| 1 | /* |
|---|
| 2 | * This program is free software; you can redistribute it and/or modify |
|---|
| 3 | * it under the terms of the GNU General Public License as published by |
|---|
| 4 | * the Free Software Foundation; either version 2 of the License, or |
|---|
| 5 | * (at your option) any later version. |
|---|
| 6 | * |
|---|
| 7 | * This program is distributed in the hope that it will be useful, |
|---|
| 8 | * but WITHOUT ANY WARRANTY; without even the implied warranty of |
|---|
| 9 | * MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the |
|---|
| 10 | * GNU General Public License for more details. |
|---|
| 11 | * |
|---|
| 12 | * You should have received a copy of the GNU General Public License |
|---|
| 13 | * along with this program; if not, write to the Free Software |
|---|
| 14 | * Foundation, Inc., 675 Mass Ave, Cambridge, MA 02139, USA. |
|---|
| 15 | */ |
|---|
| 16 | |
|---|
| 17 | /* |
|---|
| 18 | * RemoteBoundaryVisualizerSubTask.java |
|---|
| 19 | * Copyright (C) 2003 University of Waikato, Hamilton, New Zealand |
|---|
| 20 | * |
|---|
| 21 | */ |
|---|
| 22 | |
|---|
| 23 | package weka.gui.boundaryvisualizer; |
|---|
| 24 | |
|---|
| 25 | import weka.classifiers.Classifier; |
|---|
| 26 | import weka.classifiers.AbstractClassifier; |
|---|
| 27 | import weka.core.Instance; |
|---|
| 28 | import weka.core.DenseInstance; |
|---|
| 29 | import weka.core.Instances; |
|---|
| 30 | import weka.core.Utils; |
|---|
| 31 | import weka.experiment.Task; |
|---|
| 32 | import weka.experiment.TaskStatusInfo; |
|---|
| 33 | |
|---|
| 34 | import java.util.Random; |
|---|
| 35 | |
|---|
| 36 | /** |
|---|
| 37 | * Class that encapsulates a sub task for distributed boundary |
|---|
| 38 | * visualization. Produces probability distributions for each pixel |
|---|
| 39 | * in one row of the visualization. |
|---|
| 40 | * |
|---|
| 41 | * @author <a href="mailto:mhall@cs.waikato.ac.nz">Mark Hall</a> |
|---|
| 42 | * @version $Revision: 5987 $ |
|---|
| 43 | * @since 1.0 |
|---|
| 44 | * @see Task |
|---|
| 45 | */ |
|---|
| 46 | public class RemoteBoundaryVisualizerSubTask implements Task { |
|---|
| 47 | |
|---|
| 48 | // status information for this sub task |
|---|
| 49 | private TaskStatusInfo m_status = new TaskStatusInfo(); |
|---|
| 50 | |
|---|
| 51 | // the result of this sub task |
|---|
| 52 | private RemoteResult m_result; |
|---|
| 53 | |
|---|
| 54 | // which row are we doing |
|---|
| 55 | private int m_rowNumber; |
|---|
| 56 | |
|---|
| 57 | // width and height of the visualization |
|---|
| 58 | private int m_panelHeight; |
|---|
| 59 | private int m_panelWidth; |
|---|
| 60 | |
|---|
| 61 | // the classifier to use |
|---|
| 62 | private Classifier m_classifier; |
|---|
| 63 | |
|---|
| 64 | // the kernel density estimator |
|---|
| 65 | private DataGenerator m_dataGenerator; |
|---|
| 66 | |
|---|
| 67 | // the training data |
|---|
| 68 | private Instances m_trainingData; |
|---|
| 69 | |
|---|
| 70 | // attributes for visualizing on (fixed dimensions) |
|---|
| 71 | private int m_xAttribute; |
|---|
| 72 | private int m_yAttribute; |
|---|
| 73 | |
|---|
