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

    https://github.com/apache/spark/pull/13262#discussion_r64602664
  
    --- Diff: docs/ml-advanced.md ---
    @@ -4,10 +4,85 @@ title: Advanced topics - spark.ml
     displayTitle: Advanced topics - spark.ml
     ---
     
    -# Optimization of linear methods
    +* Table of contents
    +{:toc}
    +
    +`\[
    +\newcommand{\R}{\mathbb{R}}
    +\newcommand{\E}{\mathbb{E}} 
    +\newcommand{\x}{\mathbf{x}}
    +\newcommand{\y}{\mathbf{y}}
    +\newcommand{\wv}{\mathbf{w}}
    +\newcommand{\av}{\mathbf{\alpha}}
    +\newcommand{\bv}{\mathbf{b}}
    +\newcommand{\N}{\mathbb{N}}
    +\newcommand{\id}{\mathbf{I}} 
    +\newcommand{\ind}{\mathbf{1}} 
    +\newcommand{\0}{\mathbf{0}} 
    +\newcommand{\unit}{\mathbf{e}} 
    +\newcommand{\one}{\mathbf{1}} 
    +\newcommand{\zero}{\mathbf{0}}
    +\]`
    +
    +# Optimization of linear methods (developer)
    +
    +## Limited-memory BFGS (L-BFGS)
    +[L-BFGS](http://en.wikipedia.org/wiki/Limited-memory_BFGS) is an 
optimization 
    +algorithm in the family of quasi-Newton methods to solve the optimization 
problems of the form 
    +`$\min_{\wv \in\R^d} \; f(\wv)$`. The L-BFGS method approximates the 
objective function locally as a 
    +quadratic without evaluating the second partial derivatives of the 
objective function to construct the 
    +Hessian matrix. The Hessian matrix is approximated by previous gradient 
evaluations, so there is no 
    +vertical scalability issue (the number of training features) unlike 
computing the Hessian matrix 
    +explicitly in Newton's method. As a result, L-BFGS often achieves faster 
convergence compared with 
    +other first-order optimizations.
     
    -The optimization algorithm underlying the implementation is called
     [Orthant-Wise Limited-memory
    
-QuasiNewton](http://research-srv.microsoft.com/en-us/um/people/jfgao/paper/icml07scalable.pdf)
    -(OWL-QN). It is an extension of L-BFGS that can effectively handle L1
    -regularization and elastic net.
    
+Quasi-Newton](http://research-srv.microsoft.com/en-us/um/people/jfgao/paper/icml07scalable.pdf)
    +(OWL-QN) is an extension of L-BFGS that can effectively handle L1 and 
elastic net regularization.
    +
    +L-BFGS is used as a solver for 
[LinearRegression](api/scala/index.html#org.apache.spark.ml.regression.LinearRegression),
    
+[LogisticRegression](api/scala/index.html#org.apache.spark.ml.classification.LogisticRegression),
    
+[AFTSurvivalRegression](api/scala/index.html#org.apache.spark.ml.regression.AFTSurvivalRegression)
    +and 
[MultilayerPerceptronClassifier](api/scala/index.html#org.apache.spark.ml.classification.MultilayerPerceptronClassifier).
    +
    +MLlib L-BFGS solver calls the corresponding implementation in 
[breeze](https://github.com/scalanlp/breeze/blob/master/math/src/main/scala/breeze/optimize/LBFGS.scala).
    +
    +## Normal equation solver for weighted least squares (normal)
    +
    +MLlib implements normal equation solver for [weighted least 
squares](https://en.wikipedia.org/wiki/Least_squares#Weighted_least_squares) by 
[WeightedLeastSquares](https://github.com/apache/spark/blob/master/mllib/src/main/scala/org/apache/spark/ml/optim/WeightedLeastSquares.scala).
    +
    +Given $n$ weighted observations $(w_i, a_i, b_i)$:
    +
    +* $w_i$ the weight of i-th observation
    +* $a_i$ the features vector of i-th observation
    +* $b_i$ the label of i-th observation
    +
    +The number of features for each observation is $m$. We use the following 
weighted least squares formulation:
    +`\[   
    +minimize_{x}\frac{1}{2} \sum_{i=1}^n \frac{w_i(a_i^T x 
-b_i)^2}{\sum_{k=1}^n w_k} + 
\frac{1}{2}\frac{\lambda}{\delta}\sum_{j=1}^m(\sigma_{j} x_{j})^2
    +\]`
    +where $\lambda$ is the regularization parameter, $\delta$ is the 
population standard deviation of label
    --- End diff --
    
    minor: "the label"


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