bio  website  google.com 

location  North Pole  
age  15  
visits  member for  2 years, 7 months 
seen  2 hours ago  
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Prefers to stay anonymous and eat mousse au chocolat.
Jul 4 
revised 
How to get the frindly name?
edited tags 
Jul 2 
awarded  Curious 
Jul 2 
revised 
analyzing neturalnet function from R
Improve tags. 
Jul 1 
answered  Which Data Mining Method? 
Jun 29 
revised 
how to choose the delta value in EM clustering in ELKI
edited title 
Jun 27 
comment 
When using data mining addon for excel, using test data I get one answer, when using the same test data twice, a different answer
The problem is that the MSSQLExcel stuff is intransparent and probably just screwed up; and nobody uses it anyway. Get R or SciPy or Weka or anything else that involves code. 
Jun 27 
revised 
Guessing next K values of a sequence
deleted 71 characters in body; edited tags; edited title 
Jun 27 
comment 
Guessing next K values of a sequence
What if my generator was if x < 10: return sin(x) else: return 42 ? Why should this be less likely? Mathematically, it's one sequence like any other; so you do have to specify some requirements, such as smoothness, periodicity etc. In many situations returning x_n=x_n1 is your optimal guess, once you add in such requirements without knowing anythning about your use case.

Jun 26 
comment 
When using data mining addon for excel, using test data I get one answer, when using the same test data twice, a different answer
If you want to do data mining, get the source code of the algorithm, and work with the actual algorithm. Not a black box. Data mining means you need to dig down to the data with the pickaxe, not use a fancy Excel GUI and expect your computer to do magic. 
Jun 26 
revised 
When using data mining addon for excel, using test data I get one answer, when using the same test data twice, a different answer
Remove boilerplate, choose relevant tags instead of buzzwords. 
Jun 26 
comment 
When using data mining addon for excel, using test data I get one answer, when using the same test data twice, a different answer
if you want to learn about data mining don't use Excel. Just like you shouldn't be using visual basic for applications if you want to write an android application. 
Jun 26 
revised 
Distributed programming, Parallel programming
This is not cluster analayis (aka clustering, a data mining technique). Please tag more carefully! 
Jun 26 
answered  Guessing next K values of a sequence 
Jun 25 
revised 
How to sync new rabbitmq nodes with a current cluser?
This is not cluster analysis (aka: clustering), a data mining technique. 
Jun 25 
comment 
Warning creating dissimilarity matrix using daisy package in R
ELKI has a lot of index accelerated algorithms, but I did not see daisy on this list. And it's not R. 
Jun 25 
comment 
Warning creating dissimilarity matrix using daisy package in R
No, don't even think of touching MySQL. I haven't used daisy, so I don't know if it can be index accelerated. You can't just throw magic index acceleration at everything. There is no "RmakeMagicIndexAcceleration" package for this very reason. The methods and implementations must be designed to be accelerated this way, and it looks as if this daisy implementation is designed to compute an upper diagonal matrix. 
Jun 24 
comment 
how to compute the global variance (square standard deviation) in a parallel application?
That is the easiest numerically stable version. There are online algorithms that provide reasonable performance (see Knuth, the art of computer programming); but they require more computations. In many cases, two passes is the fastest way. 
Jun 24 
revised 
how to compute the global variance (square standard deviation) in a parallel application?
added 918 characters in body 
Jun 24 
comment 
how to compute the global variance (square standard deviation) in a parallel application?
Don't use E[X^2]E[X]^2. This is numerically unstable, in particular for big data. 
Jun 24 
comment 
how to compute the global variance (square standard deviation) in a parallel application?
For improved numerical precision, compute the mean in a first pass, then the squared deviations from the mean in a second pass. Don't use E[X^2]E[X]^2. 