| 74 | // pixel width and height in terms of attribute values |
|---|
| 75 | private double m_pixHeight; |
|---|
| 76 | private double m_pixWidth; |
|---|
| 77 | |
|---|
| 78 | // min, max of these attributes |
|---|
| 79 | private double m_minX; |
|---|
| 80 | private double m_minY; |
|---|
| 81 | private double m_maxX; |
|---|
| 82 | private double m_maxY; |
|---|
| 83 | |
|---|
| 84 | // number of samples to take from each region in the fixed dimensions |
|---|
| 85 | private int m_numOfSamplesPerRegion = 2; |
|---|
| 86 | |
|---|
| 87 | // number of samples per kernel = base ^ (# non-fixed dimensions) |
|---|
| 88 | private int m_numOfSamplesPerGenerator; |
|---|
| 89 | private double m_samplesBase = 2.0; |
|---|
| 90 | |
|---|
| 91 | // A random number generator |
|---|
| 92 | private Random m_random; |
|---|
| 93 | |
|---|
| 94 | private double [] m_weightingAttsValues; |
|---|
| 95 | private boolean [] m_attsToWeightOn; |
|---|
| 96 | private double [] m_vals; |
|---|
| 97 | private double [] m_dist; |
|---|
| 98 | private Instance m_predInst; |
|---|
| 99 | |
|---|
| 100 | /** |
|---|
| 101 | * Set the row number for this sub task |
|---|
| 102 | * |
|---|
| 103 | * @param rn the row number |
|---|
| 104 | */ |
|---|
| 105 | public void setRowNumber(int rn) { |
|---|
| 106 | m_rowNumber = rn; |
|---|
| 107 | } |
|---|
| 108 | |
|---|
| 109 | /** |
|---|
| 110 | * Set the width of the visualization |
|---|
| 111 | * |
|---|
| 112 | * @param pw the width |
|---|
| 113 | */ |
|---|
| 114 | public void setPanelWidth(int pw) { |
|---|
| 115 | m_panelWidth = pw; |
|---|
| 116 | } |
|---|
| 117 | |
|---|
| 118 | /** |
|---|
| 119 | * Set the height of the visualization |
|---|
| 120 | * |
|---|
| 121 | * @param ph the height |
|---|
| 122 | */ |
|---|
| 123 | public void setPanelHeight(int ph) { |
|---|
| 124 | m_panelHeight = ph; |
|---|
| 125 | } |
|---|
| 126 | |
|---|
| 127 | /** |
|---|
| 128 | * Set the height of a pixel |
|---|
| 129 | * |
|---|
| 130 | * @param ph the height of a pixel |
|---|
| 131 | */ |
|---|
| 132 | public void setPixHeight(double ph) { |
|---|
| 133 | m_pixHeight = ph; |
|---|
| 134 | } |
|---|
| 135 | |
|---|
| 136 | /** |
|---|
| 137 | * Set the width of a pixel |
|---|
| 138 | * |
|---|
| 139 | * @param pw the width of a pixel |
|---|
| 140 | */ |
|---|
| 141 | public void setPixWidth(double pw) { |
|---|
| 142 | m_pixWidth = pw; |
|---|
| 143 | } |
|---|
| 144 | |
|---|
| 145 | /** |
|---|
| 146 | * Set the classifier to use |
|---|
| 147 | * |
|---|
| 148 | * @param dc the classifier |
|---|
| 149 | */ |
|---|
| 150 | public void setClassifier(Classifier dc) { |
|---|
| 151 | m_classifier = dc; |
|---|
| 152 | } |
|---|
| 153 | |
|---|
| 154 | /** |
|---|
| 155 | * Set the density estimator to use |
|---|
| 156 | * |
|---|
| 157 | * @param dg the density estimator |
|---|
| 158 | */ |
|---|
| 159 | public void setDataGenerator(DataGenerator dg) { |
|---|
| 160 | m_dataGenerator = dg; |
|---|
| 161 | } |
|---|
| 162 | |
|---|
| 163 | /** |
|---|
| 164 | * Set the training data |
|---|
| 165 | * |
|---|
| 166 | * @param i the training data |
|---|
| 167 | */ |
|---|
| 168 | public void setInstances(Instances i) { |
