Identify and count spells (Distinctive events within each group)
I'm looking for an efficient way to identify spells/runs in a time series. In the image below, the first three columns is what I have, the fourth column, spell
is what I'm trying to compute. I've tried using dplyr
's lead
and lag
, but that gets too complicated. I've tried rle
but got nowhere.
ReprEx
df <- structure(list(time = structure(c(1538876340, 1538876400,
1538876460,1538876520, 1538876580, 1538876640, 1538876700, 1538876760, 1526824800,
1526824860, 1526824920, 1526824980, 1526825040, 1526825100), class = c("POSIXct",
"POSIXt"), tzone = "UTC"), group = c("A", "A", "A", "A", "A", "A", "A", "A", "B",
"B", "B", "B", "B", "B"), is.5 = c(0, 1, 1, 0, 1, 0, 0, 1, 0, 0, 1, 1, 0, 1)),
class = c("tbl_df", "tbl", "data.frame"), row.names = c(NA, -14L))
I prefer a tidyverse
solution.
Assumptions
Data is sorted by
group
and then bytime
There are no gaps in
time
within each group
Update
Thanks for the contributions. I've timed some of the proposed approaches on the full data (n=2,583,360)
- the
rle
approach by @markus took 0.53 seconds - the
cumsum
approach by @M-M took 2.85 seconds - the function approach by @MrFlick took 0.66 seconds
- the
rle
anddense_rank
by @tmfmnk took 0.89
r dataframe dplyr time-series tidyverse
add a comment |
I'm looking for an efficient way to identify spells/runs in a time series. In the image below, the first three columns is what I have, the fourth column, spell
is what I'm trying to compute. I've tried using dplyr
's lead
and lag
, but that gets too complicated. I've tried rle
but got nowhere.
ReprEx
df <- structure(list(time = structure(c(1538876340, 1538876400,
1538876460,1538876520, 1538876580, 1538876640, 1538876700, 1538876760, 1526824800,
1526824860, 1526824920, 1526824980, 1526825040, 1526825100), class = c("POSIXct",
"POSIXt"), tzone = "UTC"), group = c("A", "A", "A", "A", "A", "A", "A", "A", "B",
"B", "B", "B", "B", "B"), is.5 = c(0, 1, 1, 0, 1, 0, 0, 1, 0, 0, 1, 1, 0, 1)),
class = c("tbl_df", "tbl", "data.frame"), row.names = c(NA, -14L))
I prefer a tidyverse
solution.
Assumptions
Data is sorted by
group
and then bytime
There are no gaps in
time
within each group
Update
Thanks for the contributions. I've timed some of the proposed approaches on the full data (n=2,583,360)
- the
rle
approach by @markus took 0.53 seconds - the
cumsum
approach by @M-M took 2.85 seconds - the function approach by @MrFlick took 0.66 seconds
- the
rle
anddense_rank
by @tmfmnk took 0.89
r dataframe dplyr time-series tidyverse
2
For someone who is not familiar with how thespell
is computed, can you share a formula or description?
– nsinghs
7 hours ago
@nsinghs I think they mean "hospital spell"
– zx8754
7 hours ago
add a comment |
I'm looking for an efficient way to identify spells/runs in a time series. In the image below, the first three columns is what I have, the fourth column, spell
is what I'm trying to compute. I've tried using dplyr
's lead
and lag
, but that gets too complicated. I've tried rle
but got nowhere.
ReprEx
df <- structure(list(time = structure(c(1538876340, 1538876400,
1538876460,1538876520, 1538876580, 1538876640, 1538876700, 1538876760, 1526824800,
1526824860, 1526824920, 1526824980, 1526825040, 1526825100), class = c("POSIXct",
"POSIXt"), tzone = "UTC"), group = c("A", "A", "A", "A", "A", "A", "A", "A", "B",
"B", "B", "B", "B", "B"), is.5 = c(0, 1, 1, 0, 1, 0, 0, 1, 0, 0, 1, 1, 0, 1)),
class = c("tbl_df", "tbl", "data.frame"), row.names = c(NA, -14L))
I prefer a tidyverse
solution.
Assumptions
Data is sorted by
group
and then bytime
There are no gaps in
time
within each group
Update
Thanks for the contributions. I've timed some of the proposed approaches on the full data (n=2,583,360)
- the
rle
approach by @markus took 0.53 seconds - the
cumsum
approach by @M-M took 2.85 seconds - the function approach by @MrFlick took 0.66 seconds
- the
rle
anddense_rank
by @tmfmnk took 0.89
r dataframe dplyr time-series tidyverse
I'm looking for an efficient way to identify spells/runs in a time series. In the image below, the first three columns is what I have, the fourth column, spell
is what I'm trying to compute. I've tried using dplyr
's lead
and lag
, but that gets too complicated. I've tried rle
but got nowhere.
ReprEx
df <- structure(list(time = structure(c(1538876340, 1538876400,
1538876460,1538876520, 1538876580, 1538876640, 1538876700, 1538876760, 1526824800,
1526824860, 1526824920, 1526824980, 1526825040, 1526825100), class = c("POSIXct",
"POSIXt"), tzone = "UTC"), group = c("A", "A", "A", "A", "A", "A", "A", "A", "B",
"B", "B", "B", "B", "B"), is.5 = c(0, 1, 1, 0, 1, 0, 0, 1, 0, 0, 1, 1, 0, 1)),
class = c("tbl_df", "tbl", "data.frame"), row.names = c(NA, -14L))
I prefer a tidyverse
solution.
Assumptions
Data is sorted by
group
and then bytime
There are no gaps in
time
within each group
Update
Thanks for the contributions. I've timed some of the proposed approaches on the full data (n=2,583,360)
- the
rle
approach by @markus took 0.53 seconds - the
cumsum
approach by @M-M took 2.85 seconds - the function approach by @MrFlick took 0.66 seconds
- the
rle
anddense_rank
by @tmfmnk took 0.89
r dataframe dplyr time-series tidyverse
r dataframe dplyr time-series tidyverse
edited 2 hours ago
Thomas Speidel
asked 7 hours ago
Thomas SpeidelThomas Speidel
359216
359216
2
For someone who is not familiar with how thespell
is computed, can you share a formula or description?
