コード例 #1
0
ファイル: GesConcurrent.java プロジェクト: renjiey/tetrad
  // Cannot be done if the graph changes.
  public void setInitialGraph(Graph initialGraph) {
    initialGraph = GraphUtils.replaceNodes(initialGraph, variables);

    out.println("Initial graph variables: " + initialGraph.getNodes());
    out.println("Data set variables: " + variables);

    if (!new HashSet<Node>(initialGraph.getNodes()).equals(new HashSet<Node>(variables))) {
      throw new IllegalArgumentException("Variables aren't the same.");
    }

    this.initialGraph = initialGraph;
  }
コード例 #2
0
ファイル: GesConcurrent.java プロジェクト: renjiey/tetrad
  public Graph search(List<Node> nodes) {
    long startTime = System.currentTimeMillis();
    localScoreCache.clear();

    if (!dataSet().getVariables().containsAll(nodes)) {
      throw new IllegalArgumentException("All of the nodes must be in " + "the supplied data set.");
    }

    Graph graph;

    if (initialGraph == null) {
      graph = new EdgeListGraphSingleConnections(nodes);
    } else {
      initialGraph = GraphUtils.replaceNodes(initialGraph, variables);
      graph = new EdgeListGraphSingleConnections(initialGraph);
    }

    topGraphs.clear();

    buildIndexing(graph);
    addRequiredEdges(graph);
    score = 0.0;

    // Do forward search.
    fes(graph, nodes);

    // Do backward search.
    bes(graph);

    long endTime = System.currentTimeMillis();
    this.elapsedTime = endTime - startTime;
    this.logger.log("graph", "\nReturning this graph: " + graph);

    this.logger.log("info", "Elapsed time = " + (elapsedTime) / 1000. + " s");
    this.logger.flush();

    return graph;
  }
コード例 #3
0
ファイル: TestMimbuild3.java プロジェクト: jdramsey/tetrad
  public void rtest4() {
    System.out.println("SHD\tP");
    //        System.out.println("MB1\tMB2\tMB3\tMB4\tMB5\tMB6");

    Graph mim = DataGraphUtils.randomSingleFactorModel(5, 5, 8, 0, 0, 0);

    Graph mimStructure = structure(mim);

    SemPm pm = new SemPm(mim);
    SemImInitializationParams params = new SemImInitializationParams();
    params.setCoefRange(0.5, 1.5);

    NumberFormat nf = new DecimalFormat("0.0000");

    int totalError = 0;
    int errorCount = 0;

    int maxScore = 0;
    int maxNumMeasures = 0;
    double maxP = 0.0;

    for (int r = 0; r < 1; r++) {
      SemIm im = new SemIm(pm, params);

      DataSet data = im.simulateData(1000, false);

      mim = GraphUtils.replaceNodes(mim, data.getVariables());
      List<List<Node>> trueClusters = MimUtils.convertToClusters2(mim);

      CovarianceMatrix _cov = new CovarianceMatrix(data);

      ICovarianceMatrix cov = DataUtils.reorderColumns(_cov);

      String algorithm = "FOFC";
      Graph searchGraph;
      List<List<Node>> partition;

      if (algorithm.equals("FOFC")) {
        FindOneFactorClusters fofc =
            new FindOneFactorClusters(cov, TestType.TETRAD_WISHART, 0.001f);
        searchGraph = fofc.search();
        searchGraph = GraphUtils.replaceNodes(searchGraph, data.getVariables());
        partition = MimUtils.convertToClusters2(searchGraph);
      } else if (algorithm.equals("BPC")) {
        TestType testType = TestType.TETRAD_WISHART;
        TestType purifyType = TestType.TETRAD_BASED2;

        BuildPureClusters bpc = new BuildPureClusters(data, 0.001, testType, purifyType);
        searchGraph = bpc.search();

        partition = MimUtils.convertToClusters2(searchGraph);
      } else {
        throw new IllegalStateException();
      }

      mimStructure = GraphUtils.replaceNodes(mimStructure, data.getVariables());

      List<String> latentVarList = reidentifyVariables(mim, data, partition, 2);

      Graph mimbuildStructure;

      Mimbuild2 mimbuild = new Mimbuild2();
      mimbuild.setAlpha(0.001);
      mimbuild.setMinClusterSize(3);

      try {
        mimbuildStructure = mimbuild.search(partition, latentVarList, cov);
      } catch (Exception e) {
        e.printStackTrace();
        continue;
      }

      mimbuildStructure = GraphUtils.replaceNodes(mimbuildStructure, data.getVariables());
      mimbuildStructure = condense(mimStructure, mimbuildStructure);

      //            Graph mimSubgraph = new EdgeListGraph(mimStructure);
      //
      //            for (Node node : mimSubgraph.getNodes()) {
      //                if (!mimStructure.getNodes().contains(node)) {
      //                    mimSubgraph.removeNode(node);
      //                }
      //            }

      int shd = SearchGraphUtils.structuralHammingDistance(mimStructure, mimbuildStructure);
      boolean impureCluster = containsImpureCluster(partition, trueClusters);
      double pValue = mimbuild.getpValue();
      boolean pBelow05 = pValue < 0.05;
      boolean numClustersGreaterThan5 = partition.size() != 5;
      boolean error = false;

