## Hot answers tagged subset

8

I don't think you need all these NAs. If you just need the counts, you can simply table by condition, here's an example
setDT(MyData)[, as.list(table(factor(type[weight > weight[type == 'benchmark']]))),
by = year]
# year Female Male
# 1: 1990 1 4
# 2: 1991 2 1
# 3: 1992 1 3
Another option (probably a bit ...

5

Here are some options:
library(dplyr)
# also in @bramtayl's answer:
df2 %>% filter(dept == "econ") %>% filter(value==min(value))
# or
df2 %>% filter(dept == "econ") %>% slice(which.min(value))
# or...
library(data.table)
setDT(df2)[dept == "econ"][value==min(value)]
# or
setDT(df2)[dept == "econ"][which.min(value)]
These packages offer ...

5

In [120]:
x[x[: , 2] > 2]
Out[120]:
array([[ 3., 4., 5.],
[ 6., 7., 8.]])
Break it down
In [122]:
mask = x[: , 2] > 2
mask
Out[122]:
array([False, True, True], dtype=bool)
In [123]:
x[mask]
Out[123]:
array([[ 3., 4., 5.],
[ 6., 7., 8.]])

4

prevSets is set to None here:
prevSets = subSets(aset[:len(aset)-1])
because the following line produces None:
return prevSets.extend(newSets)
list.extend() alters the list in-place and returns None. Separate the call and return:
prevSets.extend(newSets)
return prevSets
or use concatenation instead:
return prevSets + newSets
Note that you make a ...

3

We can try the row/column indexing
M[cbind(1:nrow(M), v)]
#[1] 11 2 3 9 5

3

Calculate the correlation matrix cd, checking if there is anything >0.4.
Then subset away, ignoring the diagonals, where row==col:
cd <- abs(cor(data, use="pairwise.complete.obs")) > 0.4
data[-unique(col(cd)[cd & row(cd) != col(cd)])]

3

This seems to work:
df %>%
group_by(patientID) %>%
filter(disc_grade == min(disc_grade, na.rm=TRUE)) %>%
summarise(eye = if (n()==1) eye else "Tie", disc_grade = first(disc_grade))
patientID eye disc_grade
(dbl) (chr) (chr)
1 1 L B
2 2 L B
3 3 R B
4 4 ...

3

You can do this with group_by and filter in the dplyr package:
library(dplyr)
df2 = df %>%
group_by(id) %>%
filter(all(check %in% ch.vars))

3

And a data.table solution:
library(data.table)
data.table(df)[,.SD[all(check%in%ch.vars)],by="id"]
# id v1 v2 check
#1: A 1 1 abc
#2: A 1 1 hit
#3: A 1 1 twi
#4: A 1 1 mot
You can also use setkey for id to make it faster.

3

You can set the names of the list and change the expression in str_split to whatever works for you.
lapply(
strsplit(
grps,
'}\\{|\\{|}'
),
function(x) {
df[df$foo %in% x,]
}
)
[[1]]
[1] foo doo
<0 rows> (or 0-length row.names)
[[2]]
foo doo
3 119 -1.388861
8 119 -2.656455
14 119 1.214675
18 119 ...

3

OP provided only a single column in the example. Assuming that there are multiple columns in the original dataset, we group by 'z', sample 1 row from the sequence of rows per group, get the row index (.I), extract the column with the row index ($V1) and use that to subset the rows of 'dt'.
dt[dt[ , .I[sample(.N,1)] , by = z]$V1]

2

I don't think it has anything to do with the name 'factor'. See these instances where it succeeds as expected:
for(j in unique(df$factor) ){
print(subset(df, factor==j))
}
#-----
factor Numeric
1 red 1
factor Numeric
2 green 2
3 green 3
factor Numeric
4 blue 3
for(j in factor ){
print(subset(df, factor==j))
}
...

2

I think @42- and I may simply not be communicating well, so for clarity's sake what I was referring to in my comments was that simply changing the second example as follows:
> f<-unique(df$factor)
> f
[1] red green blue
Levels: blue green red
> for(j in 1:length(f)){
+ print(subset(df, factor==f[j]))
+ }
factor Numeric
1 red 1
...

2

Are you looking for this?
import numpy as np
array_a = np.array([1,2,3,4,5]) # length of 5
array_b = np.array([6,7,8,9,10]) # length of 5
condition = array_a>3
print condition
subset_a = array_a[condition]
print subset_a
subset_b = array_b[condition]
print subset_b
http://ideone.com/dAFLYL

2

We can use
subset(airquality, Temp > 80, select = c(1,4))
Based on the comments by the OP, using get to subset the rows (provided by @Ananda Mahto in the comments) is needed
subset(airquality, get(names(airquality)[4]) > 80, c(1, 4))

2

One option with data.table
library(data.table)
na.omit(setDT(df))[, eye:=if(uniqueN(disc_grade)==1 &
.N >1) 'Tie' else eye, patientID
][order(factor(disc_grade, levels=c('A', 'B', 'C'))),
.SD[1L] ,patientID][order(patientID)]
# patientID eye disc_grade
#1: 1 L B
#2: 2 L B
...