– nsinghs
7 hours ago
@nsinghs I think they mean "hospital spell"
– zx8754
7 hours ago
add a comment |
2
For someone who is not familiar with how thespell
is computed, can you share a formula or description?
– nsinghs
7 hours ago
@nsinghs I think they mean "hospital spell"
– zx8754
7 hours ago
2
2
For someone who is not familiar with how the
spell
is computed, can you share a formula or description?– nsinghs
7 hours ago
For someone who is not familiar with how the
spell
is computed, can you share a formula or description?– nsinghs
7 hours ago
@nsinghs I think they mean "hospital spell"
– zx8754
7 hours ago
@nsinghs I think they mean "hospital spell"
– zx8754
7 hours ago
add a comment |
6 Answers
6
active
oldest
votes
One option using rle
library(dplyr)
df %>%
group_by(group) %>%
mutate(
spell = {
r <- rle(is.5)
r$values <- cumsum(r$values) * r$values
inverse.rle(r)
}
)
# A tibble: 14 x 4
# Groups: group [2]
# time group is.5 spell
# <dttm> <chr> <dbl> <dbl>
# 1 2018-10-07 01:39:00 A 0 0
# 2 2018-10-07 01:40:00 A 1 1
# 3 2018-10-07 01:41:00 A 1 1
# 4 2018-10-07 01:42:00 A 0 0
# 5 2018-10-07 01:43:00 A 1 2
# 6 2018-10-07 01:44:00 A 0 0
# 7 2018-10-07 01:45:00 A 0 0
# 8 2018-10-07 01:46:00 A 1 3
# 9 2018-05-20 14:00:00 B 0 0
#10 2018-05-20 14:01:00 B 0 0
#11 2018-05-20 14:02:00 B 1 1
#12 2018-05-20 14:03:00 B 1 1
#13 2018-05-20 14:04:00 B 0 0
#14 2018-05-20 14:05:00 B 1 2
explanation
When we call
r <- rle(df$is.5)
the result we get is
r
#Run Length Encoding
# lengths: int [1:10] 1 2 1 1 2 1 2 2 1 1
# values : num [1:10] 0 1 0 1 0 1 0 1 0 1
We need to replace values
with the cumulative sum where values == 1
while values
should remain zero otherwise.
We can achieve this when we multiple cumsum(r$values)
with r$values
; where the latter is a vector of 0
s and 1
s.
r$values <- cumsum(r$values) * r$values
r$values
# [1] 0 1 0 2 0 3 0 4 0 5
Finally we call inverse.rle
to get back a vector of the same length as is.5
.
inverse.rle(r)
# [1] 0 1 1 0 2 0 0 3 0 0 4 4 0 5
We do this for every group
.
1
I understand why and how that works, but it'd be nice if you could draw your line of thoughts into the logic. Cheers.
– M-M
5 hours ago
1
@M-M Added some explanation. Thanks for the comment.
– markus
5 hours ago
add a comment |
Here's a helper function that can return what you are after
spell_index <- function(time, flag) {
change <- time-lag(time)==1 & flag==1 & lag(flag)!=1
cumsum(change) * (flag==1)+0
}
And you can use it with your data like
library(dplyr)
df %>%
group_by(group) %>%
mutate(
spell = spell_index(time, is.5)
)
Basically the helper functions uses lag()
to look for changes. We use cumsum()
to increment the number of changes. Then we multiply by a boolean value so zero-out the values you want to be zeroed out.
add a comment |
This works,
The data,
df <- structure(list(time = structure(c(1538876340, 1538876400, 1538876460,1538876520, 1538876580, 1538876640, 1538876700, 1538876760, 1526824800, 1526824860, 1526824920, 1526824980, 1526825040, 1526825100), class = c("POSIXct", "POSIXt"), tzone = "UTC"), group = c("A", "A", "A", "A", "A", "A", "A", "A", "B", "B", "B", "B", "B", "B"), is.5 = c(0, 1, 1, 0, 1, 0, 0, 1, 0, 0, 1, 1, 0, 1)), class = c("tbl_df", "tbl", "data.frame"), row.names = c(NA, -14L))
We split our data by group,
df2 <- split(df, df$group)
Build a function we can apply to the list,
my_func <- function(dat){
rst <- dat %>%
mutate(change = diff(c(0,is.5))) %>%
mutate(flag = change*abs(is.5)) %>%
mutate(spell = ifelse(is.5 == 0 | change == -1, 0, cumsum(flag))) %>%
dplyr::select(time, group, is.5, spell)
return(rst)
}
Then apply it,
l <- lapply(df2, my_func)
We can now turn this list back into a data frame:
do.call(rbind.data.frame, l)
add a comment |
A somehow different possibility could be:
df %>%
group_by(group) %>%
mutate(spell = with(rle(is.5), rep(seq_along(lengths), lengths))) %>%
group_by(group, is.5) %>%
mutate(spell = dense_rank(spell)) %>%
ungroup() %>%
mutate(spell = ifelse(is.5 == 0, 0, spell))
time group is.5 spell
<dttm> <chr> <dbl> <dbl>
1 2018-10-07 01:39:00 A 0 0
2 2018-10-07 01:40:00 A 1 1
3 2018-10-07 01:41:00 A 1 1
4 2018-10-07 01:42:00 A 0 0
5 2018-10-07 01:43:00 A 1 2
6 2018-10-07 01:44:00 A 0 0
7 2018-10-07 01:45:00 A 0 0
8 2018-10-07 01:46:00 A 1 3
9 2018-05-20 14:00:00 B 0 0
10 2018-05-20 14:01:00 B 0 0
11 2018-05-20 14:02:00 B 1 1
12 2018-05-20 14:03:00 B 1 1
13 2018-05-20 14:04:00 B 0 0
14 2018-05-20 14:05:00 B 1 2
add a comment |
One options is using cumsum
:
library(dplyr)
df %>% group_by(group) %>% arrange(group, time) %>%
mutate(spell = is.5 * cumsum( c(0,lag(is.5)[-1]) != is.5 & is.5!=0) )
# # A tibble: 14 x 4
# # Groups: group [2]
# time group is.5 spell
# <dttm> <chr> <dbl> <dbl>
# 1 2018-10-07 01:39:00 A 0 0
# 2 2018-10-07 01:40:00 A 1 1
# 3 2018-10-07 01:41:00 A 1 1
# 4 2018-10-07 01:42:00 A 0 0
# 5 2018-10-07 01:43:00 A 1 2
# 6 2018-10-07 01:44:00 A 0 0
# 7 2018-10-07 01:45:00 A 0 0
# 8 2018-10-07 01:46:00 A 1 3
# 9 2018-05-20 14:00:00 B 0 0
# 10 2018-05-20 14:01:00 B 0 0
# 11 2018-05-20 14:02:00 B 1 1
# 12 2018-05-20 14:03:00 B 1 1
# 13 2018-05-20 14:04:00 B 0 0
# 14 2018-05-20 14:05:00 B 1 2
c(0,lag(is.5)[-1]) != is.5
this takes care of assigning a new id (i.e. spell
) whenever is.5
changes; but we want to avoid assigning new ones to those rows is.5
equal to 0
and that's why I have the second rule in cumsum
function (i.e. (is.5!=0)
).
