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dplyr silently lets it pass if a user mistakenly calls select() on a tbl_df with a row-filter expression, instead of filter().

How exactly does select() evaluate a row-filter expression (should be meaningless), and why does it evaluate to always-TRUE? Instead of FALSE, which would help catch the error (and/or raising warning 'Warning: select() received meaningless expression'), both of which would be better behavior?

df <- tbl_df(data.frame(u=sample.int(3,10,replace=T), v=sample.int(4,10,replace=T)))

df %.% select(u!=3 & v>=3) # NONSENSE! silently passes all rows of df!

df %.% filter(u!=3 & v>=3) # CORRECT: filters only the 4 rows specified

u v
1 1 3
2 2 3
3 2 4
4 2 4    

u v
1  2 3
2  1 3
3  1 2
4  2 3
5  1 2
6  3 3
7  1 3
8  1 2
9  3 1
10 3 4
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1 Answer 1

up vote 4 down vote accepted

You can have a look of the source code.

To fully understand what is going on, let's do debug(select_vars_q) then run df %.% select(u!=3 & v>=3).

The variables vars and args are

Browse[2]> vars
[1] "u" "v"
Browse[2]> args
u != 3 & v >= 3

Next, we only consider the lines which are related to args. For instance, in line 107

debug: ind_list <- lapply(args, eval, env = select_env)
Browse[2]> lapply(args, eval, env = select_env)

This line is used when args is starts_with, ends_with,...etc. (see 67), and it will return variable index number based on args.

In our case, the returned value is FALSE which is 0 (why? since 61 implies u=1 and v=2), therefore, it does not match any variables, then this line will ensure all columns will be returned when nothing is matched.

To confirm my analysis, let's run this confusing command df %.% select(u=2), According to above analysis, ind_list will be 2, it means that column 2 will be returned. And the result:

> df %.% select(u=2)
Source: local data frame [10 x 1]

1  3
2  3
3  2
4  4
5  2
6  4
7  2
8  2
9  1
10 1

Yes, it is the 2nd column.!

In short, if the argument of select is not starts_with, ends_with...etc, and when the argument is a number (or can be evaluated as a number), then that number will be interpreted as column number.

For example, df %.% select(1) returns the first column and df %.% select(2) returns the 2nd column.

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Great analysis. Do you agree it sounds like a useability bug/grounds for a warning to fail to parse a select() expression? –  smci Apr 13 '14 at 6:17
it is sensible to show warnings for such expressions, but it is hard to avoid all possible human error...for example, would you avoid df %.% select(u=2)? It may make sense for some cases (while doesn't in many other cases). –  Randy Lai Apr 13 '14 at 6:31
Yes I'm not talking about putting training wheels on everything, just catching easy-to-catch and common user error. –  smci Apr 13 '14 at 7:45
I don't know for others, but it is quite clear for me select applies to columns and filter applies to rows...may be because I know sql, and sql has similar keywords. –  Randy Lai Apr 13 '14 at 7:58
It would be nice if select() could warn you when you're using it incorrectly, but I think it's very very hard due to the design of the function. –  hadley Apr 14 '14 at 14:58

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