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I am working on an assignment where one of my columns contains measurements in feet, cm, and m, and I am trying to convert them all to metres. So far I have been able to convert individual cells to simple numeric values (e.g. 5_ft_7 to 5.7), but I cannot find a function that will convert them to metres, especially without modifying the values that are already in centimetres/metres.

My question is, is there a way of targeting JUST the cells that contain 'ft' without specifying each of them individually?

Dataset (hopefully this helps):

> Data_original3$Height
  [1] "5.7"    "157_cm" "5.11"   "167_cm" "1.65_m" "187_cm" "1.71_m" "188_cm" "5.2"   
 [10] "5.5"    "5.7"    "155_cm" "5.4"    "163_cm" "6.4"    "170_cm" "5.7"    "5.8"   
 [19] "186_cm" "5.1"    "5.3"    "5.3"    "5.7"    "5.8"    "6.2"    "175_cm" "5.6"   
 [28] "5.7"    "180_cm" "5.6"    "160_cm" "163_cm" "5.6"    "163_cm" "5.7"    "175_cm"
 [37] "165_cm" "5.7"    "5.6"    "5.11"   "188_cm" "5.6"    "5.3"    "5.5"    "5.4"   
 [46] "5.6"    "180_cm" "5.9"    "165_cm" "5.6"    "180_cm" "165_cm" "175_cm" "5.4"   
 [55] "167_cm" "175_cm" "5.7"    "5.11"   "5.11"   "5.5"    "6.1"    "1.68_m" "5.4"   
 [64] "5.7"    "5.3"    "5.5"    "5.9"    "5.9"    "5.4"    "5.6"    "5.8"    "5.5"   
 [73] "5.9"    "6.3"    "6.1"    "5.8"    "5.2"    "5.2"    "6.0"    "166_cm" "5.3"   
 [82] NA       "166_cm" "1.88_m" "5.6"    "5.10"   "171_cm" "5.1"    "170_cm" "178_cm"
 [91] "5.2"    "185_cm" "5.11"   "5.9"    "5.11"   "5.7"    "6.0"    "6.1"    "176_cm"
[100] "5.7"    "189_cm" "5.3"    "5.7"    "164_cm" "5.6"    "5.8"    NA       NA      
[109] "175_cm" "157_cm" "5.10"   "172_cm" "170_cm" "5.7"    "5.8"    "5.6"    "169_cm"
[118] "6.2"    "6.4"    "1.71_m" "5.10"   "1.67_m" "5.2"    "160_cm" "5.8"    "6.2"   
[127] "5.5"    "180_cm" "175_cm" "5.0"    "195_cm" "5.5"    "6.0"    "175_cm"

Thank you

2
  • 1
    Probably something like grepl("ft", vals) - this returns a logical vector - but a slightly more complete description would be useful.
    – Ben Bolker
    Oct 13 at 21:27
  • It's easier to help you if you include a simple reproducible example: <stackoverflow.com/questions/5963269/…> with sample input and desired output that can be used to test and verify possible solutions.
    – TarJae
    Oct 13 at 21:30
0

You can just select the rows that contain ft or in the Data_Original$Height data you showed, select the rows where there is no _ and change only these rows.

Data_Original$Height[grepl(pattern = "_", Data_Original$Height) == F] <- round(as.numeric(Data_Original$Height[grepl(pattern = "_", Data_Original$Height) == F])*0.3048, 2)

And if you want to use the data with the 'ft' still labelled

Data_Original$Height[grepl(pattern = "ft", Data_Original$Height)] <- round(as.numeric(gsub("[^0-9.]", "", Data_Original$Height[grepl(pattern = "ft", Data_Original$Height)]))*0.3048, 2)
0

Here is the tidyverse way:

Data_original3 %>%
  separate(Height, c('feet', 'inches'), "_ft_", convert = TRUE, remove = FALSE) %>%
  mutate(Height = if_else(grepl("ft", Height), paste0(round((12*as.numeric(feet) + inches)*2.54/100, digits = 2), "_m"), paste0(Height))) %>%
  select(Height)

Using separate, I split feet and inches into two columns, then perform the conversion calculation back into the original "Height" column.

Note: This only works if your still splitting by "_ft_" instead of "."

0

Try this, where my vec is your $Height column:

U <- gsub("[0-9._]", "", vec)
head(U)
# [1] ""   "cm" ""   "cm" "m"  "cm"
U[!nzchar(U)] <- "ft"
U
#   [1] "ft" "cm" "ft" "cm" "m"  "cm" "m"  "cm" "ft" "ft" "ft" "cm" "ft" "cm" "ft" "cm" "ft" "ft" "cm" "ft" "ft" "ft" "ft"
#  [24] "ft" "ft" "cm" "ft" "ft" "cm" "ft" "cm" "cm" "ft" "cm" "ft" "cm" "cm" "ft" "ft" "ft" "cm" "ft" "ft" "ft" "ft" "ft"
#  [47] "cm" "ft" "cm" "ft" "cm" "cm" "cm" "ft" "cm" "cm" "ft" "ft" "ft" "ft" "ft" "m"  "ft" "ft" "ft" "ft" "ft" "ft" "ft"
#  [70] "ft" "ft" "ft" "ft" "ft" "ft" "ft" "ft" "ft" "ft" "cm" "ft" NA   "cm" "m"  "ft" "ft" "cm" "ft" "cm" "cm" "ft" "cm"
#  [93] "ft" "ft" "ft" "ft" "ft" "ft" "cm" "ft" "cm" "ft" "ft" "cm" "ft" "ft" NA   NA   "cm" "cm" "ft" "cm" "cm" "ft" "ft"
# [116] "ft" "cm" "ft" "ft" "m"  "ft" "m"  "ft" "cm" "ft" "ft" "ft" "cm" "cm" "ft" "cm" "ft" "ft" "cm"

