Github user WeichenXu123 commented on a diff in the pull request:

    https://github.com/apache/spark/pull/20257#discussion_r161859425
  
    --- Diff: docs/ml-features.md ---
    @@ -775,35 +775,43 @@ for more details on the API.
     </div>
     </div>
     
    -## OneHotEncoder
    +## OneHotEncoder (Deprecated since 2.3.0)
     
    -[One-hot encoding](http://en.wikipedia.org/wiki/One-hot) maps a column of 
label indices to a column of binary vectors, with at most a single one-value. 
This encoding allows algorithms which expect continuous features, such as 
Logistic Regression, to use categorical features.
    +Because this existing `OneHotEncoder` is a stateless transformer, it is 
not usable on new data where the number of categories may differ from the 
training data. In order to fix this, a new `OneHotEncoderEstimator` was created 
that produces an `OneHotEncoderModel` when fitting. For more detail, please see 
the JIRA ticket (https://issues.apache.org/jira/browse/SPARK-13030).
    +
    +`OneHotEncoder` has been deprecated in 2.3.0 and will be removed in 3.0.0. 
Please use [OneHotEncoderEstimator](ml-features.html#onehotencoderestimator) 
for one-hot encoding instead.
    +
    +## OneHotEncoderEstimator
    +
    +[One-hot encoding](http://en.wikipedia.org/wiki/One-hot) maps a column of 
label indices to a column of binary vectors, with at most a single one-value. 
This encoding allows algorithms which expect continuous features, such as 
Logistic Regression, to use categorical features. For string type input data, 
it is common to encode categorical features using 
[StringIndexer](ml-features.html#stringindexer) first.
    --- End diff --
    
    "with at most a single one-value" --> "each output binary vector include at 
most a single one-value"


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