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pythonapache-sparknlppysparkapache-spark-ml

How to combine n-grams into one vocabulary in Spark?


Wondering if there is a built-in Spark feature to combine 1-, 2-, n-gram features into a single vocabulary. Setting n=2 in NGram followed by invocation of CountVectorizer results in a dictionary containing only 2-grams. What I really want is to combine all frequent 1-grams, 2-grams, etc into one dictionary for my corpus.


Solution

  • You can train separate NGram and CountVectorizer models and merge using VectorAssembler.

    from pyspark.ml.feature import NGram, CountVectorizer, VectorAssembler
    from pyspark.ml import Pipeline
    
    
    def build_ngrams(inputCol="tokens", n=3):
    
        ngrams = [
            NGram(n=i, inputCol="tokens", outputCol="{0}_grams".format(i))
            for i in range(1, n + 1)
        ]
    
        vectorizers = [
            CountVectorizer(inputCol="{0}_grams".format(i),
                outputCol="{0}_counts".format(i))
            for i in range(1, n + 1)
        ]
    
        assembler = [VectorAssembler(
            inputCols=["{0}_counts".format(i) for i in range(1, n + 1)],
            outputCol="features"
        )]
    
        return Pipeline(stages=ngrams + vectorizers + assembler)
    

    Example usage:

    df = spark.createDataFrame([
      (1, ["a", "b", "c", "d"]),
      (2, ["d", "e", "d"])
    ], ("id", "tokens"))
    
    build_ngrams().fit(df).transform(df)