📄 aprioriitemset.java
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premise.m_items[i] = -1;
consequence.m_items[i] = -1;
}
premise.m_counter = ((Integer)hashtableForPremise.get(premise)).intValue();
consequenceUnconditionedCounter =
((Integer)hashtableForConsequence.get(consequence)).intValue();
if (metricType == 0) {
contingencyTable[0][0] = (double)(consequence.m_counter);
contingencyTable[0][1] = (double)(premise.m_counter - consequence.m_counter);
contingencyTable[1][0] = (double)(consequenceUnconditionedCounter -
consequence.m_counter);
contingencyTable[1][1] = (double)(numTransactions - premise.m_counter -
consequenceUnconditionedCounter +
consequence.m_counter);
chiSquared = ContingencyTables.chiSquared(contingencyTable, false);
metric = confidenceForRule(premise, consequence);
if ((!(metric < minMetric)) &&
(!(chiSquared > significanceLevel))) {
premises.addElement(premise);
consequences.addElement(consequence);
conf.addElement(new Double(metric));
lift.addElement(new Double(liftForRule(premise, consequence,
consequenceUnconditionedCounter)));
lev.addElement(new Double(leverageForRule(premise, consequence,
premise.m_counter,
consequenceUnconditionedCounter)));
conv.addElement(new Double(convictionForRule(premise, consequence,
premise.m_counter,
consequenceUnconditionedCounter)));
}
} else {
double tempConf = confidenceForRule(premise, consequence);
double tempLift = liftForRule(premise, consequence,
consequenceUnconditionedCounter);
double tempLev = leverageForRule(premise, consequence,
premise.m_counter,
consequenceUnconditionedCounter);
double tempConv = convictionForRule(premise, consequence,
premise.m_counter,
consequenceUnconditionedCounter);
switch(metricType) {
case 1:
metric = tempLift;
break;
case 2:
metric = tempLev;
break;
case 3:
metric = tempConv;
break;
default:
throw new Exception("ItemSet: Unknown metric type!");
}
if (!(metric < minMetric)) {
premises.addElement(premise);
consequences.addElement(consequence);
conf.addElement(new Double(tempConf));
lift.addElement(new Double(tempLift));
lev.addElement(new Double(tempLev));
conv.addElement(new Double(tempConv));
}
}
}
}
rules[0] = premises;
rules[1] = consequences;
rules[2] = conf;
rules[3] = lift;
rules[4] = lev;
rules[5] = conv;
return rules;
}
/**
* Subtracts an item set from another one.
*
* @param toSubtract the item set to be subtracted from this one.
* @return an item set that only contains items form this item sets that
* are not contained by toSubtract
*/
public final AprioriItemSet subtract(AprioriItemSet toSubtract) {
AprioriItemSet result = new AprioriItemSet(m_totalTransactions);
result.m_items = new int[m_items.length];
for (int i = 0; i < m_items.length; i++)
if (toSubtract.m_items[i] == -1)
result.m_items[i] = m_items[i];
else
result.m_items[i] = -1;
result.m_counter = 0;
return result;
}
/**
* Generates rules with more than one item in the consequence.
