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eider
is a lightweight package for processing tabular
data in a declarative fashion. Users may specify a set of operations to
be performed on a table using JSON, which are then executed by the
package. The primary use case of eider
is for extraction of
machine learning features from health data, but eider
can
in principle be used for any kind of data.
The usage of eider
in R source code itself is
straightforward, and consists of a single call to
run_pipeline()
.
To illustrate this, we will construct some very simplistic data, which may be, for example, a record of patients who attended their GP and their associated complaints.
example_table <- data.frame(
patient_id = c(1, 1, 1, 2, 2, 3, 3, 3),
attendance_reason = c(6, 6, 7, 6, 6, 7, 7, 7)
)
data_sources <- list(attendances = example_table)
In practice, it is more likely that you will be reading in data from
a file instead. For example, if you had a CSV file called
attendances.csv
in the current working directory, you could
just do:
eider
allows you to mix and match data sources, so you
could have some data in a CSV file and some in an R data frame:
data_sources_3 <- list(
attendances = example_table, # A variable which has already been constructed
other_data = "other_data.csv" # A file to be read in
)
This allows the user to, for example, perform preprocessing on a portion of their data if so needed.
Suppose we want to extract a feature corresponding to the total
number of times a patient attended for reason 6. eider
requires that the feature is specified as JSON, which looks like
this:
{
"transformation_type": "count",
"source_table": "attendances",
"grouping_column": "patient_id",
"absent_default_value": 0,
"output_feature_name": "total_attendances",
"filter": {
"column": "attendance_reason",
"type": "in",
"value": [
6
]
}
}
transformation_type
tells you what kind of overall
operation is being performed. This determines which other fields are
required in the JSON.source_table
specifies the name of the data source to
be used in the list of data sources.grouping_column
specifies the columns to group by.absent_default_value
specifies what to do if there is
no data for a particular patient ID.output_feature_name
specifies the name of the column to
be created in the output table.filter
is a filter object which is used to select rows
from the input table which match particular conditions.Subsequent vignettes will go into more detail about the different types of transformations and the required JSON fields for each of them.
To obtain the desired feature, we can place the JSON above in a file
(here json_examples/eider.json
)
and simply do:
run_pipeline(
data_sources = data_sources,
feature_filenames = "json_examples/eider.json"
)
#> $features
#> id total_attendances
#> 1 1 2
#> 2 2 2
#> 3 3 0
#>
#> $responses
#> id
#> 1 1
#> 2 2
#> 3 3
As expected, both patients 1 and 2 have attended for reason 6 twice, and patient 3 has not.
run_pipeline()
returns a list of two data frames, called
features and responses respectively. These refer to
data used for training machine learning models: features are
the independent variables (i.e. X
), and responses
are the dependent variables (i.e. y
). For consistency,
eider
always returns both of these data frames and ensures
that both of them have the same list of IDs. Responses may be specified
in exactly the same way as features, but using the
response_filenames
argument instead of
feature_filenames
.
As an alternative to placing the JSON in a file and providing the
filename to run_pipeline()
, you can also provide the JSON
directly as a string:
json_string <- '{
"transformation_type": "count",
"source_table": "attendances",
"grouping_column": "patient_id",
"absent_default_value": 0,
"output_feature_name": "total_attendances",
"filter": {
"column": "attendance_reason",
"type": "in",
"value": [6]
}
}'
run_pipeline(
data_sources = data_sources,
feature_filenames = json_string
)
#> $features
#> id total_attendances
#> 1 1 2
#> 2 2 2
#> 3 3 0
#>
#> $responses
#> id
#> 1 1
#> 2 2
#> 3 3
If you want to read a more step-by-step guide to the features of
eider
, move on to the next
vignette, which covers the different types of features that
eider
lets you define.
Alternatively, jump ahead to the gallery
section to see some examples of features that you might use
eider
to calculate.
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.
Health stats visible at Monitor.