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Sep
29 |
awarded | Notable Question |
Apr
17 |
comment |
Monthly operations time series with apply.monthly in R
Fantastic ! Thanks a lot |
Apr
17 |
accepted | Monthly operations time series with apply.monthly in R |
Apr
17 |
comment |
Monthly operations time series with apply.monthly in R
Thanks but this doesn't work. The question is how to use one's own function to calculate the monthly mean. And I tried your code with the function by Joshua Ulrich and I can't get it to work |
Apr
17 |
comment |
Monthly operations time series with apply.monthly in R
when I try to replace the Data for my own data I get: Error in coredata.xts(x) : currently unsupported data type. Any idea why? When I do your example I get the same error! |
Apr
16 |
comment |
Monthly operations time series with apply.monthly in R
days_in_month is from the lubridate package, calculates the number of days in a month |
Apr
16 |
revised |
Monthly operations time series with apply.monthly in R
added 114 characters in body |
Apr
16 |
asked | Monthly operations time series with apply.monthly in R |
Apr
16 |
comment |
Aggregate function - calculate the mean of each months' variance
True, it doesn't work. It works however on date so days_in_month(data$date[1]) = 31 |
Apr
16 |
comment |
Aggregate function - calculate the mean of each months' variance
Added, thank you |
Apr
16 |
revised |
Aggregate function - calculate the mean of each months' variance
added 63 characters in body |
Apr
16 |
revised |
Aggregate function - calculate the mean of each months' variance
added 11 characters in body |
Apr
16 |
revised |
Aggregate function - calculate the mean of each months' variance
added 11 characters in body |
Apr
16 |
asked | Aggregate function - calculate the mean of each months' variance |
Mar
19 |
awarded | Curious |
Mar
3 |
comment |
Detecting Seasonality in R
Last question I promise, I dont get how you use this to find cycles, because if you want 1. monthly you change x <- which(per$freq < 1/12), 2. weekly x <- which(per$freq < 1/52), 3. 2-years: x <- which(per$freq < 1/(365*2)). All the graphs look essentially the same. So how can you tell? |
Mar
3 |
comment |
Detecting Seasonality in R
Thanks, I added the periodogram on the low frequency. However I thought that to find an annual, the frequency was 2*pi/365, why is 1/365 enough? So the frequency is where per$freq has a spike right? How do you calculate the amplitude then? Thanks !!! |
Mar
3 |
revised |
Detecting Seasonality in R
added 318 characters in body |
Mar
3 |
revised |
Detecting Seasonality in R
edited title |
Mar
3 |
revised |
Detecting Seasonality in R
Added another periodogram |