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Basic restatis Workflow

library(restatis)

Introduction

This vignette describes the basic workflow for finding, exploring, and retrieving data from the GENESIS, Zensus 2022 or regionalstatistik.de API using restatis.

For more details on additional parameters that can be used to specify the API call, see vignette("additional_parameter").

For the scenario in this vignette, we are going to be a researcher trying to find data on the income of bus drivers, called “Busfahrer” in German. The following example focuses on the GENESIS database, however, it works practically identical for regionalstatistik.de. For the Zensus 2022 database, the functions also work almost similarly to GENESIS and regionalstatistik.de, but have a few quirks (such as that there are no cubes for Zensus 2022 or that you can also authenticate using an API token).

Premilinary: finding relevant search terms

First, we can and should explore if and how our keyword is represented in the GENESIS database. We want to see if our keywords are related in any way to other words, and we need to be more precise in our search process; or in case we already have a particular keyword, if there are related keywords that could be included in our search to expand our data collection.

To be as broad as possible, we want to search for any term in the database that contains our keyword. To do this, we can use a “*” wildcard at the beginning and end of the search term:

restatis::gen_alternative_terms(term = "*busfahrer*", database = "genesis")

Based on the results, our original keyword “busfahrer” is already specific enough, and no additional specifications are necessary.

Had we started with the keyword “bus” - the vehicle itself - we can see that the database has several related terms that might be helpful to narrow our search radius further. In this example, it might be helpful to see that there are at least three different types of buses that are searchable: “fernbus”, “schienenbus” and “kraftomnibusse”.

gen_alternative_terms(term = "*bus*", database = "genesis")

Search for data objects

Now that we have our specific keyword for our search, we can search the database for exactly that term. We want the results to be ordered so that items with a title that includes our search term are at the top. We also want to explore all object types for now:

search_results <- gen_find(term = "busfahrer",
                           detailed = FALSE,
                           ordering = TRUE,
                           category = "all",
                           database = "genesis")
                           
search_results

We can see that we find results for our keyword “busfahrer” in each category of objects (statistics, tables, variables, and cubes). Based on the promising content description of the first cube object, our next step will be to check what it contains before requesting the data.

As a side note, most of the functions in this package will return objects with additional attributes that represent the parameters and additional information of your API query. So check the attributes if you ever need help recognising how you got the output.

Checking object metadata

To check whether data objects are relevant to your interest, you should obtain the metadata for these objects before requesting the data itself. The metadata for each type of object stores different key characteristics that will help you understand what the object is about.

For our question about the income of bus drivers, we want to check the metadata of the first cube object we got from the find function:

gen_metadata(code = search_results$Cubes$Code[1],
             category = search_results$Cubes$Object_Type[1],
             database = "genesis")

Retrieving data

We are now pretty sure that this cube object will help us find information about our research question. The next step is to get the data from the API.

Based on the fact that we want a cube object, we now use the gen_cube() function. For other object types, use the corresponding functions (e.g., gen_table() for tables).

Important note: It is not possible to get a whole statistic object, but it is possible to collect the different related cube objects independently and then try to recombine them.

gen_cube(search_results$Cubes$Code[1], database = "genesis")

Appendix: check for changes in previously collected data

As a small additional step, we would like to check one week later if the collected data objects have been updated in the last week. We can also check if additional interesting data objects for our interest/keyword have been added to the database. To do this, we need to specify the code of the objects we are looking for and the time we want to look for updates.

If we only want to check if something related has been updated, we only need to use the first part of the code until we are sure that it only covers the topic we are interested in. For example, use “62361*” if you want to check if some updated objects have been published for the specific statistic “Verdiensterhebung”.

For convenience, the functions have already implemented the most common date specifications, such as “week_before”, “month_before”, or “year_before”. If you prefer a fixed date, you can enter it as a string in the format “DD.MM.YYYY”.

For example, we might want to check to see if something new has been published about our collected cube object. So we use only the first part of the code “62361*“:

gen_modified_data(code = "62361", date = "week_before")

These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.