/** * GT smoothing with least squares interpolation. This follows the procedure in Jurafsky and * Martin sect. 4.5.3. */ public void smoothAndNormalize() { Counter<Integer> cntCounter = new Counter<Integer>(); for (K tok : lm.keySet()) { int cnt = (int) lm.getCount(tok); cntCounter.incrementCount(cnt); } final double[] coeffs = runLogSpaceRegression(cntCounter); UNK_PROB = cntCounter.getCount(1) / lm.totalCount(); for (K tok : lm.keySet()) { double tokCnt = lm.getCount(tok); if (tokCnt <= unkCutoff) // Treat as unknown unkTokens.add(tok); if (tokCnt <= kCutoff) { // Smooth double cSmooth = katzEstimate(cntCounter, tokCnt, coeffs); lm.setCount(tok, cSmooth); } } // Normalize // Counters.normalize(lm); // MY COUNTER IS ALWAYS NORMALIZED AND AWESOME }
public double totalMass() { return lm.totalCount(); }