|---|
| 169 | m_trainingData = i; |
|---|
| 170 | } |
|---|
| 171 | |
|---|
| 172 | /** |
|---|
| 173 | * Set the minimum and maximum values of the x axis fixed dimension |
|---|
| 174 | * |
|---|
| 175 | * @param minx a <code>double</code> value |
|---|
| 176 | * @param maxx a <code>double</code> value |
|---|
| 177 | */ |
|---|
| 178 | public void setMinMaxX(double minx, double maxx) { |
|---|
| 179 | m_minX = minx; m_maxX = maxx; |
|---|
| 180 | } |
|---|
| 181 | |
|---|
| 182 | /** |
|---|
| 183 | * Set the minimum and maximum values of the y axis fixed dimension |
|---|
| 184 | * |
|---|
| 185 | * @param miny a <code>double</code> value |
|---|
| 186 | * @param maxy a <code>double</code> value |
|---|
| 187 | */ |
|---|
| 188 | public void setMinMaxY(double miny, double maxy) { |
|---|
| 189 | m_minY = miny; m_maxY = maxy; |
|---|
| 190 | } |
|---|
| 191 | |
|---|
| 192 | /** |
|---|
| 193 | * Set the x axis fixed dimension |
|---|
| 194 | * |
|---|
| 195 | * @param xatt an <code>int</code> value |
|---|
| 196 | */ |
|---|
| 197 | public void setXAttribute(int xatt) { |
|---|
| 198 | m_xAttribute = xatt; |
|---|
| 199 | } |
|---|
| 200 | |
|---|
| 201 | /** |
|---|
| 202 | * Set the y axis fixed dimension |
|---|
| 203 | * |
|---|
| 204 | * @param yatt an <code>int</code> value |
|---|
| 205 | */ |
|---|
| 206 | public void setYAttribute(int yatt) { |
|---|
| 207 | m_yAttribute = yatt; |
|---|
| 208 | } |
|---|
| 209 | |
|---|
| 210 | /** |
|---|
| 211 | * Set the number of points to uniformly sample from a region (fixed |
|---|
| 212 | * dimensions). |
|---|
| 213 | * |
|---|
| 214 | * @param num an <code>int</code> value |
|---|
| 215 | */ |
|---|
| 216 | public void setNumSamplesPerRegion(int num) { |
|---|
| 217 | m_numOfSamplesPerRegion = num; |
|---|
| 218 | } |
|---|
| 219 | |
|---|
| 220 | /** |
|---|
| 221 | * Set the base for computing the number of samples to obtain from each |
|---|
| 222 | * generator. number of samples = base ^ (# non fixed dimensions) |
|---|
| 223 | * |
|---|
| 224 | * @param ksb a <code>double</code> value |
|---|
| 225 | */ |
|---|
| 226 | public void setGeneratorSamplesBase(double ksb) { |
|---|
| 227 | m_samplesBase = ksb; |
|---|
| 228 | } |
|---|
| 229 | |
|---|
| 230 | /** |
|---|
| 231 | * Perform the sub task |
|---|
| 232 | */ |
|---|
| 233 | public void execute() { |
|---|
| 234 | |
|---|
| 235 | m_random = new Random(m_rowNumber * 11); |
|---|
| 236 | m_dataGenerator.setSeed(m_rowNumber * 11); |
|---|
| 237 | m_result = new RemoteResult(m_rowNumber, m_panelWidth); |
|---|
| 238 | m_status.setTaskResult(m_result); |
|---|
| 239 | m_status.setExecutionStatus(TaskStatusInfo.PROCESSING); |
|---|
| 240 | |
|---|
| 241 | try { |
|---|
| 242 | m_numOfSamplesPerGenerator = |
|---|
| 243 | (int)Math.pow(m_samplesBase, m_trainingData.numAttributes()-3); |
|---|
| 244 | if (m_trainingData == null) { |
|---|
| 245 | throw new Exception("No training data set (BoundaryPanel)"); |
|---|
| 246 | } |
|---|
| 247 | if (m_classifier == null) { |
|---|
| 248 | throw new Exception("No classifier set (BoundaryPanel)"); |
|---|
| 249 | } |
|---|
| 250 | if (m_dataGenerator == null) { |
|---|
