed to your username, along with other benefits.
Anti-spam check. Do
not
fill this in!
===Spectral expansion=== When {{mvar|G}} is [[regular graph|{{mvar|d}}-regular]], a [[linear algebra]]ic definition of expansion is possible based on the [[Eigenvalue#Eigenvalues of matrices|eigenvalues]] of the [[adjacency matrix]] {{math|1=''A'' = ''A''(''G'')}} of {{mvar|G}}, where {{mvar|A{{sub|ij}}}} is the number of edges between vertices {{mvar|i}} and {{mvar|j}}.<ref>cf. Section 2.3 in {{harvtxt|Hoory|Linial|Wigderson|2006}}</ref> Because {{mvar|A}} is [[symmetric matrix|symmetric]], the [[spectral theorem]] implies that {{mvar|A}} has {{mvar|n}} real-valued eigenvalues {{math|''λ''{{sub|1}} ≥ ''λ''{{sub|2}} ≥ … ≥ ''λ''{{sub|''n''}}}}. It is known that all these eigenvalues are in {{math|[−''d'', ''d'']}} and more specifically, it is known that {{math|1=''λ''{{sub|''n''}} = −''d''}} if and only if {{mvar|G}} is bipartite. More formally, we refer to an {{mvar|n}}-vertex, {{mvar|d}}-regular graph with :<math>\max_{i \neq 1}|\lambda_i| \leq \lambda</math> as an {{math|(''n'', ''d'', ''λ'')}}-''graph''. The bound given by an {{math|(''n'', ''d'', ''λ'')}}-graph on {{math|''λ''{{sub|''i''}}}} for {{math|''i'' ≠ 1}} is useful in many contexts, including the [[expander mixing lemma]]. Spectral expansion can be ''two-sided'', as above, with <math>\max_{i \neq 1}|\lambda_i| \leq \lambda</math>, or it can be ''one-sided'', with <math>\max_{i \neq 1}\lambda_i \leq \lambda</math>. The latter is a weaker notion that holds also for bipartite graphs and is still useful for many applications, such as the Alon–Chung lemma.<ref>N. Alon and F. R. K. Chung, Explicit construction of linear sized tolerant networks. Discrete Math., vol. 72, pp. 15–19, 1988.</ref> Because {{mvar|G}} is regular, the uniform distribution <math>u\in\R^n</math> with {{math|1=''u{{sub|i}}'' = {{frac|1|''n''}}}} for all {{math|1=''i'' = 1, …, ''n''}} is the [[stationary distribution]] of {{mvar|G}}. That is, we have {{math|1=''Au'' = ''du''}}, and {{mvar|u}} is an [[eigenvector]] of {{mvar|A}} with eigenvalue {{math|1=''λ''{{sub|1}} = ''d''}}, where {{mvar|d}} is the [[degree (graph theory)|degree]] of the vertices of {{mvar|G}}. The ''[[spectral gap]]'' of {{mvar|G}} is defined to be {{math|''d'' − ''λ''{{sub|2}}}}, and it measures the spectral expansion of the graph {{mvar|G}}.<ref>This definition of the spectral gap is from Section 2.3 in {{harvtxt|Hoory|Linial|Wigderson|2006}}</ref> If we set :<math>\lambda=\max\{|\lambda_2|, |\lambda_n|\}</math> as this is the largest eigenvalue corresponding to an eigenvector [[orthogonal]] to {{mvar|u}}, it can be equivalently defined using the [[Rayleigh quotient]]: :<math>\lambda=\max_{v \perp u , v \neq 0} \frac{\|Av\|_2}{\|v\|_2},</math> where :<math>\|v\|_2=\left(\sum_{i=1}^n v_i^2\right)^{1/2}</math> is the [[2-norm]] of the vector <math>v\in\R^n</math>. The normalized versions of these definitions are also widely used and more convenient in stating some results. Here one considers the matrix {{math|{{sfrac|1|''d''}}''A''}}, which is the [[Markov transition matrix]] of the graph {{mvar|G}}. Its eigenvalues are between −1 and 1. For not necessarily regular graphs, the spectrum of a graph can be defined similarly using the eigenvalues of the [[Laplacian matrix]]. For [[directed graph]]s, one considers the [[singular values]] of the adjacency matrix {{mvar|A}}, which are equal to the roots of the eigenvalues of the symmetric matrix {{math|''A''{{sup|T}}''A''}}.
Edit summary
(Briefly describe your changes)
By publishing changes, you agree to the
Terms of Use
, and you irrevocably agree to release your contribution under the
CC BY-SA 4.0 License
and the
GFDL
. You agree that a hyperlink or URL is sufficient attribution under the Creative Commons license.
Cancel
Editing help
(opens in new window)