I have a confusion regarding BinaryClassificationMetrics (Mllib) inputs. As per Apache Spark 1.6.0, we need to pass predictedandlabel of Type (RDD[(Double,Double)]) from transformed DataFrame that having predicted, probability(vector) & rawPrediction(vector).

I have created RDD[(Double,Double)] from Predicted and label columns. After performing BinaryClassificationMetrics evaluation on NavieBayesModel, I'm able to retrieve ROC, PR etc. But the values are limited, I can't able plot the curve using the value generated from this. Roc contains 4 values and PR contains 3 value.

Is it the right way of preparing PredictedandLabel or do I need to use rawPrediction column or Probability column instead of Predicted column?

  • 1
    You should try giving BinaryClassificationMetrics the raw probabilities and then set a number of bins when creating BinaryClassificationMetrics to adjust the number of points. When using a model generated by spark (like a LogisticRegressionModel), you need to clear the threshold to get the whole spectrum of values. – Jonathan Taws Aug 1 '16 at 12:42
  • @Hawknight . Edited the question with rawPrediction instead of rawProbability. I have a scenario which I need to use NavieBayesModel, clear threshold function is not available in this model. I hope you are specifying to the same column which I mention in this comment, not the probability – Desanth pv Aug 1 '16 at 13:32
  • @Hawknight Is there any way to clear threshold explicitly from NavieBayesModel. – Desanth pv Aug 1 '16 at 13:40
  • Which method did you use from NaiveBayesModel so far ? – Jonathan Taws Aug 1 '16 at 14:57
  • I'm not using any method for clearing the threshold. – Desanth pv Aug 1 '16 at 15:51

Prepare like this:

import org.apache.spark.mllib.linalg.Vector
import org.apache.spark.mllib.classification.{NaiveBayes, NaiveBayesModel}

val df = sqlContext.read.format("libsvm").load("data/mllib/sample_libsvm_data.txt")
val predictions = new NaiveBayes().fit(df).transform(df)

val preds = predictions.select("probability", "label").rdd.map(row => 
  (row.getAs[Vector](0)(0), row.getAs[Double](1)))

And evaluate:

import org.apache.spark.mllib.evaluation.BinaryClassificationMetrics

new BinaryClassificationMetrics(preds, 10).roc

If predictions are only 0 or 1 number of buckets can be lower like in your case. Try more complex data like this:

val anotherPreds = df1.select(rand(), $"label").rdd.map(row => (row.getDouble(0), row.getDouble(1)))
new BinaryClassificationMetrics(anotherPreds, 10).roc

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