PRC
Returns a table that displays the points on a receiver precision recall (PR) curve.
Syntax
PRC ( targets, probabilities
[ USING PARAMETERS
[num_bins = num-bins]
[, f1_score = return-score ]
[, main_class = class-name ] )
OVER()
Arguments
targets
- An input column that contains the true values of the response variable, one of the following data types: INTEGER, BOOLEAN, or CHAR/VARCHAR. Depending on the column data type, the function processes column data as follows:
-
INTEGER: Uses the input column as containing the true value of the response variable.
-
BOOLEAN: Resolves Yes to 1, 0 to No.
-
CHAR/VARCHAR: Resolves the value specified by parameter
main_class
to 1, all other values to 0.
Note
If the input column is of data type INTEGER or BOOLEAN, the function ignores parametermain_class
. -
probabilities
- A FLOAT input column that contains the predicted probability of response being the main class, set to 1 if
targets
is of type INTEGER.
Parameters
num_bins
An integer value that determines the number of decision boundaries. Decision boundaries are set at equally spaced intervals between 0 and 1, inclusive. The function computes the table at each
num-bin
+ 1 point.Default: 100
f1_score
- A Boolean that specifies whether to return a column that contains the f1 score—the harmonic average of the precision and recall measures, where an F1 score reaches its best value at 1 (perfect precision and recall) and worst at 0.
Default: false
main_class
Used only if
targets
is of type CHAR/VARCHAR, specifies the class to associate with theprobabilities
argument.
Examples
Execute the PRC function on an input table named mtcars
. The response variables appear in the column obs
, while the prediction variables appear in column pred
.
=> SELECT PRC(obs::int, prob::float USING PARAMETERS num_bins=2, f1_score=true) OVER()
FROM (SELECT am AS obs,
PREDICT_LOGISTIC_REG (mpg, cyl, disp, drat, wt, qsec, vs, gear, carb
USING PARAMETERS model_name='myLogisticRegModel',
type='probability') AS prob
FROM mtcars) AS prediction_output;
decision_boundary | recall | precision | f1_score | comment
------------------+--------+-----------+-------------------+--------------------------------------------
0 | 1 | 0.40625 | 0.577777777777778 |
0.5 | 1 | 1 | 1 | Of 32 rows, 32 were used and 0 were ignored
(2 rows)
The first column, decision_boundary
, indicates the cut-off point for whether to classify a response as 0 or 1. For example, in each row, if the probability is equal to or greater than decision_boundary
, the response is classified as 1. If the probability is less than decision_boundary
, the response is classified as 0.