Tertius
Package
weka.associations
Synopsis
Finds rules according to confirmation measure (Tertius-type algorithm).
For more information see:
P. A. Flach, N. Lachiche (1999). Confirmation-Guided Discovery of first-order rules with Tertius. Machine Learning. 42:61-95.
Options
The table below describes the options available for Tertius.
Option |
Description |
---|---|
classIndex |
Index of the class attribute. If set to 0, the class will be the last attribute. |
classification |
Find only rules with the class in the head. |
confirmationThreshold |
Minimum confirmation of the rules. |
confirmationValues |
Number of best confirmation values to find. |
frequencyThreshold |
Minimum proportion of instances satisfying head and body of rules |
hornClauses |
Find rules with a single conclusion literal only. |
missingValues |
Set the way to handle missing values. Missing values can be set to match any value, or never match values or to be significant and possibly appear in rules. |
negation |
Set the type of negation allowed in the rule. Negation can be allowed in the body, in the head, in both or in none. |
noiseThreshold |
Maximum proportion of counter-instances of rules. If set to 0, only satisfied rules will be given. |
numberLiterals |
Maximum number of literals in a rule. |
repeatLiterals |
Repeated attributes allowed. |
rocAnalysis |
Return TP-rate and FP-rate for each rule found. |
valuesOutput |
Give visual feedback during the search. The current best and worst values can be output either to stdout or to a separate window. |
Capabilities
The table below describes the capabilites of Tertius.
Capability |
Supported |
---|---|
Class |
Binary class, Nominal class, Missing class values |
Attributes |
Unary attributes, Nominal attributes, Missing values, Empty nominal attributes, Binary attributes |
Min # of instances |
1 |