private TwoDimTable createModelSummaryTable(KMeansModel.KMeansOutput output) { List<String> colHeaders = new ArrayList<>(); List<String> colTypes = new ArrayList<>(); List<String> colFormat = new ArrayList<>(); colHeaders.add("Number of Rows"); colTypes.add("long"); colFormat.add("%d"); colHeaders.add("Number of Clusters"); colTypes.add("long"); colFormat.add("%d"); colHeaders.add("Number of Categorical Columns"); colTypes.add("long"); colFormat.add("%d"); colHeaders.add("Number of Iterations"); colTypes.add("long"); colFormat.add("%d"); colHeaders.add("Within Cluster Sum of Squares"); colTypes.add("double"); colFormat.add("%.5f"); colHeaders.add("Total Sum of Squares"); colTypes.add("double"); colFormat.add("%.5f"); colHeaders.add("Between Cluster Sum of Squares"); colTypes.add("double"); colFormat.add("%.5f"); final int rows = 1; TwoDimTable table = new TwoDimTable( "Model Summary", null, new String[rows], colHeaders.toArray(new String[0]), colTypes.toArray(new String[0]), colFormat.toArray(new String[0]), ""); int row = 0; int col = 0; table.set( row, col++, Math.round(_train.numRows() * (hasWeightCol() ? _train.lastVec().mean() : 1))); table.set(row, col++, output._centers_raw.length); table.set(row, col++, output._categorical_column_count); table.set(row, col++, output._iterations); table.set(row, col++, output._tot_withinss); table.set(row, col++, output._totss); table.set(row, col++, output._betweenss); return table; }
TotSS(double[] means, double[] mults, int[] modes, String[][] isCats, int[] card) { _means = means; _mults = mults; _modes = modes; _tss = 0; _isCats = isCats; _card = card; // Mean of numeric col is zero when standardized _gc = mults != null ? new double[means.length] : Arrays.copyOf(means, means.length); for (int i = 0; i < means.length; i++) { if (isCats[i] != null) _gc[i] = Math.min( Math.round(means[i]), _card[i] - 1); // TODO: Should set to majority class of categorical column } }