1 | package de.ugoe.cs.eventbench.models;
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2 |
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3 | import java.util.ArrayList;
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4 | import java.util.List;
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5 | import java.util.Random;
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6 |
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7 | import de.ugoe.cs.eventbench.data.Event;
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8 | import de.ugoe.cs.util.StringTools;
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9 | import de.ugoe.cs.util.console.Console;
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10 | import edu.uci.ics.jung.graph.Graph;
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11 | import edu.uci.ics.jung.graph.SparseMultigraph;
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12 | import edu.uci.ics.jung.graph.util.EdgeType;
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13 |
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14 | import Jama.Matrix;
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15 |
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16 | public class FirstOrderMarkovModel extends HighOrderMarkovModel implements IDotCompatible {
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17 |
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18 | /**
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19 | * Id for object serialization.
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20 | */
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21 | private static final long serialVersionUID = 1L;
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22 |
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23 | final static int MAX_STATDIST_ITERATIONS = 1000;
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24 |
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25 | public FirstOrderMarkovModel(Random r) {
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26 | super(1, r);
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27 | }
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28 |
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29 | private Matrix getTransmissionMatrix() {
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30 | List<Event<?>> knownSymbols = new ArrayList<Event<?>>(trie.getKnownSymbols());
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31 | int numStates = knownSymbols.size();
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32 | Matrix transmissionMatrix = new Matrix(numStates, numStates);
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33 |
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34 | for( int i=0 ; i<numStates ; i++ ) {
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35 | Event<?> currentSymbol = knownSymbols.get(i);
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36 | List<Event<?>> context = new ArrayList<Event<?>>();
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37 | context.add(currentSymbol);
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38 | for( int j=0 ; j<numStates ; j++ ) {
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39 | Event<?> follower = knownSymbols.get(j);
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40 | double prob = getProbability(context, follower);
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41 | transmissionMatrix.set(i, j, prob);
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42 | }
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43 | }
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44 | return transmissionMatrix;
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45 | }
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46 |
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47 | public String getDotRepresentation() {
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48 | StringBuilder stringBuilder = new StringBuilder();
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49 | stringBuilder.append("digraph model {" + StringTools.ENDLINE);
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50 |
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51 | List<Event<?>> knownSymbols = new ArrayList<Event<?>>(trie.getKnownSymbols());
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52 |
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53 | for( Event<?> symbol : knownSymbols) {
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54 | final String thisSaneId = symbol.getShortId().replace("\"", "\\\"").replaceAll("[\r\n]","");
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55 | stringBuilder.append(" " + symbol.hashCode() + " [label=\""+thisSaneId+"\"];" + StringTools.ENDLINE);
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56 | List<Event<?>> context = new ArrayList<Event<?>>();
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57 | context.add(symbol);
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58 | List<Event<?>> followers = trie.getFollowingSymbols(context);
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59 | for( Event<?> follower : followers ) {
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60 | stringBuilder.append(" "+symbol.hashCode()+" -> " + follower.hashCode() + " ");
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61 | stringBuilder.append("[label=\"" + getProbability(context, follower) + "\"];" + StringTools.ENDLINE);
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62 | }
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63 | }
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64 | stringBuilder.append('}' + StringTools.ENDLINE);
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65 | return stringBuilder.toString();
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66 | }
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67 |
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68 | public Graph<String, MarkovEdge> getGraph() {
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69 | Graph<String, MarkovEdge> graph = new SparseMultigraph<String, MarkovEdge>();
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70 |
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71 | List<Event<?>> knownSymbols = new ArrayList<Event<?>>(trie.getKnownSymbols());
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72 |
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73 | for( Event<?> symbol : knownSymbols) {
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74 | String from = symbol.getShortId();
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75 | List<Event<?>> context = new ArrayList<Event<?>>();
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76 | context.add(symbol);
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77 |
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78 | List<Event<?>> followers = trie.getFollowingSymbols(context);
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79 |
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80 | for( Event<?> follower : followers ) {
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81 | String to = follower.getShortId();
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82 | MarkovEdge prob = new MarkovEdge(getProbability(context, follower));
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83 | graph.addEdge(prob, from, to, EdgeType.DIRECTED);
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84 | }
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85 | }
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86 | return graph;
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87 | }
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88 |
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89 | static public class MarkovEdge {
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90 | double weight;
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91 | MarkovEdge(double weight) { this.weight = weight; }
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92 | public String toString() { return ""+weight; }
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93 | }
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94 |
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95 | public double calcEntropy() {
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96 | Matrix transmissionMatrix = getTransmissionMatrix();
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97 | List<Event<?>> knownSymbols = new ArrayList<Event<?>>(trie.getKnownSymbols());
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98 | int numStates = knownSymbols.size();
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99 |
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100 | int startStateIndex = knownSymbols.indexOf(Event.STARTEVENT);
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101 | int endStateIndex = knownSymbols.indexOf(Event.ENDEVENT);
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102 | if( startStateIndex==-1 ) {
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103 | Console.printerrln("Error calculating entropy. Initial state of markov chain not found.");
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104 | return Double.NaN;
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105 | }
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106 | if( endStateIndex==-1 ) {
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107 | Console.printerrln("Error calculating entropy. End state of markov chain not found.");
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108 | return Double.NaN;
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109 | }
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110 | transmissionMatrix.set(endStateIndex, startStateIndex, 1);
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111 |
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112 | // Calculate stationary distribution by raising the power of the transmission matrix.
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113 | // The rank of the matrix should fall to 1 and each two should be the vector of the
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114 | // stationory distribution.
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115 | int iter = 0;
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116 | int rank = transmissionMatrix.rank();
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117 | Matrix stationaryMatrix = (Matrix) transmissionMatrix.clone();
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118 | while( iter<MAX_STATDIST_ITERATIONS && rank>1 ) {
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119 | stationaryMatrix = stationaryMatrix.times(stationaryMatrix);
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120 | rank = stationaryMatrix.rank();
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121 | iter++;
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122 | }
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123 |
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124 | if( rank!=1 ) {
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125 | Console.traceln("rank: " + rank);
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126 | Console.printerrln("Unable to calculate stationary distribution.");
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127 | return Double.NaN;
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128 | }
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129 |
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130 | double entropy = 0.0;
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131 | for( int i=0 ; i<numStates ; i++ ) {
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132 | for( int j=0 ; j<numStates ; j++ ) {
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133 | if( transmissionMatrix.get(i,j)!=0 ) {
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134 | double tmp = stationaryMatrix.get(i, 0);
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135 | tmp *= transmissionMatrix.get(i, j);
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136 | tmp *= Math.log(transmissionMatrix.get(i,j))/Math.log(2);
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137 | entropy -= tmp;
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138 | }
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139 | }
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140 | }
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141 | return entropy;
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142 | }
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143 |
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144 | }
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