Github user mpjlu commented on a diff in the pull request:

    https://github.com/apache/spark/pull/14597#discussion_r74742525
  
    --- Diff: 
mllib/src/main/scala/org/apache/spark/mllib/feature/ChiSqSelector.scala ---
    @@ -197,3 +197,28 @@ class ChiSqSelector @Since("1.3.0") (
         new ChiSqSelectorModel(indices)
       }
     }
    +
    +/**
    + * Creates a ChiSquared feature selector by False Positive Rate (FPR) test.
    + * @param alpha the highest p-value for features to be kept
    + */
    +@Since("2.1.0")
    +class ChiSqSelectorByFpr @Since("2.1.0") (
    +  @Since("2.1.0") val alpha: Double) extends Serializable {
    +
    +  /**
    +   * Returns a ChiSquared feature selector by FPR.
    +   *
    +   * @param data an `RDD[LabeledPoint]` containing the labeled dataset 
with categorical features.
    +   *             Real-valued features will be treated as categorical for 
each distinct value.
    +   *             Apply feature discretizer before using this function.
    +   */
    +  @Since("2.1.0")
    +  def fit(data: RDD[LabeledPoint]): ChiSqSelectorModel = {
    +    val indices = Statistics.chiSqTest(data)
    +      .zipWithIndex.filter { case (res, _) => res.pValue < alpha }
    --- End diff --
    
    ok,  I will pass the p values to the model and expose to the caller, and 
let the model to sort the indices internally.  I will add the parameter 
controlling what type of feature selection is done in "fit" function of 
ChiSqSelector. Is my understanding right?  Thanks.


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