Weka Support Confidence

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Association rule learning - Wikipedia

    https://en.wikipedia.org/wiki/Association_rule_learning
    Association rules are usually required to satisfy a user-specified minimum support and a user-specified minimum confidence at the same time. Association rule generation is usually split up into two separate steps: A minimum support threshold is applied to find all frequent itemsets in a database.

Association Rule Mining with WEKA

    http://facweb.cs.depaul.edu/mobasher/classes/ect584/WEKA/associate.html
    WEKA allows the resulting rules to be sorted according to different metrics such as confidence, leverage, and lift. In this example, we have selected lift as the criteria. Furthermore, we have entered 1.5 as the minimum value for lift (or improvement) is computed as the confidence of the rule divided by the support of the right-hand-side (RHS).

weka Support and confidence - Pentaho

    https://forums.pentaho.com/threads/143591-weka-Support-and-confidence
    Jun 05, 2013 · So, this means that the algorithm is invoked multiple times. The support starts at the upper bound and is iteratively reduced until the desired number of rules is found or the minimum bound on the support is reached. "minMetric" refers to the evaluation metric in use - i.e. confidence, lift etc.

What is support and confidence in data mining? - Quora

    https://www.quora.com/What-is-support-and-confidence-in-data-mining
    Let me give you an example of “frequent pattern mining” in grocery stores. Customers go to Walmart, tesco, Carrefour, you name it, and put everything they want into their baskets and at the end they check out. Let’s agree on a few terms here: * T:...

support and confidence - YouTube

    https://www.youtube.com/watch?v=iuIEVNhWtlw
    Jul 22, 2014 · Association analysis: Frequent Patterns, Support, Confidence and Association Rules - Duration: 19:31. StudyKorner 89,289 views. 19:31. Magician REVEALS trick …

data mining - Association rules - support, confidence and ...

    https://stats.stackexchange.com/questions/229523/association-rules-support-confidence-and-lift
    I am trying to mine association rules from my transaction dataset and I have questions regarding the support, confidence and lift of a rule. Assume we have rule like {X} -> {Y} I know that support is P(XY), confidence is P(XY)/P(X) and lift is P(XY)/P(X)P(Y), where the lift is a measurement of independence of X and Y (1 represents independent)

How do I know the "support" of each association rules in Weka?

    https://stackoverflow.com/questions/30722889/how-do-i-know-the-support-of-each-association-rules-in-weka
    The support for X --> Y is defined to be the fraction of transaction T that satisfy the union of items X and Y. (X U Y).count/n. APRIORI algorithm, in Weka, returns the result as a collection of rules of this kind: antecedent <support> -> Consequence <confidence>, so you already have the value of support.

Apriori - Weka

    http://weka.sourceforge.net/doc.stable/weka/associations/Apriori.html
    (default = confidence) -C <minimum metric score of a rule> The minimum confidence of a rule. (default = 0.9) -D <delta for minimum support> The delta by which the minimum support is decreased in each iteration. (default = 0.05) -U <upper bound for minimum support> Upper bound for …

Association rules - More Data Mining with Weka

    https://www.futurelearn.com/courses/more-data-mining-with-weka/0/steps/29124
    That’s it for this lesson. There are far more association rules than classification rules. We need different techniques. The “support” and “confidence” are two important measures. Apriori is the standard algorithm, and I just want to show you that algorithm over here in Weka. In …

How to find the minimum support in Apriori algorithm

    https://stackoverflow.com/questions/10364632/how-to-find-the-minimum-support-in-apriori-algorithm
    The minimum support and minimum confidence are set by the users, and are parameters of the Apriori algorithm for association rule generation. These parameters are used to exclude rules in the result that have a support or a confidence lower than the minimum support and minimum confidence respectively.



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