Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I want to parse a list of sentences with the Stanford NLP parser. My list is an ArrayList, how can I parse all the list with LexicalizedParser?

I want to get from each sentence this form:

Tree parse =  (Tree) lp1.apply(sentence);
share|improve this question

Although one can dig into the documentation, I am going to provide code here on SO, especially since links move and/or die. This particular answer uses the whole pipeline. If not interested in the whole pipeline, I will provide an alternative answer in just a second.

The below example is the complete way of using the Stanford pipeline. If not interested in coreference resolution, remove dcoref from the 3rd line of code. So in the example below, the pipeline does the sentence splitting for you (the ssplit annotator) if you just feed it in a body of text (the text variable). Have just one sentence? Well, that is ok, you can feed that in as the text variable.

   // creates a StanfordCoreNLP object, with POS tagging, lemmatization, NER, parsing, and coreference resolution 
    Properties props = new Properties();
    props.put("annotators", "tokenize, ssplit, pos, lemma, ner, parse, dcoref");
    StanfordCoreNLP pipeline = new StanfordCoreNLP(props);

    // read some text in the text variable
    String text = ... // Add your text here!

    // create an empty Annotation just with the given text
    Annotation document = new Annotation(text);

    // run all Annotators on this text

    // these are all the sentences in this document
    // a CoreMap is essentially a Map that uses class objects as keys and has values with custom types
    List<CoreMap> sentences = document.get(SentencesAnnotation.class);

    for(CoreMap sentence: sentences) {
      // traversing the words in the current sentence
      // a CoreLabel is a CoreMap with additional token-specific methods
      for (CoreLabel token: sentence.get(TokensAnnotation.class)) {
        // this is the text of the token
        String word = token.get(TextAnnotation.class);
        // this is the POS tag of the token
        String pos = token.get(PartOfSpeechAnnotation.class);
        // this is the NER label of the token
        String ne = token.get(NamedEntityTagAnnotation.class);       

      // this is the parse tree of the current sentence
      Tree tree = sentence.get(TreeAnnotation.class);

      // this is the Stanford dependency graph of the current sentence
      SemanticGraph dependencies = sentence.get(CollapsedCCProcessedDependenciesAnnotation.class);

    // This is the coreference link graph
    // Each chain stores a set of mentions that link to each other,
    // along with a method for getting the most representative mention
    // Both sentence and token offsets start at 1!
    Map<Integer, CorefChain> graph = 
share|improve this answer

Actually documentation from Stanford NLP provide sample of how to parse sentences.

You can find the documentation here

share|improve this answer
Also look at the ParserDemo examples that come with the parser. You can call apply() directly on a String that is a sentence. – Christopher Manning Jan 15 '12 at 16:38

So as promised, if you don't want to access the full Stanford pipeline (although I believe that is the recommended approach), you can work with the LexicalizedParser class directly. In this case, you would download the latest version of Stanford Parser (whereas the other would use CoreNLP tools). Make sure that in addition to the parser jar, you have the model file for the appropriate parser you want to work with. Example code:

LexicalizedParser lp1 = new LexicalizedParser("englishPCFG.ser.gz", new Options());
String sentence = "It is a fine day today";
Tree parse = lp.parse(sentence);

Note this works for version 3.3.1 of the parser.

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.