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I trained an LDA model using pyspark to classify texts by topics, trying different K values. However, to validate the selected K, I want use this aproach evaluate-topic-model-in-python-latent-dirichlet-allocation-lda But, with spark.ml, I dont know how get the equivalent gensim CoherenceModel.

The dataframe looks like this:

tokenizedText.show(truncate=True, n=5)

+------------+--------------------+
|          ID|              Tokens|
+------------+--------------------+
|0000qaqdWUAQ|[limpieza, mala, ...|
|0000qaqe2UAA|[transporte, deja...|
|0000qasxUUAQ|          [correcto]|
|0000qatEJUAY|              [bien]|
|0000qaqwMUAQ|[experiencia, agr...|
+------------+--------------------+

And the basic model is something like this:

from pyspark.ml.feature import IDF, HashingTF, Tokenizer, StopWordsRemover, CountVectorizer
from pyspark.ml.clustering import LDA, LDAModel

counter = CountVectorizer(inputCol="Tokens", outputCol="term_frequency", minDF=5)
counterModel = counter.fit(tokenizedText)   
vectorizedLaw = counterModel.transform(trainingData)

idf = IDF(inputCol="term_frequency", outputCol="tf_idf")
tfidfLaw = idf.fit(vectorizedLaw).transform(vectorizedLaw)

lda = LDA(k=7, maxIter=50, featuresCol="tf_idf", seed=1234)
model = lda.fit(tfidfLaw)

And I get:

model.logLikelihood(tfidfLaw)
Out[295]: -17745244.739330653

model.logPerplexity(tfidfLaw)
Out[296]: 7.63661972904619

Using gensim and follow the evaluate-topic-model-in-python-latent-dirichlet-allocation-lda (Compute Model Perplexity and Coherence Score and Hyperparameter Tuning) example, It was not viable due the data size. After long execution, I got this error:

Internal error, sorry. Attach your notebook to a different cluster or restart the current cluster.
java.net.NoRouteToHostException: No route to host
    at java.base/sun.nio.ch.SocketChannelImpl.checkConnect(Native Method)
    at java.base/sun.nio.ch.SocketChannelImpl.finishConnect(SocketChannelImpl.java:779)
    at shaded.v9_4.org.eclipse.jetty.io.SelectorManager.doFinishConnect(SelectorManager.java:355)
    at shaded.v9_4.org.eclipse.jetty.io.ManagedSelector.processConnect(ManagedSelector.java:232)
    at shaded.v9_4.org.eclipse.jetty.io.ManagedSelector.access$1400(ManagedSelector.java:62)
    at shaded.v9_4.org.eclipse.jetty.io.ManagedSelector$SelectorProducer.processSelected(ManagedSelector.java:543)
    at shaded.v9_4.org.eclipse.jetty.io.ManagedSelector$SelectorProducer.produce(ManagedSelector.java:401)
    at shaded.v9_4.org.eclipse.jetty.util.thread.strategy.EatWhatYouKill.produceTask(EatWhatYouKill.java:360)
    at shaded.v9_4.org.eclipse.jetty.util.thread.strategy.EatWhatYouKill.doProduce(EatWhatYouKill.java:184)
    at shaded.v9_4.org.eclipse.jetty.util.thread.strategy.EatWhatYouKill.tryProduce(EatWhatYouKill.java:171)
    at shaded.v9_4.org.eclipse.jetty.util.thread.strategy.EatWhatYouKill.run(EatWhatYouKill.java:129)
    at shaded.v9_4.org.eclipse.jetty.util.thread.ReservedThreadExecutor$ReservedThread.run(ReservedThreadExecutor.java:367)
    at shaded.v9_4.org.eclipse.jetty.util.thread.QueuedThreadPool.runJob(QueuedThreadPool.java:782)
    at shaded.v9_4.org.eclipse.jetty.util.thread.QueuedThreadPool$Runner.run(QueuedThreadPool.java:914)
    at java.base/java.lang.Thread.run(Thread.java:834)

I am running on Databricks Runtime Version 6.5 ML (includes Apache Spark 2.4.5, Scala 2.11), Driver type: 15.3 GB memory, 2 cores, 1 DBU.

Do you know an appropriate option to obtain the recommended number of topics for the LDA model using pyspark.ml ?, or a workaround to use the Gensim Coherence Score avoiding the execution problem? .

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  • I am also facing the same problem. Could anybody help about this ? thanks – user3448011 Oct 24 '20 at 16:51
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If the question is still actual, you can use the example from my GitHub project, but it was written with Scala.

Also, you can learn coherence calculation here and create Spark Estimator for Coherence calculation from LDA Model topics description.

In details, if we let T = {w_1,...,w_n} is list of terms, then:

Coherence(T) = sum log[ (df(w_i, w_j) + 1) / df(w_i)] forall i<j

And average corpus coherence will be:

Coherence(T_1,...,T_K) = 1/K * (Coherence(T_1) + ... + Coherence(T_K))
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  • Unfortunately, I refer to formulas, but I haven't enough permissions (small reputation) to post images here. – gnupinguin May 12 at 14:51

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