1 | % DisTools Table of Contents
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2 | % 23-Nov-2009_17:27
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3 | %
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4 | % This Matlab toolbox for the analysis of dissimilarity data works only
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5 | % if also the pattern recognition toolbox PRTools is available.
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6 | % See http://prtools.org
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7 | %
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8 | % E. Pekalska, ela.pekalska@googlemail.com, University of Manchester
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9 | % R.P.W. Duin, r.duin@ieee.org, Delft University of Technology
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10 | %
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11 | % Characterization of dissimilarity matrices
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12 | % ------------------------------------------
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13 | % CHECKEUCL Check whether a square dissimilarity matrix has a Euclidean behavior
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14 | % CHECKTR Check whether a square dissimilarity matrix obeys triangle inequality
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15 | % CHARDMAT Fiand several characteristic of (dis)similarity data
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16 | % CORRTR Correct a square dissimilarity matrix to obey the triangle inequality
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17 | % DISCHECK Dissimilarity matrix check
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18 | % DISNORM Normalization of a dissimilarity matrix
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19 | % DISSTAT Basic statistics of the dissimilarity matrix
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20 | % ISSQUARE Check whether a matrix is square
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21 | % ISSYM Check whether a matrix is symmetric
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22 | % ASYMMETRY Compute asymmetry of dissimilarity matrix
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23 | % NNE Leave-one-out Nearest Neighbor error on a dissimilarity matrix
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24 | % NNERR Exact expected NN error from a dissimilarity matrix
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25 | %
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26 | % Dissimilarity Measures
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27 | % -----------------------------------------------
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28 | % COSDISTM Distance matrix based on inner products
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29 | % EUDISTM Euclidean distance matrix
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30 | % HAMDISTM Hamming distance matrix between binary vectors
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31 | % HAUSDM Hausdorff and modified Hausdorff distance between datasets of image blobs
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32 | %
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33 | % Transformations
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34 | % DISSIMT Fixed DISsimilarity-SIMilarity transformation
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35 | % MAKESYM Make a matrix symmetric
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36 | % PE_EM Pseudo-Euclidean embedding (includes Classical Scaling as a special case)
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37 | %
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38 | % Classification in Pseudo-Euclidean Space and indefinite kernels
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39 | % -----------------------------------------------
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40 | % SETSIG Set PE signature for mappings or datasets
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41 | % GETSIG Set PE signature for mappings or datasets
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42 | % ISPE_DATASET Test dataset for PE signature setting
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43 | % ISPE_EM Test mapping for PE signature setting
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44 | % PE_DISTM Square pseudo-Euclidean distance between two datasets
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45 | % PE_KERNELM Compute kernel in PE space
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46 | % PE_MTIMES Matrix multiplication (inner product) in PE space
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47 | % PE_PARZENC Parzen classifier in PE space
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48 | % PE_KNNC KNN classifier in PE space
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49 | % PE_NMC Nearest mean classifier in PE space
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50 | % PE_EM Pseudo-Euclidean linear embedding
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51 | % PLOTSPECTRUM Plot spectrum of eigenvalues
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52 | %
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53 | % Routines supporting in learning from dissimilarity matrices
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54 | % -----------------------------------------------------------------------
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55 | % CROSSVALD Cross-validation error for dissimilarity representations
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56 | % DISSPACES Compute various spaces out of a dissimilarity matrix
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57 | % GENDDAT Generate random training and test sets for dissimilarity data
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58 | % GENREP Generate a representation set
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59 | % GENREPI Generate indices for representation, learning and testing sets
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60 | % SELCDAT Select Class Subset from a Square Dissimilarity Dataset
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61 | % PROTSELFD Forward prototype selection
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62 | % DLPC LP-classifier on dissimilarity (proximity) data
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63 | % KNNDC K-Nearest Neighbor classifier for dissimilarity matrices
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64 | % PARZENDDC Parzen classifier for dissimilarity matrices
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65 | % TESTKD Test k-NN classifier for dissimilarity data
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66 | % TESTPD Test Parzen classifier for dissimilarity data
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67 | %
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68 | % EXAMPLES
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69 | % --------
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70 | % CROSSVALD_EX Crossvalidation of several classifiers
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