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https://issues.apache.org/jira/browse/MAHOUT-672?page=com.atlassian.jira.plugin.system.issuetabpanels:comment-tabpanel&focusedCommentId=13021158#comment-13021158
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Jonathan Traupman commented on MAHOUT-672:
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OK, yeah, I think I misunderstood which code you were talking about.

I assume this is the reference for the LSMR stuff: 
http://www.stanford.edu/group/SOL/reports/SOL-2010-2R1.pdf

I'll have to take some time to digest it, but based on a quick skim it looks 
like both LSMR and LSQR are more or less mathematically equivalent to CG 
applied to least squares regression, but with better convergence and numeric 
properties with inexact arithmetic. 

BTW, do you have any links to a SGD bibliography or other list of resources on 
it? From what I've seen in the code and some of your comments, it looks like a 
cool technology that I'd like to know more about.

> Implementation of Conjugate Gradient for solving large linear systems
> ---------------------------------------------------------------------
>
>                 Key: MAHOUT-672
>                 URL: https://issues.apache.org/jira/browse/MAHOUT-672
>             Project: Mahout
>          Issue Type: New Feature
>          Components: Math
>    Affects Versions: 0.5
>            Reporter: Jonathan Traupman
>            Priority: Minor
>         Attachments: MAHOUT-672.patch
>
>   Original Estimate: 48h
>  Remaining Estimate: 48h
>
> This patch contains an implementation of conjugate gradient, an iterative 
> algorithm for solving large linear systems. In particular, it is well suited 
> for large sparse systems where a traditional QR or Cholesky decomposition is 
> infeasible. Conjugate gradient only works for matrices that are square, 
> symmetric, and positive definite (basically the same types where Cholesky 
> decomposition is applicable). Systems like these commonly occur in statistics 
> and machine learning problems (e.g. regression). 
> Both a standard (in memory) solver and a distributed hadoop-based solver 
> (basically the standard solver run using a DistributedRowMatrix a la 
> DistributedLanczosSolver) are included.
> There is already a version of this algorithm in taste package, but it doesn't 
> operate on standard mahout matrix/vector objects, nor does it implement a 
> distributed version. I believe this implementation will be more generically 
> useful to the community than the specialized one in taste.
> This implementation solves the following types of systems:
> Ax = b, where A is square, symmetric, and positive definite
> A'Ax = b where A is arbitrary but A'A is positive definite. Directly solving 
> this system is more efficient than computing A'A explicitly then solving.
> (A + lambda * I)x = b and (A'A + lambda * I)x = b, for systems where A or A'A 
> is singular and/or not full rank. This occurs commonly if A is large and 
> sparse. Solving a system of this form is used, for example, in ridge 
> regression.
> In addition to the normal conjugate gradient solver, this implementation also 
> handles preconditioning, and has a sample Jacobi preconditioner included as 
> an example. More work will be needed to build more advanced preconditioners 
> if desired.

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