static double expE(double val) { double pr = RobustMath.exp(val); if (Double.isNaN(pr) || Double.isInfinite(pr)) { try { throw new Exception( "Overflow error when taking exp of " + val + "\n Try running the CRF with the following option \"trainer ll\" to perform computations in the log-space."); } catch (Exception e) { System.out.println(e.getMessage()); e.printStackTrace(); return Double.MAX_VALUE; } } return pr; }
static double expLE(double val) { double pr = RobustMath.exp(val); if (Double.isNaN(pr) || Double.isInfinite(pr)) { try { throw new Exception( "Overflow error when taking exp of " + val + " you might need to redesign feature values so as to not reach such high values"); } catch (Exception e) { System.out.println(e.getMessage()); e.printStackTrace(); return Double.MAX_VALUE; } } return pr; }
protected double computeFunctionGradientLL(double lambda[], double grad[]) { double logli = 0; try { for (int f = 0; f < lambda.length; f++) { grad[f] = -1 * lambda[f] * params.invSigmaSquare; logli -= ((lambda[f] * lambda[f]) * params.invSigmaSquare) / 2; } diter.startScan(); if (featureGenCache != null) featureGenCache.startDataScan(); for (int numRecord = 0; diter.hasNext(); numRecord++) { DataSequence dataSeq = (DataSequence) diter.next(); if (featureGenCache != null) featureGenCache.nextDataIndex(); if (params.debugLvl > 1) { Util.printDbg("Read next seq: " + numRecord + " logli " + logli); } alpha_Y.assign(0); for (int f = 0; f < lambda.length; f++) ExpF[f] = RobustMath.LOG0; if ((beta_Y == null) || (beta_Y.length < dataSeq.length())) { beta_Y = new DenseDoubleMatrix1D[2 * dataSeq.length()]; for (int i = 0; i < beta_Y.length; i++) beta_Y[i] = new DenseDoubleMatrix1D(numY); } // compute beta values in a backward scan. // also scale beta-values to 1 to avoid numerical problems. beta_Y[dataSeq.length() - 1].assign(0); for (int i = dataSeq.length() - 1; i > 0; i--) { if (params.debugLvl > 2) { /* Util.printDbg("Features fired"); featureGenerator.startScanFeaturesAt(dataSeq, i); while (featureGenerator.hasNext()) { Feature feature = featureGenerator.next(); Util.printDbg(feature.toString()); } */ } // compute the Mi matrix initMDone = computeLogMi( featureGenerator, lambda, dataSeq, i, Mi_YY, Ri_Y, false, reuseM, initMDone); tmp_Y.assign(beta_Y[i]); tmp_Y.assign(Ri_Y, sumFunc); RobustMath.logMult(Mi_YY, tmp_Y, beta_Y[i - 1], 1, 0, false, edgeGen); } double thisSeqLogli = 0; for (int i = 0; i < dataSeq.length(); i++) { // compute the Mi matrix initMDone = computeLogMi( featureGenerator, lambda, dataSeq, i, Mi_YY, Ri_Y, false, reuseM, initMDone); // find features that fire at this position.. featureGenerator.startScanFeaturesAt(dataSeq, i); if (i > 0) { tmp_Y.assign(alpha_Y); RobustMath.logMult(Mi_YY, tmp_Y, newAlpha_Y, 1, 0, true, edgeGen); newAlpha_Y.assign(Ri_Y, sumFunc); } else { newAlpha_Y.assign(Ri_Y); } while (featureGenerator.hasNext()) { Feature feature = featureGenerator.next(); int f = feature.index(); int yp = feature.y(); int yprev = feature.yprev(); float val = feature.value(); if ((dataSeq.y(i) == yp) && (((i - 1 >= 0) && (yprev == dataSeq.y(i - 1))) || (yprev < 0))) { grad[f] += val; thisSeqLogli += val * lambda[f]; if (params.debugLvl > 2) { System.out.println("Feature fired " + f + " " + feature); } } if (yprev < 0) { ExpF[f] = RobustMath.logSumExp( ExpF[f], newAlpha_Y.get(yp) + RobustMath.log(val) + beta_Y[i].get(yp)); } else { ExpF[f] = RobustMath.logSumExp( ExpF[f], alpha_Y.get(yprev) + Ri_Y.get(yp) + Mi_YY.get(yprev, yp) + RobustMath.log(val) + beta_Y[i].get(yp)); } } alpha_Y.assign(newAlpha_Y); if (params.debugLvl > 2) { System.out.println("Alpha-i " + alpha_Y.toString()); System.out.println("Ri " + Ri_Y.toString()); System.out.println("Mi " + Mi_YY.toString()); System.out.println("Beta-i " + beta_Y[i].toString()); } } double lZx = RobustMath.logSumExp(alpha_Y); thisSeqLogli -= lZx; logli += thisSeqLogli; // update grad. for (int f = 0; f < grad.length; f++) { grad[f] -= RobustMath.exp(ExpF[f] - lZx); } if (params.debugLvl > 1) { System.out.println( "Sequence " + thisSeqLogli + " logli " + logli + " log(Zx) " + lZx + " Zx " + Math.exp(lZx)); } } if (params.debugLvl > 2) { for (int f = 0; f < lambda.length; f++) System.out.print(lambda[f] + " "); System.out.println(" :x"); for (int f = 0; f < lambda.length; f++) System.out.print(grad[f] + " "); System.out.println(" :g"); } if (params.debugLvl > 0) Util.printDbg( "Iteration " + icall + " log-likelihood " + logli + " norm(grad logli) " + norm(grad) + " norm(x) " + norm(lambda)); } catch (Exception e) { System.out.println("Alpha-i " + alpha_Y.toString()); System.out.println("Ri " + Ri_Y.toString()); System.out.println("Mi " + Mi_YY.toString()); e.printStackTrace(); System.exit(0); } return logli; }