Class TokenizerME
- All Implemented Interfaces:
Tokenizer
Tokenizer
for converting raw text into separated tokens. It uses
Maximum Entropy to make its decisions. The features are loosely
based off of Jeff Reynar's UPenn thesis "Topic Segmentation:
Algorithms and Applications.", which is available from his
homepage: http://www.cis.upenn.edu/~jcreynar.
This implementation needs a statistical model to tokenize a text which reproduces
the tokenization observed in the training data used to create the model.
The TokenizerModel
class encapsulates that model and provides
methods to create it from the binary representation.
A tokenizer instance is not thread-safe. For each thread, one tokenizer
must be instantiated which can share one TokenizerModel
instance
to safe memory.
To train a new model, the train(ObjectStream, TokenizerFactory, TrainingParameters)
method
can be used.
Sample usage:
InputStream modelIn;
...
TokenizerModel model = TokenizerModel(modelIn);
Tokenizer tokenizer = new TokenizerME(model);
String tokens[] = tokenizer.tokenize("A sentence to be tokenized.");
- See Also:
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Field Summary
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Constructor Summary
ConstructorDescriptionTokenizerME
(String language) Initializes aTokenizerME
by downloading a default model.TokenizerME
(TokenizerModel model) Instantiates aTokenizerME
with an existingTokenizerModel
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Method Summary
Modifier and TypeMethodDescriptiondouble[]
void
setKeepNewLines
(boolean keepNewLines) Switches whether to keep new lines or not.String[]
Splits a string into its atomic parts.Span[]
Tokenizes the string.static TokenizerModel
train
(ObjectStream<TokenSample> samples, TokenizerFactory factory, TrainingParameters mlParams) Trains a model for theTokenizerME
.boolean
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Field Details
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SPLIT
Constant indicates a token split.- See Also:
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NO_SPLIT
Constant indicates no token split.- See Also:
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Constructor Details
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TokenizerME
Initializes aTokenizerME
by downloading a default model.- Parameters:
language
- The language of the tokenizer.- Throws:
IOException
- Thrown if the model cannot be downloaded or saved.
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TokenizerME
Instantiates aTokenizerME
with an existingTokenizerModel
.- Parameters:
model
- TheTokenizerModel
to be used.
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Method Details
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getTokenProbabilities
public double[] getTokenProbabilities()- Returns:
- the probabilities associated with the most recent calls to
Tokenizer.tokenize(String)
ortokenizePos(String)
. If not applicable an empty array is returned.
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tokenizePos
Tokenizes the string.- Parameters:
d
- The string to be tokenized.- Returns:
- A
Span
array containing individual tokens as elements.
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train
public static TokenizerModel train(ObjectStream<TokenSample> samples, TokenizerFactory factory, TrainingParameters mlParams) throws IOException Trains a model for theTokenizerME
.- Parameters:
samples
- The samples used for the training.factory
- ATokenizerFactory
to get resources from.mlParams
- The machine learningtrain parameters
.- Returns:
- A trained
TokenizerModel
. - Throws:
IOException
- Thrown during IO operations on a temp file which is created during training. Or if reading from theObjectStream
fails.
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useAlphaNumericOptimization
public boolean useAlphaNumericOptimization()- Returns:
true
if the tokenizer uses alphanumeric optimization,false
otherwise.
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tokenize
Description copied from interface:Tokenizer
Splits a string into its atomic parts. -
setKeepNewLines
public void setKeepNewLines(boolean keepNewLines) Switches whether to keep new lines or not.- Parameters:
keepNewLines
-True
if new lines are kept,false
otherwise.
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