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  • AP(affinity propagation)研究

    待补充……

    AP算法,即Affinity propagation,是Brendan J. Frey* 和Delbert Dueck于2007年在science上提出的一种算法(文章链接,维基百科)

    现在只是初步研究了一下官网上提供的MATLAB源码:apcluster.m

    %APCLUSTER Affinity Propagation Clustering (Frey/Dueck, Science 2007)
    % [idx,netsim,dpsim,expref]=APCLUSTER(s,p) clusters data, using a set 
    % of real-valued pairwise data point similarities as input. Clusters 
    % are each represented by a cluster center data point (the "exemplar"). 
    % The method is iterative and searches for clusters so as to maximize 
    % an objective function, called net similarity.
    % 
    % For N data points, there are potentially N^2-N pairwise similarities; 
    % this can be input as an N-by-N matrix 's', where s(i,k) is the 
    % similarity of point i to point k (s(i,k) needn抰 equal s(k,i)).  In 
    % fact, only a smaller number of relevant similarities are needed; if 
    % only M similarity values are known (M < N^2-N) they can be input as 
    % an M-by-3 matrix with each row being an (i,j,s(i,j)) triple.
    % 
    % APCLUSTER automatically determines the number of clusters based on 
    % the input preference 'p', a real-valued N-vector. p(i) indicates the 
    % preference that data point i be chosen as an exemplar. Often a good 
    % choice is to set all preferences to median(s); the number of clusters 
    % identified can be adjusted by changing this value accordingly. If 'p' 
    % is a scalar, APCLUSTER assumes all preferences are that shared value.
    % 
    % The clustering solution is returned in idx. idx(j) is the index of 
    % the exemplar for data point j; idx(j)==j indicates data point j 
    % is itself an exemplar. The sum of the similarities of the data points to 
    % their exemplars is returned as dpsim, the sum of the preferences of 
    % the identified exemplars is returned in expref and the net similarity 
    % objective function returned is their sum, i.e. netsim=dpsim+expref.
    % 
    %     [ ... ]=apcluster(s,p,'NAME',VALUE,...) allows you to specify 
    %       optional parameter name/value pairs as follows:
    % 
    %   'maxits'     maximum number of iterations (default: 1000)
    %   'convits'    if the estimated exemplars stay fixed for convits 
    %          iterations, APCLUSTER terminates early (default: 100)
    %   'dampfact'   update equation damping level in [0.5, 1).  Higher 
    %        values correspond to heavy damping, which may be needed 
    %        if oscillations occur. (default: 0.9)
    %   'plot'       (no value needed) Plots netsim after each iteration
    %   'details'    (no value needed) Outputs iteration-by-iteration 
    %      details (greater memory requirements)
    %   'nonoise'    (no value needed) APCLUSTER adds a small amount of 
    %      noise to 's' to prevent degenerate cases; this disables that.
    % 
    % Copyright (c) B.J. Frey & D. Dueck (2006). This software may be 
    % freely used and distributed for non-commercial purposes.
    %          (RUN APCLUSTER WITHOUT ARGUMENTS FOR DEMO CODE)
    function [idx,netsim,dpsim,expref]=apcluster(s,p,varargin);
    if nargin==0, % display demo
        fprintf('Affinity Propagation (APCLUSTER) sample/demo code
    
