Interface LDAParams
- All Superinterfaces:
HasCheckpointInterval
,HasFeaturesCol
,HasMaxIter
,HasSeed
,Identifiable
,Params
,Serializable
,scala.Serializable
- All Known Implementing Classes:
DistributedLDAModel
,LDA
,LDAModel
,LocalLDAModel
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Method Summary
Modifier and TypeMethodDescriptionConcentration parameter (commonly named "alpha") for the prior placed on documents' distributions over topics ("theta").double[]
int
getK()
boolean
double
double
Get docConcentration used by spark.mllib LDAdouble
Get topicConcentration used by spark.mllib LDAboolean
double
double
k()
Param for the number of topics (clusters) to infer.For EM optimizer only:optimizer()
= "em".For Online optimizer only:optimizer()
= "online".For Online optimizer only:optimizer()
= "online".For Online optimizer only (currently):optimizer()
= "online".Optimizer or inference algorithm used to estimate the LDA model.For Online optimizer only:optimizer()
= "online".String[]
Supported values for Paramoptimizer()
.Concentration parameter (commonly named "beta" or "eta") for the prior placed on topics' distributions over terms.Output column with estimates of the topic mixture distribution for each document (often called "theta" in the literature).validateAndTransformSchema
(StructType schema) Validates and transforms the input schema.Methods inherited from interface org.apache.spark.ml.param.shared.HasCheckpointInterval
checkpointInterval, getCheckpointInterval
Methods inherited from interface org.apache.spark.ml.param.shared.HasFeaturesCol
featuresCol, getFeaturesCol
Methods inherited from interface org.apache.spark.ml.param.shared.HasMaxIter
getMaxIter, maxIter
Methods inherited from interface org.apache.spark.ml.util.Identifiable
toString, uid
Methods inherited from interface org.apache.spark.ml.param.Params
clear, copy, copyValues, defaultCopy, defaultParamMap, explainParam, explainParams, extractParamMap, extractParamMap, get, getDefault, getOrDefault, getParam, hasDefault, hasParam, isDefined, isSet, onParamChange, paramMap, params, set, set, set, setDefault, setDefault, shouldOwn
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Method Details
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k
IntParam k()Param for the number of topics (clusters) to infer. Must be > 1. Default: 10.- Returns:
- (undocumented)
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getK
int getK() -
docConcentration
DoubleArrayParam docConcentration()Concentration parameter (commonly named "alpha") for the prior placed on documents' distributions over topics ("theta").This is the parameter to a Dirichlet distribution, where larger values mean more smoothing (more regularization).
If not set by the user, then docConcentration is set automatically. If set to singleton vector [alpha], then alpha is replicated to a vector of length k in fitting. Otherwise, the
docConcentration()
vector must be length k. (default = automatic)Optimizer-specific parameter settings: - EM - Currently only supports symmetric distributions, so all values in the vector should be the same. - Values should be greater than 1.0 - default = uniformly (50 / k) + 1, where 50/k is common in LDA libraries and +1 follows from Asuncion et al. (2009), who recommend a +1 adjustment for EM. - Online - Values should be greater than or equal to 0 - default = uniformly (1.0 / k), following the implementation from here.
- Returns:
- (undocumented)
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getDocConcentration
double[] getDocConcentration() -
getOldDocConcentration
Vector getOldDocConcentration()Get docConcentration used by spark.mllib LDA -
topicConcentration
DoubleParam topicConcentration()Concentration parameter (commonly named "beta" or "eta") for the prior placed on topics' distributions over terms.This is the parameter to a symmetric Dirichlet distribution.
Note: The topics' distributions over terms are called "beta" in the original LDA paper by Blei et al., but are called "phi" in many later papers such as Asuncion et al., 2009.
If not set by the user, then topicConcentration is set automatically. (default = automatic)
Optimizer-specific parameter settings: - EM - Value should be greater than 1.0 - default = 0.1 + 1, where 0.1 gives a small amount of smoothing and +1 follows Asuncion et al. (2009), who recommend a +1 adjustment for EM. - Online - Value should be greater than or equal to 0 - default = (1.0 / k), following the implementation from here.