| 251 | throw new Exception("No data generator set (BoundaryPanel)"); |
|---|
| 252 | } |
|---|
| 253 | if (m_trainingData.attribute(m_xAttribute).isNominal() || |
|---|
| 254 | m_trainingData.attribute(m_yAttribute).isNominal()) { |
|---|
| 255 | throw new Exception("Visualization dimensions must be numeric " |
|---|
| 256 | +"(RemoteBoundaryVisualizerSubTask)"); |
|---|
| 257 | } |
|---|
| 258 | |
|---|
| 259 | m_attsToWeightOn = new boolean[m_trainingData.numAttributes()]; |
|---|
| 260 | m_attsToWeightOn[m_xAttribute] = true; |
|---|
| 261 | m_attsToWeightOn[m_yAttribute] = true; |
|---|
| 262 | |
|---|
| 263 | // generate samples |
|---|
| 264 | m_weightingAttsValues = new double [m_attsToWeightOn.length]; |
|---|
| 265 | m_vals = new double[m_trainingData.numAttributes()]; |
|---|
| 266 | m_predInst = new DenseInstance(1.0, m_vals); |
|---|
| 267 | m_predInst.setDataset(m_trainingData); |
|---|
| 268 | |
|---|
| 269 | System.err.println("Executing row number "+m_rowNumber); |
|---|
| 270 | for (int j = 0; j < m_panelWidth; j++) { |
|---|
| 271 | double [] preds = calculateRegionProbs(j, m_rowNumber); |
|---|
| 272 | m_result.setLocationProbs(j, preds); |
|---|
| 273 | m_result. |
|---|
| 274 | setPercentCompleted((int)(100 * ((double)j / (double)m_panelWidth))); |
|---|
| 275 | } |
|---|
| 276 | } catch (Exception ex) { |
|---|
| 277 | m_status.setExecutionStatus(TaskStatusInfo.FAILED); |
|---|
| 278 | m_status.setStatusMessage("Row "+m_rowNumber+" failed."); |
|---|
| 279 | System.err.print(ex); |
|---|
| 280 | return; |
|---|
| 281 | } |
|---|
| 282 | |
|---|
| 283 | // finished |
|---|
| 284 | m_status.setExecutionStatus(TaskStatusInfo.FINISHED); |
|---|
| 285 | m_status.setStatusMessage("Row "+m_rowNumber+" completed successfully."); |
|---|
| 286 | } |
|---|
| 287 | |
|---|
| 288 | |
|---|
| 289 | private double [] calculateRegionProbs(int j, int i) throws Exception { |
|---|
| 290 | double [] sumOfProbsForRegion = |
|---|
| 291 | new double [m_trainingData.classAttribute().numValues()]; |
|---|
| 292 | |
|---|
| 293 | for (int u = 0; u < m_numOfSamplesPerRegion; u++) { |
|---|
| 294 | |
|---|
| 295 | double [] sumOfProbsForLocation = |
|---|
| 296 | new double [m_trainingData.classAttribute().numValues()]; |
|---|
| 297 | |
|---|
| 298 | m_weightingAttsValues[m_xAttribute] = getRandomX(j); |
|---|
| 299 | m_weightingAttsValues[m_yAttribute] = getRandomY(m_panelHeight-i-1); |
|---|
| 300 | |
|---|
| 301 | m_dataGenerator.setWeightingValues(m_weightingAttsValues); |
|---|
| 302 | |
|---|
| 303 | double [] weights = m_dataGenerator.getWeights(); |
|---|
| 304 | double sumOfWeights = Utils.sum(weights); |
|---|
| 305 | int [] indices = Utils.sort(weights); |
|---|
| 306 | |
|---|
| 307 | // Prune 1% of weight mass |
|---|
| 308 | int [] newIndices = new int[indices.length]; |
|---|
| 309 | double sumSoFar = 0; |
|---|
| 310 | double criticalMass = 0.99 * sumOfWeights; |
|---|
| 311 | int index = weights.length - 1; int counter = 0; |
|---|
| 312 | for (int z = weights.length - 1; z >= 0; z--) { |
|---|
| 313 | newIndices[index--] = indices[z]; |
|---|
| 314 | sumSoFar += weights[indices[z]]; |
|---|
| 315 | counter++; |