    ');
        fprintf('N=100; x=rand(N,2); % Create N, 2-D data points
    ');
        fprintf('M=N*N-N; s=zeros(M,3); % Make ALL N^2-N similarities
    ');
        fprintf('j=1;
    ');
        fprintf('for i=1:N
    ');
        fprintf('  for k=[1:i-1,i+1:N]
    ');
        fprintf('    s(j,1)=i; s(j,2)=k; s(j,3)=-sum((x(i,:)-x(k,:)).^2);
    ');
        fprintf('    j=j+1;
    ');
        fprintf('  end;
    ');
        fprintf('end;
    ');
        fprintf('p=median(s(:,3)); % Set preference to median similarity
    ');
        fprintf('[idx,netsim,dpsim,expref]=apcluster(s,p,''plot'');
    ');
        fprintf('fprintf(''Number of clusters: %%d\n'',length(unique(idx)));
    ');
        fprintf('fprintf(''Fitness (net similarity): %%g\n'',netsim);
    ');
        fprintf('figure; % Make a figures showing the data and the clusters
    ');
        fprintf('for i=unique(idx)''
    ');
        fprintf('  ii=find(idx==i); h=plot(x(ii,1),x(ii,2),''o''); hold on;
    ');
        fprintf('  col=rand(1,3); set(h,''Color'',col,''MarkerFaceColor'',col);
    ');
        fprintf('  xi1=x(i,1)*ones(size(ii)); xi2=x(i,2)*ones(size(ii)); 
    ');
        fprintf('  line([x(ii,1),xi1]'',[x(ii,2),xi2]'',''Color'',col);
    ');
        fprintf('end;
    ');
        fprintf('axis equal tight;
    
    ');
        return;
    end;
    start = clock;
    % Handle arguments to function
    if nargin<2 error('Too few input arguments');
    else
        maxits=1000; convits=100; lam=0.9; plt=0; details=0; nonoise=0;
        i=1;
        while i<=length(varargin)
            if strcmp(varargin{i},'plot')
                plt=1; i=i+1;
            elseif strcmp(varargin{i},'details')
                details=1; i=i+1;
            elseif strcmp(varargin{i},'sparse')
    %             [idx,netsim,dpsim,expref]=apcluster_sparse(s,p,varargin{:});
                fprintf('''sparse'' argument no longer supported; see website for additional software
    
    ');
                return;
            elseif strcmp(varargin{i},'nonoise')
                nonoise=1; i=i+1;
            elseif strcmp(varargin{i},'maxits')
                maxits=varargin{i+1};
                i=i+2;
                if maxits<=0 error('maxits must be a positive integer'); end;
            elseif strcmp(varargin{i},'convits')
                convits=varargin{i+1};
                i=i+2;
                if convits<=0 error('convits must be a positive integer'); end;
            elseif strcmp(varargin{i},'dampfact')
                lam=varargin{i+1};
                i=i+2;
                if (lam<0.5)||(lam>=1)
                    error('dampfact must be >= 0.5 and < 1');
                end;
            else i=i+1;
            end;
        end;
    end;
    if lam>0.9
        fprintf('
    *** Warning: Large damping factor in use. Turn on plotting
    ');
        fprintf('    to monitor the net similarity. The algorithm will
    ');
        fprintf('    change decisions slowly, so consider using a larger value
    ');
        fprintf('    of convits.
    
    ');
    end;
    
    % Check that standard arguments are consistent in size
    if length(size(s))~=2 error('s should be a 2D matrix');
    elseif length(size(p))>2 error('p should be a vector or a scalar');
    elseif size(s,2)==3
        tmp=max(max(s(:,1)),max(s(:,2)));
        if length(p)==1 N=tmp; else N=length(p); end;
        if tmp>N
            error('data point index exceeds number of data points');
        elseif min(min(s(:,1)),min(s(:,2)))<=0
            error('data point indices must be >= 1');
        end;
    elseif size(s,1)==size(s,2)
        N=size(s,1);
        if (length(p)~=N)&&(length(p)~=1)
            error('p should be scalar or a vector of size N');
        end;
    else error('s must have 3 columns or be square'); end;
    
    % Construct similarity matrix
    if N>3000
        fprintf('
    *** Warning: Large memory request. Consider activating
    ');
        fprintf('    the sparse version of APCLUSTER.
    
