landmark_isomap.m

来自「一个基于matlab的数据降维工具箱,包括MDS,LEE等方法」· M 代码 · 共 94 行

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function [mappedX, mapping] = landmark_isomap(X, no_dims, k, percentage); %ISOMAP Runs the Isomap algorithm%%   [mappedX, mapping] = landmark_isomap(X, no_dims, k, percentage); %% The functions runs the Landmark Isomap algorithm on dataset X to reduce the% dimensionality of the dataset to no_dims. The number of neighbors used in% the compuations is set by k (default = 12). The variable percentage has to be% between 0 and 1, and determines the number of landmarks that is used (default = 0.2).%% If the neighborhood graph that is constructed is not completely% connected, only the largest connected component is embedded. The indices% of this component are returned in mapping.conn_comp.%%% This file is part of the Matlab Toolbox for Dimensionality Reduction v0.3b.% The toolbox can be obtained from http://www.cs.unimaas.nl/l.vandermaaten% You are free to use, change, or redistribute this code in any way you% want for non-commercial purposes. However, it is appreciated if you % maintain the name of the original author.%% (C) Laurens van der Maaten% Maastricht University, 2007    if ~exist('no_dims', 'var')        no_dims = 2;    end    if ~exist('k', 'var')        k = 12;    end	if ~exist('percentage', 'var')		percentage = 0.2;    end    % Construct neighborhood graph    disp('Constructing neighborhood graph...');     D = find_nn(X, k);        % Select largest connected component    blocks = components(D)';    count = zeros(1, max(blocks));    for i=1:max(blocks)        count(i) = length(find(blocks == i));    end    [count, block_no] = max(count);    conn_comp = find(blocks == block_no);    D = D(conn_comp,:);    D = D(:,conn_comp);    n = size(D, 1);    % Compute shortest paths    disp('Computing shortest paths...');    landmarks = randperm(n);	landmarks = landmarks(1:round(percentage * n));    nl = length(landmarks);     D = dijkstra(D, landmarks);	D = full(D)';    	% Do not embed in more dimensions than (nl - 1)	if no_dims > nl - 1		no_dims = nl - 1;		warning(['Target dimensionality reduced to ' num2str(no_dims) '...']);	end        % Performing MDS using eigenvector implementation    disp('Constructing low-dimensional embedding...'); 	subB = -.5 * (D.^2 - sum(D'.^2)'*(ones(1, nl)/nl) - ones(n, 1)*(sum(D.^2)/n) + sum(sum(D.^2))/(n*nl));	subB2 = subB' * subB;	subB2(isnan(subB2)) = 0;	subB2(isinf(subB2)) = 0;    [alpha, beta] = eig(subB2);    val = beta .^ (1 / 2);     vec = subB * alpha * inv(val);	if size(vec, 2) < no_dims		no_dims = size(vec, 2);		warning(['Target dimensionality reduced to ' num2str(no_dims) '...']);	end	    % Computing final embedding    h = real(diag(val));     [foo, sorth] = sort(h, 'descend');      val = real(diag(val(sorth, sorth)));     vec = vec(:,sorth);    mappedX = real(vec(:,1:no_dims) .* (ones(n, 1) * sqrt(val(1:no_dims))'));        % Store data for out-of-sample extension    mapping.conn_comp = conn_comp;    mapping.k = k;    mapping.X = X(conn_comp,:);    mapping.D = D;    mapping.vec = vec;    mapping.val = val;    

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