I have a time series that I want to decompose using STL. The data has 1 row per min. I have the data for 10 days (the dataset is the one that comes pre-loaded with twitter's anomaly detection API) and I want to find seasonality within a day (e.g. activity peaks from 9pm to 11pm)
While decomposing with STL
however, I get an error
"series is not periodic or has less than 2 periods".
I understand this is because the time frame of data should be >2yrs. However since I want to check seasonality within a day , is there a way to tell STL
to look for seasonality within a day ?
I tried using frequency option in xts
while converting to time series format but doesn't work (1440 = no. of minutes in a day)
install.packages("devtools")
devtools::install_github("twitter/AnomalyDetection")
library(AnomalyDetection)
library(xts)
#data is part of the pacakage anomaly detection
data(raw_data)
View(raw_data)
#converting raw_data to xts format
raw_data_ts <- ts(raw_data$count, as.POSIXct(raw_data$timestamp, format='%m-%d-%y %H:%M:%S'), frequency = 1440)
raw_data_ts1<-as.ts(raw_data_ts)
# Using STL for seasonal decomposition
modelStl <- stl(raw_data_ts1, s.window = "periodic")
stl
it is said thatx
has to be an object of classts
. Could that be the problem?