% Demonstration of generative model functions. % % See GENERATIVE_MODEL and EVALUATE_GENERATIVE_MODEL for further details % and interpretation. clear close all clc data = load('demo_generative_models_data'); A = data.A; Aseed = data.Aseed; D = data.D; % get cardinality of network n = length(A); % set model type modeltype = 'sptl'; % set whether the model is based on powerlaw or exponentials modelvar = [{'powerlaw'},{'powerlaw'}]; % choose some model parameters nparams = 100; params = unifrnd(-10,0,nparams,1); % generate synthetic networks and energy for the neighbors model; [B,E,K] = evaluate_generative_model(Aseed,A,D,modeltype,modelvar,params); X = [E,K]; % show scatterplot of parameter values versus energy and KS statistics names = [... {'energy'},... {'degree'},... {'clustering'},... {'betweenness'},... {'edge length'}]; f = figure(... 'units','inches',... 'position',[2,2,4,4]); for i = 1:size(X,2) subplot(3,2,i); scatter(params,X(:,i),100,X(:,i),'filled'); set(gca,... 'ylim',[0,1],... 'clim',[0,1]); colormap(jet); xlabel('geometric parameter, \eta'); ylabel(names{i}); end