If the missing values are 0, then you can also look into implicit
formulation...
On Tue, Sep 30, 2014 at 12:05 PM, Xiangrui Meng men...@gmail.com wrote:
We don't handle missing value imputation in the current version of
MLlib. In future releases, we can store feature information in the
Thanks, Xiangrui and Debashish for your input.
Date: Wed, 1 Oct 2014 08:35:51 -0700
Subject: Re: MLLib: Missing value imputation
From: debasish.da...@gmail.com
To: men...@gmail.com
CC: ssti...@live.com; user@spark.apache.org
If the missing values are 0, then you can also look into implicit
We don't handle missing value imputation in the current version of
MLlib. In future releases, we can store feature information in the
dataset metadata, which may store the default value to replace missing
values. But no one is committed to work on this feature. For now, you
can filter out examples