*
* @param rules all the rules having (k-1)-item sets as consequences
* @param numItemsInSet the size of the item set for which the rules
* are to be generated
* @param numItemsInConsequence the value of (k-1)
* @param minConfidence the minimum confidence a rule has to have
* @param hashtables the hashtables containing all(!) previously generated
* item sets
* @return all the rules having (k)-item sets as consequences
*/
private final FastVector[] moreComplexRules(FastVector[] rules,
int numItemsInSet,
int numItemsInConsequence,
double minConfidence,
FastVector hashtables) {
AprioriItemSet newPremise;
FastVector[] result, moreResults;
FastVector newConsequences, newPremises = new FastVector(),
newConf = new FastVector();
Hashtable hashtable;
if (numItemsInSet > numItemsInConsequence + 1) {
hashtable =
(Hashtable)hashtables.elementAt(numItemsInSet - numItemsInConsequence - 2);
newConsequences = mergeAllItemSets(rules[1],
numItemsInConsequence - 1,
m_totalTransactions);
Enumeration enu = newConsequences.elements();
while (enu.hasMoreElements()) {
AprioriItemSet current = (AprioriItemSet)enu.nextElement();
current.m_counter = m_counter;
newPremise = subtract(current);
newPremise.m_counter = ((Integer)hashtable.get(newPremise)).intValue();
newPremises.addElement(newPremise);
newConf.addElement(new Double(confidenceForRule(newPremise, current)));
}
result = new FastVector[3];
result[0] = newPremises;
result[1] = newConsequences;
result[2] = newConf;
pruneRules(result, minConfidence);
moreResults = moreComplexRules(result,numItemsInSet,numItemsInConsequence+1,
minConfidence, hashtables);
if (moreResults != null)
for (int i = 0; i < moreResults[0].size(); i++) {
result[0].addElement(moreResults[0].elementAt(i));
result[1].addElement(moreResults[1].elementAt(i));
result[2].addElement(moreResults[2].elementAt(i));
}
return result;
} else
return null;
}
/**
* Returns the contents of an item set as a string.
*
* @param instances contains the relevant header information
* @return string describing the item set
*/
public final String toString(Instances instances) {
return super.toString(instances);
}
/**
* Converts the header info of the given set of instances into a set
* of item sets (singletons). The ordering of values in the header file
* determines the lexicographic order.
*
* @param instances the set of instances whose header info is to be used
* @return a set of item sets, each containing a single item
* @exception Exception if singletons can't be generated successfully
*/
public static FastVector singletons(Instances instances) throws Exception {
FastVector setOfItemSets = new FastVector();
ItemSet current;
for (int i = 0; i < instances.numAttributes(); i++) {
if (instances.attribute(i).isNumeric())
throw new Exception("Can't handle numeric attributes!");
for (int j = 0; j < instances.attribute(i).numValues(); j++) {
current = new AprioriItemSet(instances.numInstances());
current.m_items = new int[instances.numAttributes()];
for (int k = 0; k < instances.numAttributes(); k++)
current.m_items[k] = -1;
current.m_items[i] = j;
setOfItemSets.addElement(current);
}
}
return setOfItemSets;
}
/**
* Merges all item sets in the set of (k-1)-item sets
* to create the (k)-item sets and updates the counters.
*
* @param itemSets the set of (k-1)-item sets
* @param size the value of (k-1)
* @return the generated (k)-item sets
*/
public static FastVector mergeAllItemSets(FastVector itemSets, int size,
int totalTrans) {
FastVector newVector = new FastVector();
ItemSet result;
int numFound, k;
for (int i = 0; i < itemSets.size(); i++) {
ItemSet first = (ItemSet)itemSets.elementAt(i);
out:
for (int j = i+1; j < itemSets.size(); j++) {
ItemSet second = (ItemSet)itemSets.elementAt(j);
result = new AprioriItemSet(totalTrans);
result.m_items = new int[first.m_items.length];
// Find and copy common prefix of size 'size'
numFound = 0;
k = 0;
while (numFound < size) {
if (first.m_items[k] == second.m_items[k]) {
if (first.m_items[k] != -1)
numFound++;
result.m_items[k] = first.m_items[k];
} else
break out;
k++;
}
// Check difference
while (k < first.m_items.length) {
if ((first.m_items[k] != -1) && (second.m_items[k] != -1))
break;
else {
if (first.m_items[k] != -1)
result.m_items[k] = first.m_items[k];
else
result.m_items[k] = second.m_items[k];
}
k++;
}
if (k == first.m_items.length) {
result.m_counter = 0;
newVector.addElement(result);
}
}
}
return newVector;
}
}
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