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Web Science & Technologies
University of Koblenz ▪ Landau, Germany
Network Growth
and the Spectral Evolution Model
Jérôme Kunegis¹, Damien Fay², Christian Bauckhage³
¹ University of Koblenz-Landau
² University of Cambridge
³ Fraunhofer IAIS
CIKM 2010, Toronto, Canada
Jérôme Kunegis
kunegis@uni-koblenz.de
CIKM 2010
2 / 24
Recommender Systems
Example: Find friends of Facebook
Jérôme Kunegis
kunegis@uni-koblenz.de
CIKM 2010
3 / 24
Graph Theory
Known links (A)
Unknown links (B)
The users of Facebook are connected by friendship links,
forming a graph. This graph is undirected.
Let A be the set of links in the network. Let B be the set of
links that will appear in the future.
Task: Find a suitable function f(A) = B.
Jérôme Kunegis
kunegis@uni-koblenz.de
CIKM 2010
4 / 24
Algebraic Graph Theory
Known links (A)
Unknown links (B)
Use adjacency matrices A, B ∈ {0, 1}n×n
:
A = B =
[
0 1 0 0 0
1 0 1 0 0
0 1 0 1 0
0 0 1 0 1
0 0 0 1 0
] [
0 0 1 1 0
0 0 0 0 0
1 0 0 0 0
1 0 0 0 0
0 0 0 0 0
]
Jérôme Kunegis
kunegis@uni-koblenz.de
CIKM 2010
5 / 24
Spectral Graph Theory
Use th eigenvalue decomposition :
A = UΛUT
B = VΣVT

U and V are orthogonal and contain eigenvectors

Λ and Σ are diagonal and contain eigenvalues
Task : find an f of the following form :
f(UΛUT
) = VΣVT
In this talk :

The observation that U ≈ V

Extrapolation of Λ to Σ
Jérôme Kunegis
kunegis@uni-koblenz.de
CIKM 2010
6 / 24
Outline

Eigenvalue evolution

Eigenvector evolution

Diagonality test

The spectral evolution model

Explanations

Control tests

Spectral extrapolation
Jérôme Kunegis
kunegis@uni-koblenz.de
CIKM 2010
7 / 24
Eigenvalue Evolution
Wikipedia Facebook

Eigenvectors grow

Not all eigenvectors grow at the same speed, even in a single network
Jérôme Kunegis
kunegis@uni-koblenz.de
CIKM 2010
8 / 24
Eigenvector Evolution
Wikipedia Facebook
Compute the cosine over time between eigenvectors and
their initial value.

Some eigenvectors stay constant

Some eigenvectors change suddenly
Jérôme Kunegis
kunegis@uni-koblenz.de
CIKM 2010
9 / 24
Eigenvector Permutation
Wikipedia Facebook
Compute the cosine between all eigenvector pairs at two times.
Eigenvalues get permuted :
A = UΛUT
B = VΣVT
Ui
= Vj
Jérôme Kunegis
kunegis@uni-koblenz.de
CIKM 2010
10 / 24
Diagonality Test
A = UΛUT
B = VΣVT
Diagonalize B using U.
B = UDUT
D = U−1
B(UT
)−1
D = UT
BU
UT
BU should be diagonal!
Jérôme Kunegis
kunegis@uni-koblenz.de
CIKM 2010
11 / 24
Diagonality Test
Wikipedia Facebook

D is nearly diagonal

The diagonal of D is irregular
Jérôme Kunegis
kunegis@uni-koblenz.de
CIKM 2010
12 / 24
The Spectral Evolution Model
Networks grow spectrally

Eigenvectors stay constant

Eigenvalues change
Why?
Jérôme Kunegis
kunegis@uni-koblenz.de
CIKM 2010
13 / 24
Explanation : Matrix Powers
Known links (A)
Unknown links (B)
The square of A constains the number of paths of length
two between any node pair:
A² =
Generally, Ak
contains the number of k-paths between
any node pair.
[
1 0 1 0 0
0 2 0 1 0
1 0 2 0 1
0 1 0 2 0
0 0 1 0 1
]
Jérôme Kunegis
kunegis@uni-koblenz.de
CIKM 2010
14 / 24
Explanation: Polynomials
p(A) = αA² + βA³ + γA + …⁴
Polynomials are good link prediction functions :

Count parallel paths

Weight paths by length (α > β > γ > …)
The matrix power is a spectral transformation, e.g.:
A² = (UΛUT
)(UΛUT
) = UΛ²UT
Polynomials are spectral transformations:
p(A) = p(UΛUT
) = Up(Λ)UT
Jérôme Kunegis
kunegis@uni-koblenz.de
CIKM 2010
15 / 24
Explanation: Graph Kernels
Matrix exponential
exp(A) = I + A + ½ A² + … = Uexp(Λ)UT
Von Neumann kernel
(I − αA)−1
= I + αA + α²A² + … = U(I − αΛ)−1
UT
Jérôme Kunegis
kunegis@uni-koblenz.de
CIKM 2010
16 / 24
Explanation: Preferential Attachment
Write A as a sum of rank-1 matrices:
A = A1
+ A2
+ …
Ai
= λi
ui
ui
T
 Interpret each Ai
as the adjacency matrix of one
weighted graph

In Ai
, vertex j has degree Σk
λi
uij
uik
~ uij
Consider the process of preferential attachment in each
latent dimension separately:
Σi
ui
ui
T
= λi
ui
ui
T
+ εi
ui
ui
T
pa(A) = U(Λ + Ε)UT
Jérôme Kunegis
kunegis@uni-koblenz.de
CIKM 2010
17 / 24
Control: Matrix Perturbation
Add edges at random to A = UΛUT
.
The evolution of A should then be :
A + E = Ũ Λ ŨT
|| Λ − Λ ||F
= O(ε²)
| U.k
T
Ũ.k
| = O(ε)
Using ||E||2
= ε.

Random growth is not spectral.
~
~
Jérôme Kunegis
kunegis@uni-koblenz.de
CIKM 2010
18 / 24
Control: Random Sampling
Split an Erdős–Rényi random graph into A + B. Apply
the diagonality test for transforming A into B.

Only one latent dimension is preserved.
Jérôme Kunegis
kunegis@uni-koblenz.de
CIKM 2010
19 / 24
Spectral Extrapolation
To predict links, extrapolate the evolution of eigenvalues.
Jérôme Kunegis
kunegis@uni-koblenz.de
CIKM 2010
20 / 24
Experiments
Methodology :

Retain newest edges as training set

Compute link prediction scores

Evaluate using the mean average precision (MAP)

User over a hundred datasets
Jérôme Kunegis
kunegis@uni-koblenz.de
CIKM 2010
21 / 24
Experiments: Symmetric Networks
Jérôme Kunegis
kunegis@uni-koblenz.de
CIKM 2010
22 / 24
Experiments: Weighted Networks
Use the weighted adjacency matrix A.
Jérôme Kunegis
kunegis@uni-koblenz.de
CIKM 2010
23 / 24
Experiments: Bipartite and Directed Networks
Use the singular value decomposition A = UΛVT
.
Jérôme Kunegis
kunegis@uni-koblenz.de
CIKM 2010
24 / 24
Summary & Discussion

Eigenvectors remain constant

Eigenvalues grow irregularly

Extrapolate the eigenvalues to predict links
Experimental results:

Extrapolation works best for bipartite and
directed networks

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Spectral Evolution Model Predicts Network Growth