    ');
    end;
    if size(s,2)==3 && size(s,1)~=3,
        S=-Inf*ones(N,N,class(s)); 
        for j=1:size(s,1), S(s(j,1),s(j,2))=s(j,3); end;
    else S=s;
    end;
    
    if S==S', symmetric=true; else symmetric=false; end;
    realmin_=realmin(class(s)); realmax_=realmax(class(s));
    
    % In case user did not remove degeneracies from the input similarities,
    % avoid degenerate solutions by adding a small amount of noise to the
    % input similarities
    if ~nonoise
        rns=randn('state'); randn('state',0);
        S=S+(eps*S+realmin_*100).*rand(N,N);
        randn('state',rns);
    end;
    
    % Place preferences on the diagonal of S
    if length(p)==1 for i=1:N S(i,i)=p; end;
    else for i=1:N S(i,i)=p(i); end;
    end;
    
    % Numerical stability -- replace -INF with -realmax
    n=find(S<-realmax_); if ~isempty(n), warning('-INF similarities detected; changing to -REALMAX to ensure numerical stability'); S(n)=-realmax_; end; clear('n');
    if ~isempty(find(S>realmax_,1)), error('+INF similarities detected; change to a large positive value (but smaller than +REALMAX)'); end;
    
    
    % Allocate space for messages, etc
    dS=diag(S); A=zeros(N,N,class(s)); R=zeros(N,N,class(s)); t=1;
    if plt, netsim=zeros(1,maxits+1); end;
    if details
        idx=zeros(N,maxits+1);
        netsim=zeros(1,maxits+1); 
        dpsim=zeros(1,maxits+1); 
        expref=zeros(1,maxits+1); 
    end;
    
    % Execute parallel affinity propagation updates
    e=zeros(N,convits); dn=0; i=0;
    if symmetric, ST=S; else ST=S'; end; % saves memory if it's symmetric
    while ~dn
        i=i+1; 
    
        % Compute responsibilities
        A=A'; R=R';
        for ii=1:N,
            old = R(:,ii);
            AS = A(:,ii) + ST(:,ii); [Y,I]=max(AS); AS(I)=-Inf;
            [Y2,I2]=max(AS);
            R(:,ii)=ST(:,ii)-Y;
            R(I,ii)=ST(I,ii)-Y2;
            R(:,ii)=(1-lam)*R(:,ii)+lam*old; % Damping
            R(R(:,ii)>realmax_,ii)=realmax_;
        end;
        A=A'; R=R';
    
        % Compute availabilities
        for jj=1:N,
            old = A(:,jj);
            Rp = max(R(:,jj),0); Rp(jj)=R(jj,jj);
            A(:,jj) = sum(Rp)-Rp;
            dA = A(jj,jj); A(:,jj) = min(A(:,jj),0); A(jj,jj) = dA;
            A(:,jj) = (1-lam)*A(:,jj) + lam*old; % Damping
        end;
        
        % Check for convergence
        E=((diag(A)+diag(R))>0); e(:,mod(i-1,convits)+1)=E; K=sum(E);
        if i>=convits || i>=maxits,
            se=sum(e,2);
            unconverged=(sum((se==convits)+(se==0))~=N);
            if (~unconverged&&(K>0))||(i==maxits) dn=1; end;
        end;
    
