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?