zhengruifeng created SPARK-34765:
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             Summary: Linear Models standardization optimization
                 Key: SPARK-34765
                 URL: https://issues.apache.org/jira/browse/SPARK-34765
             Project: Spark
          Issue Type: Improvement
          Components: ML
    Affects Versions: 3.1.1, 3.2.0
            Reporter: zhengruifeng


Existing impl of standardization in linear models do NOT center the vectors by 
removing the means, for the purpose of keep the dataset sparsity.

However, this will cause feature values with small var be scaled to large 
values, and underlying solver like LBFGS can not efficiently handle this case. 
see SPARK-34448 for details.

If internal vectors are centers (like other famous impl, i.e. 
GLMNET/Scikit-Learn), the convergence ratio will be better. In the case in 
SPARK-34448, the number of iteration to convergence will be reduced from 93 to 
6. Moreover, the final solution is much more close to the one in GLMNET.

luckily, we find a new way to 'virtually' center the vectors without densifying 
the dataset, iff:

1, fitIntercept is true;
2, no penalty on the intercept, it seem this is always true in existing impls;
3, no bounds on the intercept;

 

We will also need to check whether this new methods work in all other linear 
models (i.e, mlor/svc/lir/aft, etc.) as we expected , and introduce it into 
those model if possible.

 



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