コード例 #1
0
ファイル: TrainCRF.java プロジェクト: carriercomm/PrologMUD
  /** This is (mostly) copied from CRF4.java */
  public boolean[][] labelConnectionsIn(
      Alphabet outputAlphabet, InstanceList trainingSet, String start) {
    int numLabels = outputAlphabet.size();
    boolean[][] connections = new boolean[numLabels][numLabels];
    for (int i = 0; i < trainingSet.size(); i++) {
      Instance instance = trainingSet.getInstance(i);
      FeatureSequence output = (FeatureSequence) instance.getTarget();
      for (int j = 1; j < output.size(); j++) {
        int sourceIndex = outputAlphabet.lookupIndex(output.get(j - 1));
        int destIndex = outputAlphabet.lookupIndex(output.get(j));
        assert (sourceIndex >= 0 && destIndex >= 0);
        connections[sourceIndex][destIndex] = true;
      }
    }

    // Handle start state
    if (start != null) {
      int startIndex = outputAlphabet.lookupIndex(start);
      for (int j = 0; j < outputAlphabet.size(); j++) {
        connections[startIndex][j] = true;
      }
    }

    return connections;
  }
コード例 #2
0
  public void collectDocumentStatistics() {

    topicCodocumentMatrices = new int[numTopics][numTopWords][numTopWords];
    wordTypeCounts = new int[alphabet.size()];
    numTokens = 0;

    // This is an array of hash sets containing the words-of-interest for each topic,
    //  used for checking if the word at some position is one of those words.
    IntHashSet[] topicTopWordIndices = new IntHashSet[numTopics];

    // The same as the topic top words, but with int indices instead of strings,
    //  used for iterating over positions.
    int[][] topicWordIndicesInOrder = new int[numTopics][numTopWords];

    // This is an array of hash sets that will hold the words-of-interest present in a document,
    //  which will be cleared after every document.
    IntHashSet[] docTopicWordIndices = new IntHashSet[numTopics];

    int numDocs = model.getData().size();

    // The count of each topic, again cleared after every document.
    int[] topicCounts = new int[numTopics];

    for (int topic = 0; topic < numTopics; topic++) {
      IntHashSet wordIndices = new IntHashSet();

      for (int i = 0; i < numTopWords; i++) {
        if (topicTopWords[topic][i] != null) {
          int type = alphabet.lookupIndex(topicTopWords[topic][i]);
          topicWordIndicesInOrder[topic][i] = type;
          wordIndices.add(type);
        }
      }

      topicTopWordIndices[topic] = wordIndices;
      docTopicWordIndices[topic] = new IntHashSet();
    }

    int doc = 0;

    for (TopicAssignment document : model.getData()) {

      FeatureSequence tokens = (FeatureSequence) document.instance.getData();
      FeatureSequence topics = (FeatureSequence) document.topicSequence;

      for (int position = 0; position < tokens.size(); position++) {
        int type = tokens.getIndexAtPosition(position);
        int topic = topics.getIndexAtPosition(position);

        numTokens++;
        wordTypeCounts[type]++;

        topicCounts[topic]++;

        if (topicTopWordIndices[topic].contains(type)) {
          docTopicWordIndices[topic].add(type);
        }
      }

      int docLength = tokens.size();

      if (docLength > 0) {
        int maxTopic = -1;
        int maxCount = -1;

        for (int topic = 0; topic < numTopics; topic++) {

          if (topicCounts[topic] > 0) {
            numNonZeroDocuments[topic]++;

            if (topicCounts[topic] > maxCount) {
              maxTopic = topic;
              maxCount = topicCounts[topic];
            }

            sumCountTimesLogCount[topic] += topicCounts[topic] * Math.log(topicCounts[topic]);

            double proportion =
                (model.alpha[topic] + topicCounts[topic]) / (model.alphaSum + docLength);
            for (int i = 0; i < DEFAULT_DOC_PROPORTIONS.length; i++) {
              if (proportion < DEFAULT_DOC_PROPORTIONS[i]) {
                break;
              }
              numDocumentsAtProportions[topic][i]++;
            }

            IntHashSet supportedWords = docTopicWordIndices[topic];
            int[] indices = topicWordIndicesInOrder[topic];

            for (int i = 0; i < numTopWords; i++) {
              if (supportedWords.contains(indices[i])) {
                for (int j = i; j < numTopWords; j++) {
                  if (i == j) {
                    // Diagonals are total number of documents with word W in topic T
                    topicCodocumentMatrices[topic][i][i]++;
                  } else if (supportedWords.contains(indices[j])) {
                    topicCodocumentMatrices[topic][i][j]++;
                    topicCodocumentMatrices[topic][j][i]++;
                  }
                }
              }
            }

            docTopicWordIndices[topic].clear();
            topicCounts[topic] = 0;
          }
        }

        if (maxTopic > -1) {
          numRank1Documents[maxTopic]++;
        }
      }

      doc++;
    }
  }