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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 |