Java Code Examples for org.apache.commons.math3.ml.distance.EuclideanDistance#compute()
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org.apache.commons.math3.ml.distance.EuclideanDistance#compute() .
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Example 1
Source File: EuclideanDistanceEvaluator.java From lucene-solr with Apache License 2.0 | 6 votes |
@Override @SuppressWarnings({"unchecked"}) public Object doWork(Object first, Object second) throws IOException{ if(null == first){ throw new IOException(String.format(Locale.ROOT,"Invalid expression %s - null found for the first value",toExpression(constructingFactory))); } if(null == second){ throw new IOException(String.format(Locale.ROOT,"Invalid expression %s - null found for the second value",toExpression(constructingFactory))); } if(!(first instanceof List<?>)){ throw new IOException(String.format(Locale.ROOT,"Invalid expression %s - found type %s for the first value, expecting a list of numbers",toExpression(constructingFactory), first.getClass().getSimpleName())); } if(!(second instanceof List<?>)){ throw new IOException(String.format(Locale.ROOT,"Invalid expression %s - found type %s for the second value, expecting a list of numbers",toExpression(constructingFactory), first.getClass().getSimpleName())); } EuclideanDistance distance = new EuclideanDistance(); return distance.compute( ((List)first).stream().mapToDouble(value -> ((BigDecimal)value).doubleValue()).toArray(), ((List)second).stream().mapToDouble(value -> ((BigDecimal)value).doubleValue()).toArray() ); }
Example 2
Source File: HierarchicalClustering.java From HMMRATAC with GNU General Public License v3.0 | 6 votes |
private void iterate(){ ArrayList<ClusterNode> temp = new ArrayList<ClusterNode>(); EuclideanDistance ed = new EuclideanDistance(); for (int i = 0; i < clusters.size();i++){ double min = Double.POSITIVE_INFINITY; int best = -1; for (int a = 0; a < clusters.size();a++){ if (i != a){ double dis = ed.compute(clusters.get(i).getKey(), clusters.get(a).getKey()); if (dis < min){ min = dis; best = a; } } } } }
Example 3
Source File: WeightVectorNeighborhood.java From jMetal with MIT License | 6 votes |
private void initializeNeighborhood() { EuclideanDistance euclideanDistance = new EuclideanDistance(); double[] x = new double[numberOfWeightVectors]; int[] idx = new int[numberOfWeightVectors]; for (int i = 0; i < numberOfWeightVectors; i++) { // calculate the distances based on weight vectors for (int j = 0; j < numberOfWeightVectors; j++) { x[j] = euclideanDistance.compute(weightVector[i], weightVector[j]); idx[j] = j; } // find 'niche' nearest neighboring subproblems minFastSort(x, idx, numberOfWeightVectors, neighborhoodSize); System.arraycopy(idx, 0, neighborhood[i], 0, neighborhoodSize); } }
Example 4
Source File: DBScanModel.java From egads with GNU General Public License v3.0 | 5 votes |
@Override public void tune(DataSequence observedSeries, DataSequence expectedSeries) throws Exception { // Compute the time-series of errors. HashMap<String, ArrayList<Float>> allErrors = aes.initAnomalyErrors(observedSeries, expectedSeries); List<IdentifiedDoublePoint> points = new ArrayList<IdentifiedDoublePoint>(); EuclideanDistance ed = new EuclideanDistance(); int n = observedSeries.size(); for (int i = 0; i < n; i++) { double[] d = new double[(aes.getIndexToError().keySet()).size()]; for (int e = 0; e < (aes.getIndexToError().keySet()).size(); e++) { d[e] = allErrors.get(aes.getIndexToError().get(e)).get(i); } points.add(new IdentifiedDoublePoint(d, i)); } double sum = 0.0; double count = 0.0; for (int i = 0; i < n; i++) { for (int j = 0; j < n; j++) { sum += ed.compute(points.get(i).getPoint(), points.get(j).getPoint()); count++; } } eps = ((double) this.sDAutoSensitivity) * (sum / count); minPoints = ((int) Math.ceil(((double) this.amntAutoSensitivity) * ((double) n))); dbscan = new DBSCANClusterer<IdentifiedDoublePoint>(eps, minPoints); }