The ASparameter
class holds the mining parameters (e.g., minimum
support) for the used mining algorithms. APparameter
and
ECparameter
directly extend ASparameter
with additional slots
for parameters only suitable for the Apriori (APparameter
) or the
Eclat algorithms (ECparameter
).
A suitable default parameter object will be automatically created by
the apriori
or the eclat
function. By
specifying a named list (names equal to slots) as parameter
argument for the apriori
or the eclat
function, default values can be replaced by the values in the list.
Objects can be created by calls of the form new("APparameter",
...)
or new("ECparameter", ...)
.
Common slots defined in ASparameter
:
support
:a numeric value for the minimal support of an item set (default: \(0.1\))
minlen
:an integer value for the minimal number of items per item set (default: 1 item)
maxlen
:an integer value for the maximal number of items per item set (default: 10 items)
target
:a character string indicating the type of association mined. One of
"frequent itemsets"
"maximally frequent itemsets"
"closed frequent itemsets"
"rules"
(only available for Apriori;
use ruleInduction
for eclat
.)
"hyperedgesets"
(only available for Apriori;
see references for the definition of association hyperedgesets)
ext
:a logical indicating whether to
produce extended information on quality measures (e.g.,
lhs.support) (default: FALSE
)
Additional slots for Apriori in APparameter
:
confidence
:a numeric value for the
minimal confidence of rules/association hyperedges (default:
\(0.8\)). For frequent itemsets it is set to NA
.
smax
:a numeric value for the maximal support of itemsets/rules/hyperedgesets (default: 1)
arem
:a character string indicating the used
additional rule evaluation measure (default: "none"
) given
by one of
"none"
:no additional evaluation measure
"diff"
:absolute confidence difference
"quot"
:difference of confidence quotient to 1
"aimp"
:absolute difference of improvement to 1
"info"
:information difference to prior
"chi2"
:normalized \(\chi^2\) measure
aval
:a logical indicating whether to
return the additional rule evaluation measure selected with
arem
.
minval
:a numeric value for the
minimal value of additional evaluation measure selected with
arem
(default: \(0.1\))
originalSupport
:a logical indicating whether to
use for minimum support the original definition of the support of
a rule (lhs and rhs) instead of lhs support. Make sure to use
ext = TRUE
if originalSupport
is set to FALSE
(default: TRUE
)
maxtime
:Time limit in seconds for checking subsets.
maxtime=0
disables the time limit.
(default: 5 seconds)
Additional slots for Eclat in ECparameter
:
tidLists
:a logical indicating whether to
return also a list of supporting transactions (transaction IDs)
(default: FALSE
)
signature(from = "NULL", to = "APparameter")
signature(from = "list", to = "APparameter")
signature(from = "NULL", to = "ECparameter")
signature(from = "list", to = "ECparameter")
signature(object = "ASparameter")
Christian Borgelt (2004) Apriori --- Finding Association Rules/Hyperedges with the Apriori Algorithm. http://www.borgelt.net/apriori.html
apriori
,
eclat
,
weclat
(for weighted rule mining),
ruleInduction