However, that second rule only prevents assigning a new id (adding 1 to the previous id) but it won't set the id to 0
. That's why I have multiplied the answer by is.5
.
add a comment |
Here is one option with rleid
from data.table
. Convert the 'data.frame' to 'data.table' (setDT(df)
), grouped by 'group', get the run-length-id (rleid
) of 'is.5' and multiply with the values of 'is.5' so as to replace the ids corresponding to 0s in is.5 to 0, assign it to 'spell', then specify the i
with a logical vector to select rows that have 'spell' values not zero, match
those values of 'spell' with unique
'spell' and assign it to 'spell'
library(data.table)
setDT(df)[, spell := rleid(is.5) * as.integer(is.5), group
][!!spell, spell := match(spell, unique(spell))]
# time group is.5 spell
# 1: 2018-10-07 01:39:00 A 0 0
# 2: 2018-10-07 01:40:00 A 1 1
# 3: 2018-10-07 01:41:00 A 1 1
# 4: 2018-10-07 01:42:00 A 0 0
# 5: 2018-10-07 01:43:00 A 1 2
# 6: 2018-10-07 01:44:00 A 0 0
# 7: 2018-10-07 01:45:00 A 0 0
# 8: 2018-10-07 01:46:00 A 1 3
# 9: 2018-05-20 14:00:00 B 0 0
#10: 2018-05-20 14:01:00 B 0 0
#11: 2018-05-20 14:02:00 B 1 1
#12: 2018-05-20 14:03:00 B 1 1
#13: 2018-05-20 14:04:00 B 0 0
#14: 2018-05-20 14:05:00 B 1 2
Or after the first step, use .GRP
df[!!spell, spell := .GRP, spell]
add a comment |
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6 Answers
6
active
oldest
votes
6 Answers
6
active
oldest
votes
active
oldest
votes
active
oldest
votes
One option using rle
library(dplyr)
df %>%
group_by(group) %>%
mutate(
spell = {
r <- rle(is.5)
r$values <- cumsum(r$values) * r$values
inverse.rle(r)
}
)
# A tibble: 14 x 4
# Groups: group [2]
# time group is.5 spell
# <dttm> <chr> <dbl> <dbl>
# 1 2018-10-07 01:39:00 A 0 0
# 2 2018-10-07 01:40:00 A 1 1
# 3 2018-10-07 01:41:00 A 1 1
# 4 2018-10-07 01:42:00 A 0 0
# 5 2018-10-07 01:43:00 A 1 2
# 6 2018-10-07 01:44:00 A 0 0
# 7 2018-10-07 01:45:00 A 0 0
# 8 2018-10-07 01:46:00 A 1 3
# 9 2018-05-20 14:00:00 B 0 0
#10 2018-05-20 14:01:00 B 0 0
#11 2018-05-20 14:02:00 B 1 1
#12 2018-05-20 14:03:00 B 1 1
#13 2018-05-20 14:04:00 B 0 0
#14 2018-05-20 14:05:00 B 1 2
explanation
When we call
r <- rle(df$is.5)
the result we get is
r
#Run Length Encoding
# lengths: int [1:10] 1 2 1 1 2 1 2 2 1 1
# values : num [1:10] 0 1 0 1 0 1 0 1 0 1
We need to replace values
with the cumulative sum where values == 1
while values
should remain zero otherwise.
We can achieve this when we multiple cumsum(r$values)
with r$values
; where the latter is a vector of 0
s and 1
s.
r$values <- cumsum(r$values) * r$values
r$values
# [1] 0 1 0 2 0 3 0 4 0 5
Finally we call inverse.rle
to get back a vector of the same length as is.5
.
inverse.rle(r)
# [1] 0 1 1 0 2 0 0 3 0 0 4 4 0 5
We do this for every group
.
1
I understand why and how that works, but it'd be nice if you could draw your line of thoughts into the logic. Cheers.
– M-M
5 hours ago
1
@M-M Added some explanation. Thanks for the comment.
– markus
5 hours ago
add a comment |
One option using rle
library(dplyr)
df %>%
group_by(group) %>%
mutate(
spell = {
r <- rle(is.5)
r$values <- cumsum(r$values) * r$values
inverse.rle(r)
}
)
# A tibble: 14 x 4
# Groups: group [2]
# time group is.5 spell
# <dttm> <chr> <dbl> <dbl>
# 1 2018-10-07 01:39:00 A 0 0
# 2 2018-10-07 01:40:00 A 1 1
# 3 2018-10-07 01:41:00 A 1 1
# 4 2018-10-07 01:42:00 A 0 0
# 5 2018-10-07 01:43:00 A 1 2
# 6 2018-10-07 01:44:00 A 0 0
# 7 2018-10-07 01:45:00 A 0 0
# 8 2018-10-07 01:46:00 A 1 3
# 9 2018-05-20 14:00:00 B 0 0
#10 2018-05-20 14:01:00 B 0 0
#11 2018-05-20 14:02:00 B 1 1
#12 2018-05-20 14:03:00 B 1 1
#13 2018-05-20 14:04:00 B 0 0
#14 2018-05-20 14:05:00 B 1 2
explanation
When we call
r <- rle(df$is.5)
the result we get is
r
#Run Length Encoding
# lengths: int [1:10] 1 2 1 1 2 1 2 2 1 1
# values : num [1:10] 0 1 0 1 0 1 0 1 0 1
We need to replace values
with the cumulative sum where values == 1
while values
should remain zero otherwise.
