# Include zero frequencies in frequency table for Likert data

I have a dataset with responses to a Likert item on a 9pt scale. I would like to create a frequency table (and barplot) of the data but some values on the scale never occur in my dataset, so `table()` removes that value from the frequency table. I would like it instead to present the value with a frequency of `0`. That is, given the following dataset

``````# Assume a 5pt Likert scale for ease of example
data <- c(1, 1, 2, 1, 4, 4, 5)
``````

I would like to get the following frequency table without having to manually insert a column named `3` with the value `0`.

``````1 2 3 4 5
3 1 0 2 1
``````

I'm new to `R`, so maybe I've overlooked something basic, but I haven't come across a function or option that gives the desired result.

EDIT:

`tabular` produces frequency tables while `table` produces contingency tables. However, to get zero frequencies in a one-dimensional contingency table as in the above example, the below code still works, of course.

This question provided the missing link. By converting the Likert item to a factor, and explicitly specifying the levels, levels with a frequency of `0` are still counted

``````data <- factor(data, levels = c(1:5))
table(data)
``````

produces the desired output

`table` produces a contingency table, while `tabular` produces a frequency table that includes zero counts.

``````tabulate(data)
# [1] 3 1 0 2 1
``````

Another way (if you have integers starting from 1 - but easily modifiable for other cases):

``````setNames(tabulate(data), 1:max(data))  # to make the output easier to read
# 1 2 3 4 5
# 3 1 0 2 1
``````
• Well. Thanks but tabulate is not the universal way to produce frequency tables. It works on positive integers. try, e.g. `tabulate (0:1)` or `tabulate (-50000:1)` (guess why is the output identical if the arguments are so very different). Tabulate works on your special case (you happen to have a "Likert" scale starting from 1, and on factors (because levels are coded, by convention, as positive consecutive integers starting from 1). It will not work on character vectors or with zero and negative values. Nov 12, 2015 at 11:55
• ... so while I like my answer to be accepted, I'd actually say that the other answer is more universal. Converting x to factor and then make a one-dimensional contingency table with `table` will work with all kinds of data while `tabulate` will only work with some special cases. Nov 12, 2015 at 11:57
• In fact, this does not work if the 0-frequency data corresponds to the maximum. For instance, in the example above, if there was not any 5 in `data`, `tabulate` would not show it neither. Jan 18, 2018 at 9:19

If you want to quickly calculate the counts or proportions for multiple likert items and get your output in a data.frame, you may like the function `psych::response.frequencies` in the `psych` package.

Lets create some data (note that there are no 9s):

``````df <- data.frame(item1 = sample(1:7, 2000, replace = TRUE),
item2 = sample(1:7, 2000, replace = TRUE),
item3 = sample(1:7, 2000, replace = TRUE))
``````

If you want to calculate the proportion in each category

``````psych::response.frequencies(df, max = 1000, uniqueitems = 1:9)
``````

you get the following:

``````           1      2     3      4      5      6      7 8 9 miss
item1 0.1450 0.1435 0.139 0.1325 0.1380 0.1605 0.1415 0 0    0
item2 0.1535 0.1315 0.126 0.1505 0.1535 0.1400 0.1450 0 0    0
item3 0.1320 0.1505 0.132 0.1465 0.1425 0.1535 0.1430 0 0    0
``````

If you want counts, you can multiply by the sample size:

``````psych::response.frequencies(df, max = 1000, uniqueitems = 1:9) * nrow(df)
``````

You get the following:

``````        1   2   3   4   5   6   7 8 9 miss
item1 290 287 278 265 276 321 283 0 0    0
item2 307 263 252 301 307 280 290 0 0    0
item3 264 301 264 293 285 307 286 0 0    0
``````

A few notes:

• the default `max` is 10. Thus, if you have more than 10 response options, you'll have issues. Otherwise, in your case, and many Likert item cases, you could omit the `max` argument.
• `uniqueitems` specifies the possible values. If all your values were present in at least one item, then this would be inferred from the data.
• I think the function only works with numeric data. So if you have your likert categories coded "Strongly disagree", etc. it wont work.