- Returns:
- (undocumented)
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getTopicConcentration
double getTopicConcentration() -
getOldTopicConcentration
double getOldTopicConcentration()Get topicConcentration used by spark.mllib LDA -
supportedOptimizers
String[] supportedOptimizers()Supported values for Paramoptimizer()
. -
optimizer
Optimizer or inference algorithm used to estimate the LDA model. Currently supported (case-insensitive): - "online": Online Variational Bayes (default) - "em": Expectation-MaximizationFor details, see the following papers: - Online LDA: Hoffman, Blei and Bach. "Online Learning for Latent Dirichlet Allocation." Neural Information Processing Systems, 2010. See here - EM: Asuncion et al. "On Smoothing and Inference for Topic Models." Uncertainty in Artificial Intelligence, 2009. See here
- Returns:
- (undocumented)
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getOptimizer
String getOptimizer() -
topicDistributionCol
Output column with estimates of the topic mixture distribution for each document (often called "theta" in the literature). Returns a vector of zeros for an empty document.This uses a variational approximation following Hoffman et al. (2010), where the approximate distribution is called "gamma." Technically, this method returns this approximation "gamma" for each document.
- Returns:
- (undocumented)
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getTopicDistributionCol
String getTopicDistributionCol() -
learningOffset
DoubleParam learningOffset()For Online optimizer only:optimizer()
= "online".A (positive) learning parameter that downweights early iterations. Larger values make early iterations count less. This is called "tau0" in the Online LDA paper (Hoffman et al., 2010) Default: 1024, following Hoffman et al.
- Returns:
- (undocumented)
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getLearningOffset
double getLearningOffset() -
learningDecay
DoubleParam learningDecay()For Online optimizer only:optimizer()
= "online".Learning rate, set as an exponential decay rate. This should be between (0.5, 1.0] to guarantee asymptotic convergence. This is called "kappa" in the Online LDA paper (Hoffman et al., 2010). Default: 0.51, based on Hoffman et al.
- Returns:
- (undocumented)
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getLearningDecay
double getLearningDecay() -
subsamplingRate
DoubleParam subsamplingRate()For Online optimizer only:optimizer()
= "online".Fraction of the corpus to be sampled and used in each iteration of mini-batch gradient descent, in range (0, 1].
Note that this should be adjusted in synch with
LDA.maxIter
so the entire corpus is used. Specifically, set both so that maxIterations * miniBatchFraction greater than or equal to 1.Note: This is the same as the
miniBatchFraction
parameter inOnlineLDAOptimizer
.Default: 0.05, i.e., 5% of total documents.
- Returns:
- (undocumented)
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getSubsamplingRate
double getSubsamplingRate() -
optimizeDocConcentration
BooleanParam optimizeDocConcentration()For Online optimizer only (currently):optimizer()
= "online".Indicates whether the docConcentration (Dirichlet parameter for document-topic distribution) will be optimized during training. Setting this to true will make the model more expressive and fit the training data better. Default: false
- Returns:
- (undocumented)
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getOptimizeDocConcentration
boolean getOptimizeDocConcentration() -
keepLastCheckpoint
BooleanParam keepLastCheckpoint()For EM optimizer only:optimizer()
= "em".If using checkpointing, this indicates whether to keep the last checkpoint. If false, then the checkpoint will be deleted. Deleting the checkpoint can cause failures if a data partition is lost, so set this bit with care. Note that checkpoints will be cleaned up via reference counting, regardless.
See
DistributedLDAModel.getCheckpointFiles
for getting remaining checkpoints andDistributedLDAModel.deleteCheckpointFiles
for removing remaining checkpoints.Default: true
- Returns:
- (undocumented)
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getKeepLastCheckpoint
boolean getKeepLastCheckpoint() -
validateAndTransformSchema
Validates and transforms the input schema.- Parameters:
schema
- input schema- Returns:
- output schema
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getOldOptimizer
LDAOptimizer getOldOptimizer()
-