We can achieve this when we multiple cumsum(r$values)
with r$values
; where the latter is a vector of 0
s and 1
s.
r$values <- cumsum(r$values) * r$values
r$values
# [1] 0 1 0 2 0 3 0 4 0 5
Finally we call inverse.rle
to get back a vector of the same length as is.5
.
inverse.rle(r)
# [1] 0 1 1 0 2 0 0 3 0 0 4 4 0 5
We do this for every group
.
1
I understand why and how that works, but it'd be nice if you could draw your line of thoughts into the logic. Cheers.
– M-M
5 hours ago
1
@M-M Added some explanation. Thanks for the comment.
– markus
5 hours ago
add a comment |
One option using rle
library(dplyr)
df %>%
group_by(group) %>%
mutate(
spell = {
r <- rle(is.5)
r$values <- cumsum(r$values) * r$values
inverse.rle(r)
}
)
# A tibble: 14 x 4
# Groups: group [2]
# time group is.5 spell
# <dttm> <chr> <dbl> <dbl>
# 1 2018-10-07 01:39:00 A 0 0
# 2 2018-10-07 01:40:00 A 1 1
# 3 2018-10-07 01:41:00 A 1 1
# 4 2018-10-07 01:42:00 A 0 0
# 5 2018-10-07 01:43:00 A 1 2
# 6 2018-10-07 01:44:00 A 0 0
# 7 2018-10-07 01:45:00 A 0 0
# 8 2018-10-07 01:46:00 A 1 3
# 9 2018-05-20 14:00:00 B 0 0
#10 2018-05-20 14:01:00 B 0 0
#11 2018-05-20 14:02:00 B 1 1
#12 2018-05-20 14:03:00 B 1 1
#13 2018-05-20 14:04:00 B 0 0
#14 2018-05-20 14:05:00 B 1 2
explanation
When we call
r <- rle(df$is.5)
the result we get is
r
#Run Length Encoding
# lengths: int [1:10] 1 2 1 1 2 1 2 2 1 1
# values : num [1:10] 0 1 0 1 0 1 0 1 0 1
We need to replace values
with the cumulative sum where values == 1
while values
should remain zero otherwise.
We can achieve this when we multiple cumsum(r$values)
with r$values
; where the latter is a vector of 0
s and 1
s.
r$values <- cumsum(r$values) * r$values
r$values
# [1] 0 1 0 2 0 3 0 4 0 5
Finally we call inverse.rle
to get back a vector of the same length as is.5
.
inverse.rle(r)
# [1] 0 1 1 0 2 0 0 3 0 0 4 4 0 5
We do this for every group
.
One option using rle
library(dplyr)
df %>%
group_by(group) %>%
mutate(
spell = {
r <- rle(is.5)
r$values <- cumsum(r$values) * r$values
inverse.rle(r)
}
)
# A tibble: 14 x 4
# Groups: group [2]
# time group is.5 spell
# <dttm> <chr> <dbl> <dbl>
# 1 2018-10-07 01:39:00 A 0 0
# 2 2018-10-07 01:40:00 A 1 1
# 3 2018-10-07 01:41:00 A 1 1
# 4 2018-10-07 01:42:00 A 0 0
# 5 2018-10-07 01:43:00 A 1 2
# 6 2018-10-07 01:44:00 A 0 0
# 7 2018-10-07 01:45:00 A 0 0
# 8 2018-10-07 01:46:00 A 1 3
# 9 2018-05-20 14:00:00 B 0 0
#10 2018-05-20 14:01:00 B 0 0
#11 2018-05-20 14:02:00 B 1 1
#12 2018-05-20 14:03:00 B 1 1
#13 2018-05-20 14:04:00 B 0 0
#14 2018-05-20 14:05:00 B 1 2
explanation
When we call
r <- rle(df$is.5)
the result we get is
r
#Run Length Encoding
# lengths: int [1:10] 1 2 1 1 2 1 2 2 1 1
# values : num [1:10] 0 1 0 1 0 1 0 1 0 1
We need to replace values
with the cumulative sum where values == 1
while values
should remain zero otherwise.
We can achieve this when we multiple cumsum(r$values)
with r$values
; where the latter is a vector of 0
s and 1
s.
r$values <- cumsum(r$values) * r$values
r$values
# [1] 0 1 0 2 0 3 0 4 0 5
Finally we call inverse.rle
to get back a vector of the same length as is.5
.
inverse.rle(r)
# [1] 0 1 1 0 2 0 0 3 0 0 4 4 0 5
We do this for every group
.
edited 5 hours ago
answered 7 hours ago
markusmarkus
15k11336
15k11336
1
I understand why and how that works, but it'd be nice if you could draw your line of thoughts into the logic. Cheers.
– M-M
5 hours ago
1
@M-M Added some explanation. Thanks for the comment.
– markus
5 hours ago
add a comment |
1
I understand why and how that works, but it'd be nice if you could draw your line of thoughts into the logic. Cheers.
– M-M
5 hours ago
1
@M-M Added some explanation. Thanks for the comment.
– markus
5 hours ago
1
1
I understand why and how that works, but it'd be nice if you could draw your line of thoughts into the logic. Cheers.
– M-M
5 hours ago
I understand why and how that works, but it'd be nice if you could draw your line of thoughts into the logic. Cheers.
– M-M
5 hours ago
1
1
@M-M Added some explanation. Thanks for the comment.
– markus
5 hours ago
@M-M Added some explanation. Thanks for the comment.