You could also convert the NA values to "ft" if you wanted with U[is.na(U)] <- "ft", but I think that's unnecessary: it's NA because there is no number associated with those positions, so setting the units for a missing number seems pointless.

The conversion of the numbers and Units now can be done with switch:

unname(as.numeric(gsub("[^0-9.]", "", vec)) *
  sapply(U, switch, m = 1, cm = 1/100, 0.3048))
#   [1] 1.737 1.570 1.558 1.670 1.650 1.870 1.710 1.880 1.585 1.676 1.737 1.550 1.646 1.630 1.951 1.700 1.737 1.768 1.860
#  [20] 1.554 1.615 1.615 1.737 1.768 1.890 1.750 1.707 1.737 1.800 1.707 1.600 1.630 1.707 1.630 1.737 1.750 1.650 1.737
#  [39] 1.707 1.558 1.880 1.707 1.615 1.676 1.646 1.707 1.800 1.798 1.650 1.707 1.800 1.650 1.750 1.646 1.670 1.750 1.737
#  [58] 1.558 1.558 1.676 1.859 1.680 1.646 1.737 1.615 1.676 1.798 1.798 1.646 1.707 1.768 1.676 1.798 1.920 1.859 1.768
#  [77] 1.585 1.585 1.829 1.660 1.615    NA 1.660 1.880 1.707 1.554 1.710 1.554 1.700 1.780 1.585 1.850 1.558 1.798 1.558
#  [96] 1.737 1.829 1.859 1.760 1.737 1.890 1.615 1.737 1.640 1.707 1.768    NA    NA 1.750 1.570 1.554 1.720 1.700 1.737
# [115] 1.768 1.707 1.690 1.890 1.951 1.710 1.554 1.670 1.585 1.600 1.768 1.890 1.676 1.800 1.750 1.524 1.950 1.676 1.829
# [134] 1.750

Walk-through:

  • as.numeric(gsub("[^0-9.]", "", vec)) extracts just the number components
  • U is the units extracted from each, where empty strings "" means there was no unit applied.
  • switch(U[1], m = 1, cm = 1/100, 1) would check the first U unit and return a conversion into meters; the trailing unnamed 1 is the default assigned if U[1] is not one of the known strings "cm" and "m", which we'll use as 1 (feet).
  • because switch is not vectorized, I use sapply(U, switch, ...) to vectorize its effect, and it returns a vector of multipliers to apply to the numbers extracted with as.numeric(.)

Data

vec <- c("5.7", "157_cm", "5.11", "167_cm", "1.65_m", "187_cm", "1.71_m", "188_cm", "5.2", "5.5", "5.7", "155_cm", "5.4", "163_cm", "6.4", "170_cm", "5.7", "5.8", "186_cm", "5.1", "5.3", "5.3", "5.7", "5.8", "6.2", "175_cm", "5.6", "5.7", "180_cm", "5.6", "160_cm", "163_cm", "5.6", "163_cm", "5.7", "175_cm", "165_cm", "5.7", "5.6", "5.11", "188_cm", "5.6", "5.3", "5.5", "5.4", "5.6", "180_cm", "5.9", "165_cm", "5.6", "180_cm", "165_cm", "175_cm", "5.4", "167_cm", "175_cm", "5.7", "5.11", "5.11", "5.5", "6.1", "1.68_m", "5.4", "5.7", "5.3", "5.5", "5.9", "5.9", "5.4", "5.6", "5.8", "5.5", "5.9", "6.3", "6.1", "5.8", "5.2", "5.2", "6.0", "166_cm", "5.3", NA, "166_cm", "1.88_m", "5.6", "5.10", "171_cm", "5.1", "170_cm", "178_cm", "5.2", "185_cm", "5.11", "5.9", "5.11", "5.7", "6.0", "6.1", "176_cm", "5.7", "189_cm", "5.3", "5.7", "164_cm", "5.6", "5.8", NA, NA, "175_cm", "157_cm", "5.10", "172_cm", "170_cm", "5.7", "5.8", "5.6", "169_cm", "6.2", "6.4", "1.71_m", "5.10", "1.67_m", "5.2", "160_cm", "5.8", "6.2", "5.5", "180_cm", "175_cm", "5.0", "195_cm", "5.5", "6.0", "175_cm")
1
  • I fixed an omission, the calcs should be right. Namely, the first is "5.7", which is 5.7 feet, which is around 1.737 meters. I'm confused, though: you said you want to convert the numbers to meters, but your output here in the comment is merely units. I've added an augmented Units variable, but it doesn't change the process.
    – r2evans
    Oct 14 at 12:25

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