Is there a way to convert a
dta file to a
I do not have a version of Stata installed on my computer, so I cannot do something like:
File --> "Save as csv"
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The frankly-incredible data-analysis library for Python called
Pandas has a function to read Stata files.
Pandas you can just do:
>>> import pandas as pd >>> data = pd.io.stata.read_stata('my_stata_file.dta') >>> data.to_csv('my_stata_file.csv')
You could try doing it through R:
For Stata <= 15 you can use the haven package to read the dataset and then you simply write it to external CSV file:
library(haven) yourData = read_dta("path/to/file") write.csv(yourData, file = "yourStataFile.csv")
Alternatively, visit the link pointed by huntaub in a comment below.
For Stata <= 12 datasets foreign package can also be used
library(foreign) yourData <- read.dta("yourStataFile.dta")
You can do it in StatTransfer, R or perl (as mentioned by others), but StatTransfer costs $$$ and R/Perl have a learning curve.
There is a free, menu-driven stats program from AM Statistical Software that can open and convert Stata .dta from all versions of Stata, see:
Another way of converting between pretty much any data format using R is with the rio package.
Load the rio library, then use the
library("rio") convert("my_file.dta", "my_file.csv")
This method allows you to convert between many formats (e.g., Stata, SPSS, SAS, CSV, etc.). It uses the file extension to infer format and load using the appropriate importing package. More info can be found on the R-project rio page.
The R method will work reliably, and it requires little knowledge of R. Note that the conversion using the foreign package will preserve data, but may introduce differences. For example, when converting a table without a primary key, the primary key and associated columns will be inserted during the conversion.
From http://www.r-bloggers.com/using-r-for-stata-to-csv-conversion/ I recommend:
library(foreign) write.table(read.dta(file.choose()), file=file.choose(), quote = FALSE, sep = ",")
StatTransfer is a program that moves data easily between Stata, Excel (or csv), SAS, etc. It is very user friendly (requires no programming skills). See www.stattransfer.com
If you use the program just note that you will have to choose "ASCII/Text - Delimited" to work with .csv files rather than .xls
In Python, one can use
statsmodels.iolib.foreign.genfromdta to read Stata datasets. In addition, there is also a wrapper of the aforementioned function which can be used to read a Stata file directly from the web:
Nevertheless, both of the above rely on the use of the
pandas.io.stata.StataReader.data, which is now a legacy function and has been deprecated. As such, the new
pandas.read_stata function should now always be used instead.
According to the source file of
stata.py, as of version
0.23.0, the following are supported:
The following details come from
help dtaversion in Stata 15.1:
Stata version .dta file format ---------------------------------------- 1 102 2, 3 103 4 104 5 105 6 108 7 110 and 111 8, 9 112 and 113 10, 11 114 12 115 13 117 14 and 15 118 (# of variables <= 32,767) 15 119 (# of variables > 32,767, Stata/MP only) ---------------------------------------- file formats 103, 106, 107, 109, and 116 were never used in any official release.
Some mentioned SPSS, StatTransfer, they are not free. R and Python (also mentioned above) may be your choice. But personally, I would like to recommend Python, the syntax is much more intuitive than R. You can just use several command lines with Pandas in Python to read and export most of the commonly used data formats:
import pandas as pd
df = pd.read_stata('YourDataName.dta')
For those who have Stata (even though the asker does not) you can use this:
outsheet produces a tab-delimited file so you need to specify the
comma option like below
outsheet [varlist] using file.csv , comma
also, if you want to remove labels (which are included by default
outsheet [varlist] using file.csv, comma nolabel
hat tip to: