Oracle® Database SQL Reference 10g Release 2 (10.2) Part Number B14200-02 |
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This function is for use with classification models created using the DBMS_DATA_MINING
package or with the Oracle Data Mining Java API. It is not valid with other types of models. It returns a varray of objects containing all classes in a multiclass classification scenario. The object fields are named PREDICTION
, PROBABILITY
, and COST
. The datatype of the PREDICTION
field depends on the target value type used during the build of the model. The other two fields are both Oracle NUMBER
. The elements are returned in the order of best prediction to worst prediction.
For bestN
, specify a positive integer to restrict the returned target classes to the N
having the highest probability. If multiple classes are tied in the Nth value, the database still returns only N
values. If you want to filter only by cutoff
, specify NULL
for this parameter.
For cutoff
, specify a NUMBER
value to restrict the returned target classes to those with a cost less than or equal to the specified cost value. You can filter solely by cutoff
by specifying NULL
for bestN
.
When you specify values for both bestN
and cutoff
, you restrict the returned predictions to only those that are the bestN
and have a probability (or cost when COST
MODEL
is specified) surpassing the threshold.
Specify COST
MODEL
to indicate that the scoring should be performed by taking into account the cost matrix that was associated with the model at build time. If no such cost matrix exists, then the database returns an error.
When you specify COST
MODEL
, both bestN
and cutoff
are treated with respect to the prediction cost, not the prediction probability. That is, bestN
restricts the result to the target classes having the N best (lowest) costs, and cutoff
restricts the target classes to those with a cost less than or equal to the specified cutoff.
When you specify this clause, each object in the collection is a triplet of scalar values containing the prediction value (the datatype of which depends on the target value type used during model build), the prediction probability, and the prediction cost (both Oracle NUMBER
).
If you omit COST
MODEL
, each object in the varray is a pair of scalars containing the prediction value and prediction probability. The datatypes returned are as described in the preceding paragraph.
The mining_attribute_clause
behaves as described for the PREDICTION
function. Please refer to mining_attribute_clause.
See Also:
Oracle Data Mining Concepts for detailed information on Oracle Data Mining features
Oracle Data Mining Administrator's Guide for information on the demo programs available in the code
Oracle Data Mining Application Developer's Guide for information on writing Oracle Data Mining applications
The following example lists, for ten customers, the likelihood and cost of using or rejecting an affinity card. This example has a binary target, but such a query is also useful in multiclass classification such as Low, Med, and High.
This example and the prerequisite data mining operations can be found in the demo file $ORACLE_HOME/rdbms/demo/dmdtdemo.sql
. General information on data mining demo files is available in Oracle Data Mining Administrator's Guide. The example is presented here to illustrate the syntactic use of the function.
SELECT T.cust_id, S.prediction, S.probability, S.cost FROM (SELECT cust_id, PREDICTION_SET(dt_sh_clas_sample COST MODEL USING *) pset FROM mining_data_apply_v WHERE cust_id < 100011) T, TABLE(T.pset) S ORDER BY cust_id, S.prediction; CUST_ID PREDICTION PROBABILITY COST ---------- ---------- ----------- ----- 100001 0 .96682 .27 100001 1 .03318 .97 100002 0 .74038 2.08 100002 1 .25962 .74 100003 0 .90909 .73 100003 1 .09091 .91 100004 0 .90909 .73 100004 1 .09091 .91 100005 0 .27236 5.82 100005 1 .72764 .27 100006 0 1.00000 .00 100006 1 .00000 1.00 100007 0 .90909 .73 100007 1 .09091 .91 100008 0 .90909 .73 100008 1 .09091 .91 100009 0 .27236 5.82 100009 1 .72764 .27 100010 0 .80808 1.54 100010 1 .19192 .81 20 rows selected.