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postdoc in social work and public health
Apr 12 
revised 
How do I extract all data points from a lowess smoother using R?
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Apr 12 
revised 
How do I extract all data points from a lowess smoother using R?
added 10 characters in body 
Apr 12 
answered  How do I extract all data points from a lowess smoother using R? 
Feb 25 
awarded  Yearling 
Feb 17 
awarded  Caucus 
Jan 16 
comment 
Splitting a random network into two networks in R
@LoneWolf You can set the second argument of erdos.renyi.game() (set at .5 in the example above, thus producing a 50/50 split) to whatever you'd like. If you use 0.1 , then with 10% probability, any given tie in the original network will end up in g1 else it will end up in g2 .

Jan 15 
answered  How to calculate Zscore by group 
Jan 13 
revised 
Splitting a random network into two networks in R
added 2 characters in body 
Jan 13 
revised 
Splitting a random network into two networks in R
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Jan 11 
revised 
Splitting a random network into two networks in R
added 107 characters in body 
Jan 11 
revised 
Splitting a random network into two networks in R
added 107 characters in body 
Jan 11 
revised 
Splitting a random network into two networks in R
added 107 characters in body 
Jan 11 
revised 
Splitting a random network into two networks in R
added 107 characters in body 
Jan 10 
revised 
Splitting a random network into two networks in R
added 492 characters in body 
Jan 10 
revised 
Splitting a random network into two networks in R
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Jan 10 
revised 
Splitting a random network into two networks in R
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Jan 10 
answered  Splitting a random network into two networks in R 
Dec 5 
revised 
How to create weighted adjacency list/matrix from edge list?
added 17 characters in body 
Oct 18 
comment 
How to represent parentchild data in R?
Consider the situation where one 23 year old purchases a quarter of your stock. And mostly 50 yearolds purchase the rest in realtively tiny quantities. Is it important to you to have the 23 year old big buyer fairly represented as such? Or as just another buyer? I can see it going either way, depending on your research question. 
Oct 18 
comment 
How to represent parentchild data in R?
@rumtscho I might disagree. mean(df$iage) will give you a weighted mean age (weighted on purchases). This may be an important measure, or it may not. You can still obtain the unweighted mean by only considering unique values in the i column. But what if age changes across purchases? Consider that some personlevel variables may change more frequently than age. The weighted case accounts for this. But you're right that it means something a little different. Consider what is most meaningful for your problem.
