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Preserving Personalized
Pagerank in Subgraphs
(Andrea Vattani, Deepayan Chakrabarti, Maxim
                  Gurevich)




                                               1
a       a


    b


c       c
“Due to space
constraints, complete
 proofs of our claims
will appear in the full
version of the paper.”
p = αr + (1 − α)A D
                t     −1
                           p
p
α
r
A
D
r
r[i]
∞
                                          [t]
pi (j) =                α(1 −          α)pi (j)
                t=0                    t
    [t]                                        1
   pi (j)   =
                                             d+ (kl )
                k1 =i,k2 ,··· ,kt+1 =j l=1
G = (V, E)
   S⊂V
         p
         G


     pG[S]


         ˜
         p   G
˜
min d(p , p
       G   G[S]
                  )
|S| = o(n/ log n)

           1/2 − o(1)   Ω(|S|)
S ⊂S
                                              ∗
                                       u
       S
                                          ∗
S                                     u
                              ∗
                          u
wG (i, j) = 1
j∈V
G = (V, wG )
        S⊂V

H = (S ∪ SIN K, wH )
pi (j)
 G
         = pi (j)
            H

         ∀i, j ∈ S
a
a

        sampling a,c
    b                      SINK

        Remove b
c
                       c
∞
wH (x, y)+ = (1 − α)wG (x, z)wG (z, y)         [(1 − α)wG (z, z)]
                                                                t

                                         t=0
wH (x, SIN K)+ = wG (x, z) −                    wH (x, y)
                               y=z;wG (z,y)>0
P   H             pi
                   H
                       =   pi
                            G

    WH
            1
     t
    WH   =     (I − α(P ) )
                       H −1
           1−α

                O(E + |S| )     2
wH (u, v) < τ
wH (u, SIN K)+ = wH (u, v), wH (u, v) = 0
||P (j) − P (j)||1
     H     R
                         1−α
                    ≤ 2τ
      |S| + 1             α

P (j)
 H

P (j)
 R
v=            pj (i),
               G
                        i∈S
     j∈V S

r(j) = r(j ), j, j ∈ V  S


               pr (i), ∀i ∈ S
                   G
SINK




       Page
       Rank
1    1
wH   (SOU RCE, l) =                        pj
                                            G
                                                (k)wG (k.l), l ∈ S
                    |V  S| α
                                j,k∈V S




 wH (SOU RCE, SIN K) = 1 −                 wH (SOU RCE, i)
                                    i∈S
pr (i) = pr
  G           H
                  (i), ∀i ∈ S
         
          r(k),                k∈S
 r (k) =   ρ|V  S|,            k = SOU RCE
         
           0,                   k = SIN K
Preserving Personalized Pagerank in Subgraphs(ICML 2011)
Preserving Personalized Pagerank in Subgraphs(ICML 2011)
Preserving Personalized Pagerank in Subgraphs(ICML 2011)
Preserving Personalized Pagerank in Subgraphs(ICML 2011)
Preserving Personalized Pagerank in Subgraphs(ICML 2011)
Preserving Personalized Pagerank in Subgraphs(ICML 2011)
Preserving Personalized Pagerank in Subgraphs(ICML 2011)
Preserving Personalized Pagerank in Subgraphs(ICML 2011)
Preserving Personalized Pagerank in Subgraphs(ICML 2011)
Preserving Personalized Pagerank in Subgraphs(ICML 2011)
Preserving Personalized Pagerank in Subgraphs(ICML 2011)
Preserving Personalized Pagerank in Subgraphs(ICML 2011)
Preserving Personalized Pagerank in Subgraphs(ICML 2011)
Preserving Personalized Pagerank in Subgraphs(ICML 2011)
Preserving Personalized Pagerank in Subgraphs(ICML 2011)
Preserving Personalized Pagerank in Subgraphs(ICML 2011)

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Preserving Personalized Pagerank in Subgraphs(ICML 2011)

  • 1. Preserving Personalized Pagerank in Subgraphs (Andrea Vattani, Deepayan Chakrabarti, Maxim Gurevich) 1
  • 2.
  • 3.
  • 4.
  • 5.
  • 6.
  • 7.
  • 8. a a b c c
  • 9.
  • 10.
  • 11.
  • 12.
  • 13. “Due to space constraints, complete proofs of our claims will appear in the full version of the paper.”
  • 14.
  • 15.
  • 16. p = αr + (1 − α)A D t −1 p p α r A D
  • 18. [t] pi (j) = α(1 − α)pi (j) t=0 t [t] 1 pi (j) = d+ (kl ) k1 =i,k2 ,··· ,kt+1 =j l=1
  • 19.
  • 20. G = (V, E) S⊂V p G pG[S] ˜ p G
  • 21. ˜ min d(p , p G G[S] )
  • 22. |S| = o(n/ log n) 1/2 − o(1) Ω(|S|) S ⊂S ∗ u S ∗ S u ∗ u
  • 23.
  • 24.
  • 25.
  • 26. wG (i, j) = 1 j∈V
  • 27. G = (V, wG ) S⊂V H = (S ∪ SIN K, wH )
  • 28. pi (j) G = pi (j) H ∀i, j ∈ S
  • 29.
  • 30.
  • 31. a a sampling a,c b SINK Remove b c c
  • 32. ∞ wH (x, y)+ = (1 − α)wG (x, z)wG (z, y) [(1 − α)wG (z, z)] t t=0
  • 33. wH (x, SIN K)+ = wG (x, z) − wH (x, y) y=z;wG (z,y)>0
  • 34.
  • 35.
  • 36. P H pi H = pi G WH 1 t WH = (I − α(P ) ) H −1 1−α O(E + |S| ) 2
  • 37.
  • 38. wH (u, v) < τ wH (u, SIN K)+ = wH (u, v), wH (u, v) = 0
  • 39.
  • 40.
  • 41.
  • 42. ||P (j) − P (j)||1 H R 1−α ≤ 2τ |S| + 1 α P (j) H P (j) R
  • 43.
  • 44.
  • 45. v= pj (i), G i∈S j∈V S r(j) = r(j ), j, j ∈ V S pr (i), ∀i ∈ S G
  • 46.
  • 47.
  • 48.
  • 49. SINK Page Rank
  • 50.
  • 51. 1 1 wH (SOU RCE, l) = pj G (k)wG (k.l), l ∈ S |V S| α j,k∈V S wH (SOU RCE, SIN K) = 1 − wH (SOU RCE, i) i∈S
  • 52.
  • 53. pr (i) = pr G H (i), ∀i ∈ S   r(k), k∈S r (k) = ρ|V S|, k = SOU RCE  0, k = SIN K

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