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Explain Multilevel association rules
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  • Association rules generated from mining data at multiple levels of abstraction are called multiple-level or multilevel association rules.

    • Multilevel association rules can be mined efficiently using concept hierarchies under a support-confidence framework.
    • Rules at high concept level may add to common sense while rules at low concept level may not be useful always.
  • Using uniform minimum support for all levels:

    • When a uniform minimum support threshold is used, the search procedure is simplified.
    • The method is also simple, in that users are required to specify only one minimum support threshold.
    • The same minimum support threshold is used when mining at each level of abstraction.
    • For example, in Figure, a minimum support threshold of 5% is used throughout.
    • (e.g. for mining from “computer” down to “laptop computer”).
    • Both “computer” and “laptop computer” are found to be frequent, while “desktop computer” is not.
  • Using reduced minimum support at lower levels:

    • Each level of abstraction has its own minimum support threshold.
    • The deeper the level of abstraction, the smaller the corresponding threshold is.
    • For example in Figure, the minimum support thresholds for levels 1 and 2 are 5% and 3%, respectively.
    • In this way, “computer,” “laptop computer,” and “desktop computer” are all considered frequent. Multilevel Association rule consists of alternate search strategies and Controlled level cross filtering:

    • Alternate Search Strategies:

  • Level by level independent:

    • Full breadth search.
    • No background knowledge in pruning.
    • Leads to examine lot of infrequent items.
  • Level-cross filtering by single item:

    • Examine nodes at level i only if node at level (i-1) is frequent.
    • Misses frequent items at lower level abstractions (due to reduced support).
  • Level-cross filtering by k-itemset:

    • Examine k-itemsets at level i only if k-itemsets at level (i-1) is frequent.
    • Misses frequent k-itemsets at lower level abstractions (due to reduced support).
  • Controlled Level-cross filtering by single item:

    • A modified level-cross filtering by single item.
    • Sets a level passage threshold for every level.
    • Allows the inspection of lower abstractions even if its ancestor fails to satisfy min_sup threshold.
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