Yes, WeightedLeastSquares can not solve some ill-conditioned problem
currently, the community members have paid some efforts to resolve it
(SPARK-13777). For the work around, you can set the solver to "l-bfgs"
which will train the LogisticRegressionModel by L-BFGS optimization method.
2016-06-09 7
I ran into this problem too - it's because WeightedLeastSquares (added in
1.6.0 SPARK-10668) is being used on an ill-conditioned problem
(SPARK-11918). I guess because of the one hot encoding. To get around it you
need to ensure WeightedLeastSquares isn't used. Set parameters to make the
following
here is a gist with the minimal code and data
http://gist.github.com/anonymous/aca8ba5841404ea092f9efcc658c5d57
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Hi,
Is it me only to *not* see the snippets? Could you please gist 'em =>
https://gist.github.com ?
Pozdrawiam,
Jacek Laskowski
https://medium.com/@jaceklaskowski/
Mastering Apache Spark http://bit.ly/mastering-apache-spark
Follow me at https://twitter.com/jaceklaskowski
On Wed, Jun 8, 201
I use spark-ml to train a linear regression model. It worked perfectly with
spark version 1.5.2 but now with 1.6.1 I get the following error :
Here is a minimal code :
And input.csv data
the pom.xml
How can I fix it ?
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