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Threshold network models ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]
Barab ási & Albert model (1999) ,[object Object],[object Object],[object Object]
Non-growing  scale-free networks with intrinsic vertex weights ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],v i  and  v j  are connected  ↔   w i   +   w j   ≥  θ
“ meanfield” results  (Caldarelli et al., 2002; Bogu ñ á & Pastor-Satorras, 2003) ,[object Object],Degree distribution 1:1 relationship between  k  and  w ( n : # vertices) Cumulative dist. fn. of weight degree
Exponentially distributed weights  (Caldarelli et al., 2002; Bogu ñ á & Pastor-Sattoras, 2003) Ave. deg. of neighbors Vertex-wise clustering coef. Degree dist. Weight dist. θ : threshold,  n : # vertices But real data often have  C ( k )  ∝   k   1  (Vázquez et al., 2002; Ravasz et al., 2002, 2003) : negative degree corr ✓  Good agreements with numerical results. ✓  Constraint  w  ≧ 0 is nonessential (cf. logistic dist) ✓  Similar numerical results for Gaussian  f ( w ) degree
Pareto distribution ,[object Object],✓  Good agreements with numerical results. ✓  Constraint  w  ≧ 0 is nonessential (cf. Cauchy dist)
Mathematical definition as a random graph (degree)
Limit theorems for the degree (by SLLN for i.i.d. sequences) Weak convergence corresponding to (2) can be shown by showing that the characteristic function of the LHS converges pointwiseto that of the RHS. Theorem
Degree correlation Proof: Calculate to see whether the characteristic function of the joint distribution of  D n (1)/ n  and  D n (2)/ n  {does/does not} factorize. ,[object Object],[object Object],Theorem
Limit theorems for # triangles ✓  Extension to the case of larger “patterns” is straightforward. standard normal var a.s. a.s. Theorem
U‐statistics : integrable, symmetric
[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],Spatial threshold model
Drawing
Spatial threshold model  (i.e., ( w i  +  w j )  h ( r )  ≥  θ )  generalizes ,[object Object],[object Object],[object Object],[object Object]
In addition, ,[object Object],[object Object],[object Object],[object Object]
Flavor of “physics” analysis Example: ( w i   +  w j )  h ( r ) ≥  θ 1:1 relationship between  k  and  w degree
Summary of the results ( w i   +  w j )  h ( r ) ≥  θ ✓  Good agreements with numerical results. f ( w ) h ( r ) p ( k ) g ( r ) L finite support * finite support finite support  large λ e  λw r    β stretched expon. stretched expon. large (if  β  is large) λ e  λw (log  r )  1   k    1  a β /d r    a β small ∝  w   – a – 1 r    β k    1  a β /d r    a β small  (if  a β  is small)
Numerical results ,[object Object],[object Object],[object Object],[object Object],[object Object],N =2000,4000,…,10000 Average path length ( L )  Clustering coefficient ( C )
Mathematics of the spatial threshold model ,[object Object],[object Object],[object Object],: enumeration of the point process X 0 X 1
[object Object],[object Object],[object Object],[object Object],Intuitively, = (degree of origin) / (volume of unit sphere) Prob that a vertex with distance r from the origin is connected to the origin.
Case 1: finite degree where  Δ  is given via the characteristic function by  Volume of ( d -1) dim unit sphere. (convergence in distribution) Theorem
Sketch of proof ,[object Object],where Prob that a vertex with distance r from the origin is connected to the origin. & the dominated convergence theorem ~ Volume of ( d -1) dim unit sphere.
Case 2: infinite degree g ( x ): some function.  Z : standard normal var Example:  β =1,  d =2, (0 <  α  < 2,  C  > 0) Sketch of proof: show that characteristic fn. of LHS converges to the product of two characteristic fns. ✓  direct calculations ✓  dominated convergence theorem Theorem
Thresholding + homophily ,[object Object],[object Object],[object Object],thresholding + homophily thresholding only
Results Thresholding + homophily Homophily only Thresholding only w k k 2 k 2 k 2 k k Degree dist ×: thresh + homo ■ : thresh only ○ : homo only No longer hubs! But still in a ‘special’ position too many hubs elites = hubs f ( w )=  λ exp(- λ w )
Some open problems ,[object Object],[object Object],[object Object],[object Object],( w i   +  w j )  h ( r ) ≥  θ e.g.  h ( r ) =  r   – β v i v j
Conclusions ,[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object],[object Object]

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Threshold network models

  • 1.
  • 2.
  • 3.
  • 4.
  • 5. Exponentially distributed weights (Caldarelli et al., 2002; Bogu ñ á & Pastor-Sattoras, 2003) Ave. deg. of neighbors Vertex-wise clustering coef. Degree dist. Weight dist. θ : threshold, n : # vertices But real data often have C ( k ) ∝ k  1 (Vázquez et al., 2002; Ravasz et al., 2002, 2003) : negative degree corr ✓ Good agreements with numerical results. ✓ Constraint w ≧ 0 is nonessential (cf. logistic dist) ✓ Similar numerical results for Gaussian f ( w ) degree
  • 6.
  • 7. Mathematical definition as a random graph (degree)
  • 8. Limit theorems for the degree (by SLLN for i.i.d. sequences) Weak convergence corresponding to (2) can be shown by showing that the characteristic function of the LHS converges pointwiseto that of the RHS. Theorem
  • 9.
  • 10. Limit theorems for # triangles ✓ Extension to the case of larger “patterns” is straightforward. standard normal var a.s. a.s. Theorem
  • 12.
  • 14.
  • 15.
  • 16. Flavor of “physics” analysis Example: ( w i + w j ) h ( r ) ≥ θ 1:1 relationship between k and w degree
  • 17. Summary of the results ( w i + w j ) h ( r ) ≥ θ ✓ Good agreements with numerical results. f ( w ) h ( r ) p ( k ) g ( r ) L finite support * finite support finite support large λ e  λw r  β stretched expon. stretched expon. large (if β is large) λ e  λw (log r )  1 k  1  a β /d r  a β small ∝ w – a – 1 r  β k  1  a β /d r  a β small (if a β is small)
  • 18.
  • 19.
  • 20.
  • 21. Case 1: finite degree where Δ is given via the characteristic function by Volume of ( d -1) dim unit sphere. (convergence in distribution) Theorem
  • 22.
  • 23. Case 2: infinite degree g ( x ): some function. Z : standard normal var Example: β =1, d =2, (0 < α < 2, C > 0) Sketch of proof: show that characteristic fn. of LHS converges to the product of two characteristic fns. ✓ direct calculations ✓ dominated convergence theorem Theorem
  • 24.
  • 25. Results Thresholding + homophily Homophily only Thresholding only w k k 2 k 2 k 2 k k Degree dist ×: thresh + homo ■ : thresh only ○ : homo only No longer hubs! But still in a ‘special’ position too many hubs elites = hubs f ( w )= λ exp(- λ w )
  • 26.
  • 27.

Notes de l'éditeur

  1. Figure from golumbic.obj
  2. (2) は JPA では, weak convergence (= convergence in distribution) .
  3. N じゃなくて n-1 で割るようにする方がよいのかも.
  4. The factor 3 for the CLT is modified from Konno et al. JPA 2005. Theorem 4(b) of Konno et al. JPA 2005is erroneous.
  5. Figure from unitdisk_thresh.obj