2

Based on the documentation in ?Extract
drop : For matrices and arrays. If TRUE the result is coerced to the
lowest possible dimension (see the examples). This only works for
extracting elements, not for the replacement. See drop for further
details.
Also, by default it is drop = TRUE for [
x[i, j, ... , drop = TRUE]
So, we need to specify drop ...

2

We can use aggregate
aggregate(Score~., df1, FUN= max)
# Id Date Subject Score
#1 12221 08/01/2007 Math 92
#2 12221 11/01/2007 Math 45
#3 2856 03/18/2004 Science 84
Or with dplyr
library(dplyr)
df1 %>%
group_by(Id, Date, Subject) %>%
summarise(Score= max(Score))
Or using data.table
library(data.table)
...

2

EDIT
Here is another approach. In this version, you filter rows by weight for benchmark for each year. Then, you count how many data point exists for male and female using count(). You make the data format wide using spread(). You want to join this data with rows with benchmark, which is done by the first right_join(). Finally, you merge this data with the ...

2

You could try:
set.seed(50)
data <- data.frame(x1=rnorm(10), x2=rnorm(10), x3=runif(10), x4=runif(10,15,20))
mycor <- cor(data, use="pairwise.complete.obs")
data[, !apply(mycor, 2, function (x) max(x[-which.max(x)]) >.4 | min(x[which.min(x)]) < -.4) ]

2

Just for fun, here's an another solution using a vector indexing
t(M)[v + (seq_len(nrow(M)) - 1) * ncol(M)]
# [1] 11 2 3 9 5

2

Use dcg!
list_allsubseqs(Es, Uss) :-
list_acc_allsubseqs(Es, [[]], Uss).
lists_prependum([] , _) --> [].
lists_prependum([Es|Ess], E) --> [[E|Es]], lists_prependum(Ess, E).
list_acc_allsubseqs([] , Uss , Uss).
list_acc_allsubseqs([E|Es], Uss0, Uss) :-
list_acc_allsubseqs(Es, Uss0, Uss1),
phrase(lists_prependum(Uss1,E), Uss, Uss1).
...

2

First off all the $ operator can not handle variables. In your code you are always looking up a column named varname.
Replace $varname with [varname] instead.
The next error is that you are conditioning on a vector, dat$varname==val will be vector of booleans.
A third error in your code is that you are naming your function subset and thus overlayering the ...

2

I would ultimately recommend you keep your data in a list (or you don't even need lists if you are using tools like "data.table" and "dplyr" which give you extremely flexible subsetting options).
However, if you really feel you need separate data.frames, try the following:
## Assume your data.frame is called "mydf"....
temp <- split(mydf, mydf$yq, drop ...

2

We use sub to remove the prefix x. from the column names of 'x', check whether it is %in% the 'f' column to create a logical vector and use this to subset the columns of 'x'. We removed the first column name (as it is 'f') and later concatenated with TRUE to include that column also in the subset.
x[c(TRUE,sub('.*\\.', '', names(x)[-1]) %in% x$f)]
Or we ...

2

This would also work.
x[c(T, (gsub("x.", "", names(x)) %in% x$f)[-1])]

1

You can do:
library(data.table)
setDT(df)[ ,lapply(c('Male','Female'), function(x){
sum(type==x & weight>weight[which(type=='benchmark')])
}), year]
# year V1 V2
#1: 1990 4 1
#2: 1991 1 2
#3: 1992 3 1

1

This will do:
t.h <- read.table(header=TRUE, text=
'Year th
1991 1605897
2010 1803476')
d <- merge(dataset, t.h)
subset(dataset, Cum.Sum < t.h)

1

There's an easy alternative: use your current implementation of a power set procedure and sort the output as required:
(define (compare s1 s2)
(let ((cmp (- (length s1) (length s2))))
(cond ((negative? cmp) #t)
((positive? cmp) #f)
(else (less-than? s1 s2)))))
(define (less-than? s1 s2)
(cond ((or (null? s1) (null? s2)) #f)
...

1

Agreed that chaining is necessary:
library(magrittr)
df %>%
`[`(.$dept == "econ", ) %>%
`[`(.$value == min(.$value), )
Why not stick with dplyr though?
library(dplyr)
df %>%
filter(dept == "econ") %>%
filter(value == min(value) )

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