– markus
5 hours ago
add a comment |
Here's a helper function that can return what you are after
spell_index <- function(time, flag) {
change <- time-lag(time)==1 & flag==1 & lag(flag)!=1
cumsum(change) * (flag==1)+0
}
And you can use it with your data like
library(dplyr)
df %>%
group_by(group) %>%
mutate(
spell = spell_index(time, is.5)
)
Basically the helper functions uses lag()
to look for changes. We use cumsum()
to increment the number of changes. Then we multiply by a boolean value so zero-out the values you want to be zeroed out.
add a comment |
Here's a helper function that can return what you are after
spell_index <- function(time, flag) {
change <- time-lag(time)==1 & flag==1 & lag(flag)!=1
cumsum(change) * (flag==1)+0
}
And you can use it with your data like
library(dplyr)
df %>%
group_by(group) %>%
mutate(
spell = spell_index(time, is.5)
)
Basically the helper functions uses lag()
to look for changes. We use cumsum()
to increment the number of changes. Then we multiply by a boolean value so zero-out the values you want to be zeroed out.
add a comment |
Here's a helper function that can return what you are after
spell_index <- function(time, flag) {
change <- time-lag(time)==1 & flag==1 & lag(flag)!=1
cumsum(change) * (flag==1)+0
}
And you can use it with your data like
library(dplyr)
df %>%
group_by(group) %>%
mutate(
spell = spell_index(time, is.5)
)
Basically the helper functions uses lag()
to look for changes. We use cumsum()
to increment the number of changes. Then we multiply by a boolean value so zero-out the values you want to be zeroed out.
Here's a helper function that can return what you are after
spell_index <- function(time, flag) {
change <- time-lag(time)==1 & flag==1 & lag(flag)!=1
cumsum(change) * (flag==1)+0
}
And you can use it with your data like
library(dplyr)
df %>%
group_by(group) %>%
mutate(
spell = spell_index(time, is.5)
)
Basically the helper functions uses lag()
to look for changes. We use cumsum()
to increment the number of changes. Then we multiply by a boolean value so zero-out the values you want to be zeroed out.
answered 7 hours ago
MrFlickMrFlick
124k11141173
124k11141173
add a comment |
add a comment |
This works,
The data,
df <- structure(list(time = structure(c(1538876340, 1538876400, 1538876460,1538876520, 1538876580, 1538876640, 1538876700, 1538876760, 1526824800, 1526824860, 1526824920, 1526824980, 1526825040, 1526825100), class = c("POSIXct", "POSIXt"), tzone = "UTC"), group = c("A", "A", "A", "A", "A", "A", "A", "A", "B", "B", "B", "B", "B", "B"), is.5 = c(0, 1, 1, 0, 1, 0, 0, 1, 0, 0, 1, 1, 0, 1)), class = c("tbl_df", "tbl", "data.frame"), row.names = c(NA, -14L))
We split our data by group,
df2 <- split(df, df$group)
Build a function we can apply to the list,
my_func <- function(dat){
rst <- dat %>%
mutate(change = diff(c(0,is.5))) %>%
mutate(flag = change*abs(is.5)) %>%
mutate(spell = ifelse(is.5 == 0 | change == -1, 0, cumsum(flag))) %>%
dplyr::select(time, group, is.5, spell)
return(rst)
}
Then apply it,
l <- lapply(df2, my_func)
We can now turn this list back into a data frame:
do.call(rbind.data.frame, l)
add a comment |
This works,
The data,
df <- structure(list(time = structure(c(1538876340, 1538876400, 1538876460,1538876520, 1538876580, 1538876640, 1538876700, 1538876760, 1526824800, 1526824860, 1526824920, 1526824980, 1526825040, 1526825100), class = c("POSIXct", "POSIXt"), tzone = "UTC"), group = c("A", "A", "A", "A", "A", "A", "A", "A", "B", "B", "B", "B", "B", "B"), is.5 = c(0, 1, 1, 0, 1, 0, 0, 1, 0, 0, 1, 1, 0, 1)), class = c("tbl_df", "tbl", "data.frame"), row.names = c(NA, -14L))
We split our data by group,
df2 <- split(df, df$group)
Build a function we can apply to the list,
my_func <- function(dat){
rst <- dat %>%
mutate(change = diff(c(0,is.5))) %>%
mutate(flag = change*abs(is.5)) %>%
mutate(spell = ifelse(is.5 == 0 | change == -1, 0, cumsum(flag))) %>%
dplyr::select(time, group, is.5, spell)
return(rst)
}
Then apply it,
l <- lapply(df2, my_func)
We can now turn this list back into a data frame:
do.call(rbind.data.frame, l)
add a comment |
This works,
The data,
df <- structure(list(time = structure(c(1538876340, 1538876400, 1538876460,1538876520, 1538876580, 1538876640, 1538876700, 1538876760, 1526824800, 1526824860, 1526824920, 1526824980, 1526825040, 1526825100), class = c("POSIXct", "POSIXt"), tzone = "UTC"), group = c("A", "A", "A", "A", "A", "A", "A", "A", "B", "B", "B", "B", "B", "B"), is.5 = c(0, 1, 1, 0, 1, 0, 0, 1, 0, 0, 1, 1, 0, 1)), class = c("tbl_df", "tbl", "data.frame"), row.names = c(NA, -14L))
We split our data by group,
df2 <- split(df, df$group)
Build a function we can apply to the list,
my_func <- function(dat){
rst <- dat %>%
mutate(change = diff(c(0,is.5))) %>%
mutate(flag = change*abs(is.5)) %>%
mutate(spell = ifelse(is.5 == 0 | change == -1, 0, cumsum(flag))) %>%
dplyr::select(time, group, is.5, spell)
return(rst)
}
Then apply it,
l <- lapply(df2, my_func)
We can now turn this list back into a data frame:
do.call(rbind.data.frame, l)
This works,
The data,
df <- structure(list(time = structure(c(1538876340, 1538876400, 1538876460,1538876520, 1538876580, 1538876640, 1538876700, 1538876760, 1526824800, 1526824860, 1526824920, 1526824980, 1526825040, 1526825100), class = c("POSIXct", "POSIXt"), tzone = "UTC"), group = c("A", "A", "A", "A", "A", "A", "A", "A", "B", "B", "B", "B", "B", "B"), is.5 = c(0, 1, 1, 0, 1, 0, 0, 1, 0, 0, 1, 1, 0, 1)), class = c("tbl_df", "tbl", "data.frame"), row.names = c(NA, -14L))
We split our data by group,
df2 <- split(df, df$group)
Build a function we can apply to the list,
my_func <- function(dat){
rst <- dat %>%
mutate(change = diff(c(0,is.5))) %>%
mutate(flag = change*abs(is.5)) %>%
mutate(spell = ifelse(is.5 == 0 | change == -1, 0, cumsum(flag))) %>%
dplyr::select(time, group, is.5, spell)
return(rst)
}
Then apply it,
l <- lapply(df2, my_func)
We can now turn this list back into a data frame:
do.call(rbind.data.frame, l)
edited 7 hours ago
answered 7 hours ago
Hector HaffendenHector Haffenden
579216
579216
add a comment |
add a comment |
A somehow different possibility could be:
df %>%
group_by(group) %>%
mutate(spell = with(rle(is.5), rep(seq_along(lengths), lengths))) %>%
group_by(group, is.5) %>%
mutate(spell = dense_rank(spell)) %>%
ungroup() %>%
mutate(spell = ifelse(is.5 == 0, 0, spell))
time group is.5 spell
<dttm> <chr> <dbl> <dbl>
1 2018-10-07 01:39:00 A 0 0
2 2018-10-07 01:40:00 A 1 1
3 2018-10-07 01:41:00 A 1 1
4 2018-10-07 01:42:00 A 0 0
5 2018-10-07 01:43:00 A 1 2
6 2018-10-07 01:44:00 A 0 0
7 2018-10-07 01:45:00 A 0 0
8 2018-10-07 01:46:00 A 1 3
9 2018-05-20 14:00:00 B 0 0
10 2018-05-20 14:01:00 B 0 0
11 2018-05-20 14:02:00 B 1 1
12 2018-05-20 14:03:00 B 1 1
13 2018-05-20 14:04:00 B 0 0
14 2018-05-20 14:05:00 B 1 2
add a comment |
A somehow different possibility could be:
df %>%
group_by(group) %>%
mutate(spell = with(rle(is.5), rep(seq_along(lengths), lengths))) %>%
group_by(group, is.5) %>%
mutate(spell = dense_rank(spell)) %>%
ungroup() %>%
mutate(spell = ifelse(is.5 == 0, 0, spell))
time group is.5 spell
<dttm> <chr> <dbl> <dbl>
1 2018-10-07 01:39:00 A 0 0
2 2018-10-07 01:40:00 A 1 1
3 2018-10-07 01:41:00 A 1 1
4 2018-10-07 01:42:00 A 0 0
5 2018-10-07 01:43:00 A 1 2
6 2018-10-07 01:44:00 A 0 0
7 2018-10-07 01:45:00 A 0 0
8 2018-10-07 01:46:00 A 1 3
9 2018-05-20 14:00:00 B 0 0
10 2018-05-20 14:01:00 B 0 0
11 2018-05-20 14:02:00 B 1 1
12 2018-05-20 14:03:00 B 1 1
13 2018-05-20 14:04:00 B 0 0
14 2018-05-20 14:05:00 B 1 2
add a comment |
A somehow different possibility could be:
df %>%
group_by(group) %>%
mutate(spell = with(rle(is.5), rep(seq_along(lengths), lengths))) %>%
group_by(group, is.5) %>%
mutate(spell = dense_rank(spell)) %>%
ungroup() %>%
mutate(spell = ifelse(is.5 == 0, 0, spell))
time group is.5 spell
<dttm> <chr> <dbl> <dbl>
1 2018-10-07 01:39:00 A 0 0
2 2018-10-07 01:40:00 A 1 1
3 2018-10-07 01:41:00 A 1 1
4 2018-10-07 01:42:00 A 0 0
5 2018-10-07 01:43:00 A 1 2
6 2018-10-07 01:44:00 A 0 0
7 2018-10-07 01:45:00 A 0 0
8 2018-10-07 01:46:00 A 1 3
9 2018-05-20 14:00:00 B 0 0
10 2018-05-20 14:01:00 B 0 0
11 2018-05-20 14:02:00 B 1 1
12 2018-05-20 14:03:00 B 1 1
13 2018-05-20 14:04:00 B 0 0
14 2018-05-20 14:05:00 B 1 2
A somehow different possibility could be:
df %>%
group_by(group) %>%
mutate(spell = with(rle(is.5), rep(seq_along(lengths), lengths))) %>%
group_by(group, is.5) %>%
mutate(spell = dense_rank(spell)) %>%
ungroup() %>%
mutate(spell = ifelse(is.5 == 0, 0, spell))
time group is.5 spell
<dttm> <chr> <dbl> <dbl>
1 2018-10-07 01:39:00 A 0 0
2 2018-10-07 01:40:00 A 1 1
3 2018-10-07 01:41:00 A 1 1
4 2018-10-07 01:42:00 A 0 0
5 2018-10-07 01:43:00 A 1 2
6 2018-10-07 01:44:00 A 0 0
7 2018-10-07 01:45:00 A 0 0
8 2018-10-07 01:46:00 A 1 3
9 2018-05-20 14:00:00 B 0 0
10 2018-05-20 14:01:00 B 0 0
11 2018-05-20 14:02:00 B 1 1
12 2018-05-20 14:03:00 B 1 1
13 2018-05-20 14:04:00 B 0 0
14 2018-05-20 14:05:00 B 1 2
answered 7 hours ago
tmfmnktmfmnk
3,6211516
3,6211516
add a comment |
add a comment |
One options is using cumsum
:
library(dplyr)
df %>% group_by(group) %>% arrange(group, time) %>%
mutate(spell = is.5 * cumsum( c(0,lag(is.5)[-1]) != is.5 & is.5!=0) )
# # A tibble: 14 x 4
# # Groups: group [2]
# time group is.5 spell
# <dttm> <chr> <dbl> <dbl>
# 1 2018-10-07 01:39:00 A 0 0
# 2 2018-10-07 01:40:00 A 1 1
# 3 2018-10-07 01:41:00 A 1 1
# 4 2018-10-07 01:42:00 A 0 0
# 5 2018-10-07 01:43:00 A 1 2
# 6 2018-10-07 01:44:00 A 0 0
# 7 2018-10-07 01:45:00 A 0 0
# 8 2018-10-07 01:46:00 A 1 3
# 9 2018-05-20 14:00:00 B 0 0
# 10 2018-05-20 14:01:00 B 0 0
# 11 2018-05-20 14:02:00 B 1 1
# 12 2018-05-20 14:03:00 B 1 1
# 13 2018-05-20 14:04:00 B 0 0
# 14 2018-05-20 14:05:00 B 1 2
c(0,lag(is.5)[-1]) != is.5
this takes care of assigning a new id (i.e. spell
) whenever is.5
changes; but we want to avoid assigning new ones to those rows is.5
equal to 0
and that's why I have the second rule in cumsum
function (i.e. (is.5!=0)
).