      //            boolean condition = impureCluster || numClustersGreaterThan5 || pBelow05;
      //            boolean condition = numClustersGreaterThan5 || pBelow05;
      boolean condition = numClustered(partition) == 40;

      if (!condition && (shd > 5)) {
        error = true;
      }

      if (!condition) {
        totalError += shd;
        errorCount++;
      }

      //            if (numClustered(partition) > maxNumMeasures) {
      //                maxNumMeasures = numClustered(partition);
      //                maxP = pValue;
      //                maxScore = shd;
      //                System.out.println("maxNumMeasures = " + maxNumMeasures);
      //                System.out.println("maxScore = " + maxScore);
      //                System.out.println("maxP = " + maxP);
      //                System.out.println("clusters = " + clusterSizes(partition, trueClusters));
      //            }
      //            else
      if (pValue > maxP) {
        maxScore = shd;
        maxP = mimbuild.getpValue();
        maxNumMeasures = numClustered(partition);
        System.out.println("maxNumMeasures = " + maxNumMeasures);
        System.out.println("maxScore = " + maxScore);
        System.out.println("maxP = " + maxP);
        System.out.println("clusters = " + clusterSizes(partition, trueClusters));
      }

      System.out.print(
          shd
              + "\t"
              + nf.format(pValue)
              + " "
              //                            + (error ? 1 : 0) + " "
              //                            + (pBelow05 ? "P < 0.05 " : "")
              //                            + (impureCluster ? "Impure cluster " : "")
              //                            + (numClustersGreaterThan5 ? "# Clusters != 5 " : "")
              //                            + clusterSizes(partition, trueClusters)
              + numClustered(partition));

      System.out.println();
    }

    System.out.println("\nAvg SHD for not-flagged cases = " + (totalError / (double) errorCount));

    System.out.println("maxNumMeasures = " + maxNumMeasures);
    System.out.println("maxScore = " + maxScore);
    System.out.println("maxP = " + maxP);
  }
コード例 #4
0
  /**
   * Executes the algorithm, producing (at least) a result workbench. Must be implemented in the
   * extending class.
   */
  public void execute() {
    Object source = dataWrapper.getSelectedDataModel();

    DataModel dataModel = (DataModel) source;

    IKnowledge knowledge = params2.getKnowledge();

    if (initialGraph == null) {
      initialGraph = new EdgeListGraph(dataModel.getVariables());
    }

    Graph graph2 = new EdgeListGraph(initialGraph);
    graph2 = GraphUtils.replaceNodes(graph2, dataModel.getVariables());

    Bff search;

    if (dataModel instanceof DataSet) {
      DataSet dataSet = (DataSet) dataModel;

      if (getAlgorithmType() == AlgorithmType.BEAM) {
        search = new BffBeam(graph2, dataSet, knowledge);
      } else if (getAlgorithmType() == AlgorithmType.GES) {
        search = new BffGes(graph2, dataSet);
        search.setKnowledge(knowledge);
      } else {
        throw new IllegalStateException();
      }
    } else if (dataModel instanceof CovarianceMatrix) {
      CovarianceMatrix covarianceMatrix = (CovarianceMatrix) dataModel;

      if (getAlgorithmType() == AlgorithmType.BEAM) {
        search = new BffBeam(graph2, covarianceMatrix, knowledge);
      } else if (getAlgorithmType() == AlgorithmType.GES) {
        throw new IllegalArgumentException(
            "GES method requires a dataset; a covariance matrix was provided.");
        //                search = new BffGes(graph2, covarianceMatrix);
        //                search.setKnowledge(knowledge);
      } else {
        throw new IllegalStateException();
      }
    } else {
      throw new IllegalStateException();
    }

    PcIndTestParams indTestParams = (PcIndTestParams) getParams().getIndTestParams();

    search.setAlpha(indTestParams.getAlpha());
    search.setBeamWidth(indTestParams.getBeamWidth());
    search.setHighPValueAlpha(indTestParams.getZeroEdgeP());
    this.graph = search.search();

    //        this.graph = search.getNewSemIm().getSemPm().getGraph();

    setOriginalSemIm(search.getOriginalSemIm());
    this.newSemIm = search.getNewSemIm();
    fireGraphChange(graph);

    if (getSourceGraph() != null) {
      GraphUtils.arrangeBySourceGraph(graph, getSourceGraph());
    } else if (knowledge.isDefaultToKnowledgeLayout()) {
      SearchGraphUtils.arrangeByKnowledgeTiers(graph, knowledge);
    } else {
      GraphUtils.circleLayout(graph, 200, 200, 150);
    }

    setResultGraph(SearchGraphUtils.patternForDag(graph, knowledge));
  }