The value selected when tuning your transform for a balance between precision and recall. A value of 0.5
means no preference; a value of 1.0 means a bias purely for precision, and a value of 0.0 means a bias for
recall. Because this is a tradeoff, choosing values close to 1.0 means very low recall, and choosing values
close to 0.0 results in very low precision.
The precision metric indicates how often your model is correct when it predicts a match.
The recall metric indicates that for an actual match, how often your model predicts the match.
Parameters:
precisionRecallTradeoff - The value selected when tuning your transform for a balance between precision and recall. A value of
0.5 means no preference; a value of 1.0 means a bias purely for precision, and a value of 0.0 means a
bias for recall. Because this is a tradeoff, choosing values close to 1.0 means very low recall, and
choosing values close to 0.0 results in very low precision.
The precision metric indicates how often your model is correct when it predicts a match.
The recall metric indicates that for an actual match, how often your model predicts the match.
Returns:
Returns a reference to this object so that method calls can be chained together.
The value that is selected when tuning your transform for a balance between accuracy and cost. A value of 0.5
means that the system balances accuracy and cost concerns. A value of 1.0 means a bias purely for accuracy,
which typically results in a higher cost, sometimes substantially higher. A value of 0.0 means a bias purely
for cost, which results in a less accurate FindMatches transform, sometimes with unacceptable
accuracy.
Accuracy measures how well the transform finds true positives and true negatives. Increasing accuracy
requires more machine resources and cost. But it also results in increased recall.
Cost measures how many compute resources, and thus money, are consumed to run the transform.
Parameters:
accuracyCostTradeoff - The value that is selected when tuning your transform for a balance between accuracy and cost. A value
of 0.5 means that the system balances accuracy and cost concerns. A value of 1.0 means a bias purely
for accuracy, which typically results in a higher cost, sometimes substantially higher. A value of 0.0
means a bias purely for cost, which results in a less accurate FindMatches transform,
sometimes with unacceptable accuracy.
Accuracy measures how well the transform finds true positives and true negatives. Increasing accuracy
requires more machine resources and cost. But it also results in increased recall.
Cost measures how many compute resources, and thus money, are consumed to run the transform.
Returns:
Returns a reference to this object so that method calls can be chained together.
The value to switch on or off to force the output to match the provided labels from users. If the value is
True, the find matches transform forces the output to match the provided labels.
The results override the normal conflation results. If the value is False, the
find matches transform does not ensure all the labels provided are respected, and the results
rely on the trained model.
Note that setting this value to true may increase the conflation execution time.
Parameters:
enforceProvidedLabels - The value to switch on or off to force the output to match the provided labels from users. If the
value is True, the find matches transform forces the output to match the
provided labels. The results override the normal conflation results. If the value is
False, the find matches transform does not ensure all the labels provided
are respected, and the results rely on the trained model.
Note that setting this value to true may increase the conflation execution time.
Returns:
Returns a reference to this object so that method calls can be chained together.