However, that second rule only prevents assigning a new id (adding 1 to the previous id) but it won't set the id to 0
. That's why I have multiplied the answer by is.5
.
add a comment |
One options is using cumsum
:
library(dplyr)
df %>% group_by(group) %>% arrange(group, time) %>%
mutate(spell = is.5 * cumsum( c(0,lag(is.5)[-1]) != is.5 & is.5!=0) )
# # A tibble: 14 x 4
# # Groups: group [2]
# time group is.5 spell
# <dttm> <chr> <dbl> <dbl>
# 1 2018-10-07 01:39:00 A 0 0
# 2 2018-10-07 01:40:00 A 1 1
# 3 2018-10-07 01:41:00 A 1 1
# 4 2018-10-07 01:42:00 A 0 0
# 5 2018-10-07 01:43:00 A 1 2
# 6 2018-10-07 01:44:00 A 0 0
# 7 2018-10-07 01:45:00 A 0 0
# 8 2018-10-07 01:46:00 A 1 3
# 9 2018-05-20 14:00:00 B 0 0
# 10 2018-05-20 14:01:00 B 0 0
# 11 2018-05-20 14:02:00 B 1 1
# 12 2018-05-20 14:03:00 B 1 1
# 13 2018-05-20 14:04:00 B 0 0
# 14 2018-05-20 14:05:00 B 1 2
c(0,lag(is.5)[-1]) != is.5
this takes care of assigning a new id (i.e. spell
) whenever is.5
changes; but we want to avoid assigning new ones to those rows is.5
equal to 0
and that's why I have the second rule in cumsum
function (i.e. (is.5!=0)
).
However, that second rule only prevents assigning a new id (adding 1 to the previous id) but it won't set the id to 0
. That's why I have multiplied the answer by is.5
.
add a comment |
One options is using cumsum
:
library(dplyr)
df %>% group_by(group) %>% arrange(group, time) %>%
mutate(spell = is.5 * cumsum( c(0,lag(is.5)[-1]) != is.5 & is.5!=0) )
# # A tibble: 14 x 4
# # Groups: group [2]
# time group is.5 spell
# <dttm> <chr> <dbl> <dbl>
# 1 2018-10-07 01:39:00 A 0 0
# 2 2018-10-07 01:40:00 A 1 1
# 3 2018-10-07 01:41:00 A 1 1
# 4 2018-10-07 01:42:00 A 0 0
# 5 2018-10-07 01:43:00 A 1 2
# 6 2018-10-07 01:44:00 A 0 0
# 7 2018-10-07 01:45:00 A 0 0
# 8 2018-10-07 01:46:00 A 1 3
# 9 2018-05-20 14:00:00 B 0 0
# 10 2018-05-20 14:01:00 B 0 0
# 11 2018-05-20 14:02:00 B 1 1
# 12 2018-05-20 14:03:00 B 1 1
# 13 2018-05-20 14:04:00 B 0 0
# 14 2018-05-20 14:05:00 B 1 2
c(0,lag(is.5)[-1]) != is.5
this takes care of assigning a new id (i.e. spell
) whenever is.5
changes; but we want to avoid assigning new ones to those rows is.5
equal to 0
and that's why I have the second rule in cumsum
function (i.e. (is.5!=0)
).
However, that second rule only prevents assigning a new id (adding 1 to the previous id) but it won't set the id to 0
. That's why I have multiplied the answer by is.5
.
One options is using cumsum
:
library(dplyr)
df %>% group_by(group) %>% arrange(group, time) %>%
mutate(spell = is.5 * cumsum( c(0,lag(is.5)[-1]) != is.5 & is.5!=0) )
# # A tibble: 14 x 4
# # Groups: group [2]
# time group is.5 spell
# <dttm> <chr> <dbl> <dbl>
# 1 2018-10-07 01:39:00 A 0 0
# 2 2018-10-07 01:40:00 A 1 1
# 3 2018-10-07 01:41:00 A 1 1
# 4 2018-10-07 01:42:00 A 0 0
# 5 2018-10-07 01:43:00 A 1 2
# 6 2018-10-07 01:44:00 A 0 0
# 7 2018-10-07 01:45:00 A 0 0
# 8 2018-10-07 01:46:00 A 1 3
# 9 2018-05-20 14:00:00 B 0 0
# 10 2018-05-20 14:01:00 B 0 0
# 11 2018-05-20 14:02:00 B 1 1
# 12 2018-05-20 14:03:00 B 1 1
# 13 2018-05-20 14:04:00 B 0 0
# 14 2018-05-20 14:05:00 B 1 2
c(0,lag(is.5)[-1]) != is.5
this takes care of assigning a new id (i.e. spell
) whenever is.5
changes; but we want to avoid assigning new ones to those rows is.5
equal to 0
and that's why I have the second rule in cumsum
function (i.e. (is.5!=0)
).
