/** * Generates {@code d+1}-dimensional subspace candidates from the specified {@code d}-dimensional * subspaces. * * @param subspaces the {@code d}-dimensional subspaces * @return the {@code d+1}-dimensional subspace candidates */ private List<Subspace> generateSubspaceCandidates(List<Subspace> subspaces) { List<Subspace> candidates = new ArrayList<>(); if (subspaces.isEmpty()) { return candidates; } // Generate (d+1)-dimensional candidate subspaces int d = subspaces.get(0).dimensionality(); StringBuilder msgFine = new StringBuilder("\n"); if (LOG.isDebuggingFiner()) { msgFine.append("subspaces ").append(subspaces).append('\n'); } for (int i = 0; i < subspaces.size(); i++) { Subspace s1 = subspaces.get(i); for (int j = i + 1; j < subspaces.size(); j++) { Subspace s2 = subspaces.get(j); Subspace candidate = s1.join(s2); if (candidate != null) { if (LOG.isDebuggingFiner()) { msgFine.append("candidate: ").append(candidate.dimensonsToString()).append('\n'); } // prune irrelevant candidate subspaces List<Subspace> lowerSubspaces = lowerSubspaces(candidate); if (LOG.isDebuggingFiner()) { msgFine.append("lowerSubspaces: ").append(lowerSubspaces).append('\n'); } boolean irrelevantCandidate = false; for (Subspace s : lowerSubspaces) { if (!subspaces.contains(s)) { irrelevantCandidate = true; break; } } if (!irrelevantCandidate) { candidates.add(candidate); } } } } if (LOG.isDebuggingFiner()) { LOG.debugFiner(msgFine.toString()); } if (LOG.isDebugging()) { StringBuilder msg = new StringBuilder(); msg.append(d + 1).append("-dimensional candidate subspaces: "); for (Subspace candidate : candidates) { msg.append(candidate.dimensonsToString()).append(' '); } LOG.debug(msg.toString()); } return candidates; }
/** * Performs the SUBCLU algorithm on the given database. * * @param relation Relation to process * @return Clustering result */ public Clustering<SubspaceModel> run(Relation<V> relation) { final int dimensionality = RelationUtil.dimensionality(relation); StepProgress stepprog = LOG.isVerbose() ? new StepProgress(dimensionality) : null; // Generate all 1-dimensional clusters LOG.beginStep(stepprog, 1, "Generate all 1-dimensional clusters."); // mapping of dimensionality to set of subspaces HashMap<Integer, List<Subspace>> subspaceMap = new HashMap<>(); // list of 1-dimensional subspaces containing clusters List<Subspace> s_1 = new ArrayList<>(); subspaceMap.put(0, s_1); // mapping of subspaces to list of clusters TreeMap<Subspace, List<Cluster<Model>>> clusterMap = new TreeMap<>(new Subspace.DimensionComparator()); for (int d = 0; d < dimensionality; d++) { Subspace currentSubspace = new Subspace(d); List<Cluster<Model>> clusters = runDBSCAN(relation, null, currentSubspace); if (LOG.isDebuggingFiner()) { StringBuilder msg = new StringBuilder(); msg.append('\n') .append(clusters.size()) .append(" clusters in subspace ") .append(currentSubspace.dimensonsToString()) .append(": \n"); for (Cluster<Model> cluster : clusters) { msg.append(" " + cluster.getIDs() + "\n"); } LOG.debugFiner(msg.toString()); } if (!clusters.isEmpty()) { s_1.add(currentSubspace); clusterMap.put(currentSubspace, clusters); } } // Generate (d+1)-dimensional clusters from d-dimensional clusters for (int d = 0; d < dimensionality - 1; d++) { if (stepprog != null) { stepprog.beginStep( d + 2, "Generate " + (d + 2) + "-dimensional clusters from " + (d + 1) + "-dimensional clusters.", LOG); } List<Subspace> subspaces = subspaceMap.get(d); if (subspaces == null || subspaces.isEmpty()) { if (stepprog != null) { for (int dim = d + 1; dim < dimensionality - 1; dim++) { stepprog.beginStep( dim + 2, "Generation of" + (dim + 2) + "-dimensional clusters not applicable, because no more " + (d + 2) + "-dimensional subspaces found.", LOG); } } break; } List<Subspace> candidates = generateSubspaceCandidates(subspaces); List<Subspace> s_d = new ArrayList<>(); for (Subspace candidate : candidates) { Subspace bestSubspace = bestSubspace(subspaces, candidate, clusterMap); if (LOG.isDebuggingFine()) { LOG.debugFine( "best subspace of " + candidate.dimensonsToString() + ": " + bestSubspace.dimensonsToString()); } List<Cluster<Model>> bestSubspaceClusters = clusterMap.get(bestSubspace); List<Cluster<Model>> clusters = new ArrayList<>(); for (Cluster<Model> cluster : bestSubspaceClusters) { List<Cluster<Model>> candidateClusters = runDBSCAN(relation, cluster.getIDs(), candidate); if (!candidateClusters.isEmpty()) { clusters.addAll(candidateClusters); } } if (LOG.isDebuggingFine()) { StringBuilder msg = new StringBuilder(); msg.append(clusters.size() + " cluster(s) in subspace " + candidate + ": \n"); for (Cluster<Model> c : clusters) { msg.append(" " + c.getIDs() + "\n"); } LOG.debugFine(msg.toString()); } if (!clusters.isEmpty()) { s_d.add(candidate); clusterMap.put(candidate, clusters); } } if (!s_d.isEmpty()) { subspaceMap.put(d + 1, s_d); } } // build result int numClusters = 1; result = new Clustering<>("SUBCLU clustering", "subclu-clustering"); for (Subspace subspace : clusterMap.descendingKeySet()) { List<Cluster<Model>> clusters = clusterMap.get(subspace); for (Cluster<Model> cluster : clusters) { Cluster<SubspaceModel> newCluster = new Cluster<>(cluster.getIDs()); newCluster.setModel(new SubspaceModel(subspace, Centroid.make(relation, cluster.getIDs()))); newCluster.setName("cluster_" + numClusters++); result.addToplevelCluster(newCluster); } } LOG.setCompleted(stepprog); return result; }