        % Handle plotting and storage of details, if requested
        if plt||details
            if K==0
                tmpnetsim=nan; tmpdpsim=nan; tmpexpref=nan; tmpidx=nan;
            else
                I=find(E); notI=find(~E); [tmp c]=max(S(:,I),[],2); c(I)=1:K; tmpidx=I(c);
                tmpdpsim=sum(S(sub2ind([N N],notI,tmpidx(notI))));
                tmpexpref=sum(dS(I));
                tmpnetsim=tmpdpsim+tmpexpref;
            end;
        end;
        if details
            netsim(i)=tmpnetsim; dpsim(i)=tmpdpsim; expref(i)=tmpexpref;
            idx(:,i)=tmpidx;
        end;
        if plt,
            netsim(i)=tmpnetsim;
            figure(234);
            plot(((netsim(1:i)/10)*100)/10,'r-'); xlim([0 i]); % plot barely-finite stuff as infinite
            xlabel('# Iterations');
            ylabel('Fitness (net similarity) of quantized intermediate solution');
    %         drawnow; 
        end;
    end; % iterations
    I=find((diag(A)+diag(R))>0); K=length(I); % Identify exemplars
    if K>0
        [tmp c]=max(S(:,I),[],2); c(I)=1:K; % Identify clusters
        % Refine the final set of exemplars and clusters and return results
        for k=1:K ii=find(c==k); [y j]=max(sum(S(ii,ii),1)); I(k)=ii(j(1)); end; notI=reshape(setdiff(1:N,I),[],1);
        [tmp c]=max(S(:,I),[],2); c(I)=1:K; tmpidx=I(c);
        tmpdpsim=sum(S(sub2ind([N N],notI,tmpidx(notI))));
        tmpexpref=sum(dS(I));
        tmpnetsim=tmpdpsim+tmpexpref;
    else
        tmpidx=nan*ones(N,1); tmpnetsim=nan; tmpexpref=nan;
    end;
    if details
        netsim(i+1)=tmpnetsim; netsim=netsim(1:i+1);
        dpsim(i+1)=tmpdpsim; dpsim=dpsim(1:i+1);
        expref(i+1)=tmpexpref; expref=expref(1:i+1);
        idx(:,i+1)=tmpidx; idx=idx(:,1:i+1);
    else
        netsim=tmpnetsim; dpsim=tmpdpsim; expref=tmpexpref; idx=tmpidx;
    end;
    if plt||details
        fprintf('
    Number of exemplars identified: %d  (for %d data points)
    ',K,N);
        fprintf('Net similarity: %g
    ',tmpnetsim);
        fprintf('  Similarities of data points to exemplars: %g
    ',dpsim(end));
        fprintf('  Preferences of selected exemplars: %g
    ',tmpexpref);
        fprintf('Number of iterations: %d
    
    ',i);
        fprintf('Elapsed time: %g sec
    ',etime(clock,start));
    end;
    if unconverged
        fprintf('
    *** Warning: Algorithm did not converge. Activate plotting
    ');
        fprintf('    so that you can monitor the net similarity. Consider
    ');
        fprintf('    increasing maxits and convits, and, if oscillations occur
    ');
        fprintf('    also increasing dampfact.
    
    ');
    end;

    实际使用的示例数据:

    s矩阵以及p的取值,

    s=[1 0.85 0.9 0.5 0.45 0.5 0.4 0.4 0.5 0.45;
       0.85 1 0.85 0.6 0.65 0.7 0.6 0.55 0.8 0.7;
       0.9 0.85 1 0.75 0.7 0.65 0.55 0.5 0.6 0.5;
       0.5 0.6 0.75 1 0.9 0.7 0.7 0.85 0.5 0.45;
       0.45 0.65 0.7 0.9 1 0.9 0.9 0.85 0.6 0.65;
       0.5 0.7 0.65 0.7 0.9 1 0.85 0.75 0.75 0.75;
       0.4 0.6 0.55 0.7 0.9 0.85 1 0.85 0.5 0.55;
       0.4 0.55 0.5 0.85 0.85 0.75 0.85 1 0.3 0.25;
       0.5 0.8 0.6 0.5 0.6 0.75 0.5 0.3 1 0.9;
       0.45 0.7 0.5 0.45 0.65 0.75 0.55 0.25 0.9 1;
        ];
    p=median(median(s));

    最后的运行结果:

    idx =
    
         1
         1
         1
         5
         5
         5
         5
         5
         9
         9
    
    
    netsim =
    
        8.1875
    
    
    dpsim =
    
        6.2000
    
    
    expref =
    
        1.9875
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  • 原文地址:https://www.cnblogs.com/zidiancao/p/4200660.html
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