However, that second rule only prevents assigning a new id (adding 1 to the previous id) but it won't set the id to 0
. That's why I have multiplied the answer by is.5
.
answered 5 hours ago
M-MM-M
7,17962146
7,17962146
add a comment |
add a comment |
Here is one option with rleid
from data.table
. Convert the 'data.frame' to 'data.table' (setDT(df)
), grouped by 'group', get the run-length-id (rleid
) of 'is.5' and multiply with the values of 'is.5' so as to replace the ids corresponding to 0s in is.5 to 0, assign it to 'spell', then specify the i
with a logical vector to select rows that have 'spell' values not zero, match
those values of 'spell' with unique
'spell' and assign it to 'spell'
library(data.table)
setDT(df)[, spell := rleid(is.5) * as.integer(is.5), group
][!!spell, spell := match(spell, unique(spell))]
# time group is.5 spell
# 1: 2018-10-07 01:39:00 A 0 0
# 2: 2018-10-07 01:40:00 A 1 1
# 3: 2018-10-07 01:41:00 A 1 1
# 4: 2018-10-07 01:42:00 A 0 0
# 5: 2018-10-07 01:43:00 A 1 2
# 6: 2018-10-07 01:44:00 A 0 0
# 7: 2018-10-07 01:45:00 A 0 0
# 8: 2018-10-07 01:46:00 A 1 3
# 9: 2018-05-20 14:00:00 B 0 0
#10: 2018-05-20 14:01:00 B 0 0
#11: 2018-05-20 14:02:00 B 1 1
#12: 2018-05-20 14:03:00 B 1 1
#13: 2018-05-20 14:04:00 B 0 0
#14: 2018-05-20 14:05:00 B 1 2
Or after the first step, use .GRP
df[!!spell, spell := .GRP, spell]
add a comment |
Here is one option with rleid
from data.table
. Convert the 'data.frame' to 'data.table' (setDT(df)
), grouped by 'group', get the run-length-id (rleid
) of 'is.5' and multiply with the values of 'is.5' so as to replace the ids corresponding to 0s in is.5 to 0, assign it to 'spell', then specify the i
with a logical vector to select rows that have 'spell' values not zero, match
those values of 'spell' with unique
'spell' and assign it to 'spell'
library(data.table)
setDT(df)[, spell := rleid(is.5) * as.integer(is.5), group
][!!spell, spell := match(spell, unique(spell))]
# time group is.5 spell
# 1: 2018-10-07 01:39:00 A 0 0
# 2: 2018-10-07 01:40:00 A 1 1
# 3: 2018-10-07 01:41:00 A 1 1
# 4: 2018-10-07 01:42:00 A 0 0
# 5: 2018-10-07 01:43:00 A 1 2
# 6: 2018-10-07 01:44:00 A 0 0
# 7: 2018-10-07 01:45:00 A 0 0
# 8: 2018-10-07 01:46:00 A 1 3
# 9: 2018-05-20 14:00:00 B 0 0
#10: 2018-05-20 14:01:00 B 0 0
#11: 2018-05-20 14:02:00 B 1 1
#12: 2018-05-20 14:03:00 B 1 1
#13: 2018-05-20 14:04:00 B 0 0
#14: 2018-05-20 14:05:00 B 1 2
Or after the first step, use .GRP
df[!!spell, spell := .GRP, spell]
add a comment |
Here is one option with rleid
from data.table
. Convert the 'data.frame' to 'data.table' (setDT(df)
), grouped by 'group', get the run-length-id (rleid
) of 'is.5' and multiply with the values of 'is.5' so as to replace the ids corresponding to 0s in is.5 to 0, assign it to 'spell', then specify the i
with a logical vector to select rows that have 'spell' values not zero, match
those values of 'spell' with unique
'spell' and assign it to 'spell'
library(data.table)
setDT(df)[, spell := rleid(is.5) * as.integer(is.5), group
][!!spell, spell := match(spell, unique(spell))]
# time group is.5 spell
# 1: 2018-10-07 01:39:00 A 0 0
# 2: 2018-10-07 01:40:00 A 1 1
# 3: 2018-10-07 01:41:00 A 1 1
# 4: 2018-10-07 01:42:00 A 0 0
# 5: 2018-10-07 01:43:00 A 1 2
# 6: 2018-10-07 01:44:00 A 0 0
# 7: 2018-10-07 01:45:00 A 0 0
# 8: 2018-10-07 01:46:00 A 1 3
# 9: 2018-05-20 14:00:00 B 0 0
#10: 2018-05-20 14:01:00 B 0 0
#11: 2018-05-20 14:02:00 B 1 1
#12: 2018-05-20 14:03:00 B 1 1
#13: 2018-05-20 14:04:00 B 0 0
#14: 2018-05-20 14:05:00 B 1 2
Or after the first step, use .GRP
df[!!spell, spell := .GRP, spell]
Here is one option with rleid
from data.table
. Convert the 'data.frame' to 'data.table' (setDT(df)
), grouped by 'group', get the run-length-id (rleid
) of 'is.5' and multiply with the values of 'is.5' so as to replace the ids corresponding to 0s in is.5 to 0, assign it to 'spell', then specify the i
with a logical vector to select rows that have 'spell' values not zero, match
those values of 'spell' with unique
'spell' and assign it to 'spell'
library(data.table)
setDT(df)[, spell := rleid(is.5) * as.integer(is.5), group
][!!spell, spell := match(spell, unique(spell))]
# time group is.5 spell
# 1: 2018-10-07 01:39:00 A 0 0
# 2: 2018-10-07 01:40:00 A 1 1
# 3: 2018-10-07 01:41:00 A 1 1
# 4: 2018-10-07 01:42:00 A 0 0
# 5: 2018-10-07 01:43:00 A 1 2
# 6: 2018-10-07 01:44:00 A 0 0
# 7: 2018-10-07 01:45:00 A 0 0
# 8: 2018-10-07 01:46:00 A 1 3
# 9: 2018-05-20 14:00:00 B 0 0
#10: 2018-05-20 14:01:00 B 0 0
#11: 2018-05-20 14:02:00 B 1 1
#12: 2018-05-20 14:03:00 B 1 1
#13: 2018-05-20 14:04:00 B 0 0
#14: 2018-05-20 14:05:00 B 1 2
Or after the first step, use .GRP
df[!!spell, spell := .GRP, spell]
edited 1 hour ago
answered 2 hours ago
akrunakrun
418k13207282
418k13207282
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2
For someone who is not familiar with how the
spell
is computed, can you share a formula or description?– nsinghs
7 hours ago
@nsinghs I think they mean "hospital spell"
– zx8754
7 hours ago