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  • 24 votes cast
Dec
14
revised Using large numbers of permutations in parallel: combining iterpc and foreach
added 6 characters in body
Dec
14
accepted Using large numbers of permutations in parallel: combining iterpc and foreach
Dec
12
revised Using large numbers of permutations in parallel: combining iterpc and foreach
deleted 15 characters in body
Dec
12
revised Using large numbers of permutations in parallel: combining iterpc and foreach
minor problem with nCk vs nPk
Dec
12
answered Using large numbers of permutations in parallel: combining iterpc and foreach
Dec
12
revised Using large numbers of permutations in parallel: combining iterpc and foreach
[Edit removed during grace period]
Dec
11
revised Using large numbers of permutations in parallel: combining iterpc and foreach
added 431 characters in body
Dec
10
revised Using large numbers of permutations in parallel: combining iterpc and foreach
added 76 characters in body
Dec
10
comment Using large numbers of permutations in parallel: combining iterpc and foreach
I was hoping that this would run each of the sets in parallel, one half of the permutations assigned to each node. How could I split the permutations?
Dec
10
revised Using large numbers of permutations in parallel: combining iterpc and foreach
added 76 characters in body
Dec
10
revised Using large numbers of permutations in parallel: combining iterpc and foreach
added 100 characters in body
Dec
10
asked Using large numbers of permutations in parallel: combining iterpc and foreach
Dec
10
awarded  Commentator
Dec
10
comment All possible permutations for large n
Any way to get this to work with foreach packages? My attempts lead to duplication of the first N permutations, a problem to which you seem to allude.
Dec
8
asked Operations over Rows or Column
Mar
27
comment Predict with survreg/tobit goes past bound
I restructured my estimation process to reflect a zero-inflated or hurdle model. Tobit is for censored data, it says there exists a non-zero result, but we only observe 0 because the information is hidden somehow. For example, women's wages should be fit with Tobit, because married women who choose not to work still have a reservation wage, and still have some (invisible) return to effort doing unpaid labor of whatever type. Zero-inflated or hurdle models indicate that the result is truly zero. As in, no crimes occurred. Or no widgets produced. They more accurately reflected my model.
Sep
24
awarded  Autobiographer
Jun
19
accepted Predict with survreg/tobit goes past bound
Jun
19
answered Predict with survreg/tobit goes past bound
Jan
17
answered Spatial Distribution /Simulation/ Density Function