|---|
| 316 | if (sumSoFar > criticalMass) { |
|---|
| 317 | break; |
|---|
| 318 | } |
|---|
| 319 | } |
|---|
| 320 | indices = new int[counter]; |
|---|
| 321 | System.arraycopy(newIndices, index + 1, indices, 0, counter); |
|---|
| 322 | |
|---|
| 323 | for (int z = 0; z < m_numOfSamplesPerGenerator; z++) { |
|---|
| 324 | |
|---|
| 325 | m_dataGenerator.setWeightingValues(m_weightingAttsValues); |
|---|
| 326 | double [][] values = m_dataGenerator.generateInstances(indices); |
|---|
| 327 | |
|---|
| 328 | for (int q = 0; q < values.length; q++) { |
|---|
| 329 | if (values[q] != null) { |
|---|
| 330 | System.arraycopy(values[q], 0, m_vals, 0, m_vals.length); |
|---|
| 331 | m_vals[m_xAttribute] = m_weightingAttsValues[m_xAttribute]; |
|---|
| 332 | m_vals[m_yAttribute] = m_weightingAttsValues[m_yAttribute]; |
|---|
| 333 | |
|---|
| 334 | // classify the instance |
|---|
| 335 | m_dist = m_classifier.distributionForInstance(m_predInst); |
|---|
| 336 | |
|---|
| 337 | for (int k = 0; k < sumOfProbsForLocation.length; k++) { |
|---|
| 338 | sumOfProbsForLocation[k] += (m_dist[k] * weights[q]); |
|---|
| 339 | } |
|---|
| 340 | } |
|---|
| 341 | } |
|---|
| 342 | } |
|---|
| 343 | |
|---|
| 344 | for (int k = 0; k < sumOfProbsForRegion.length; k++) { |
|---|
| 345 | sumOfProbsForRegion[k] += (sumOfProbsForLocation[k] * sumOfWeights); |
|---|
| 346 | } |
|---|
| 347 | } |
|---|
| 348 | |
|---|
| 349 | // average |
|---|
| 350 | Utils.normalize(sumOfProbsForRegion); |
|---|
| 351 | |
|---|
| 352 | // cache |
|---|
| 353 | double [] tempDist = new double[sumOfProbsForRegion.length]; |
|---|
| 354 | System.arraycopy(sumOfProbsForRegion, 0, tempDist, |
|---|
| 355 | 0, sumOfProbsForRegion.length); |
|---|
| 356 | |
|---|
| 357 | return tempDist; |
|---|
| 358 | } |
|---|
| 359 | |
|---|
| 360 | /** |
|---|
| 361 | * Return a random x attribute value contained within |
|---|
| 362 | * the pix'th horizontal pixel |
|---|
| 363 | * |
|---|
| 364 | * @param pix the horizontal pixel number |
|---|
| 365 | * @return a value in attribute space |
|---|
| 366 | */ |
|---|
| 367 | private double getRandomX(int pix) { |
|---|
| 368 | |
|---|
| 369 | double minPix = m_minX + (pix * m_pixWidth); |
|---|
| 370 | |
|---|
| 371 | return minPix + m_random.nextDouble() * m_pixWidth; |
|---|
| 372 | } |
|---|
| 373 | |
|---|
| 374 | /** |
|---|
| 375 | * Return a random y attribute value contained within |
|---|
| 376 | * the pix'th vertical pixel |
|---|
| 377 | * |
|---|
| 378 | * @param pix the vertical pixel number |
|---|
| 379 | * @return a value in attribute space |
|---|
| 380 | */ |
|---|
| 381 | private double getRandomY(int pix) { |
|---|
| 382 | |
|---|
| 383 | double minPix = m_minY + (pix * m_pixHeight); |
|---|
| 384 | |
|---|
| 385 | return minPix + m_random.nextDouble() * m_pixHeight; |
|---|
| 386 | } |
|---|
| 387 | |
|---|
| 388 | /** |
|---|
| 389 | * Return status information for this sub task |
|---|
| 390 | * |
|---|
| 391 | * @return a <code>TaskStatusInfo</code> value |
|---|
| 392 | */ |
|---|
| 393 | public TaskStatusInfo getTaskStatus() { |
|---|
| 394 | return m_status; |
|---|
| 395 | } |
|---|
| 396 | } |
|---|