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Mining confident rules without support requirement

机译:无需支持即可挖掘自信的规则

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An open problem is to find all rules that satisfy a minimum confidence but not necessarily a minimum support. Without the support requirement, the classic support-based pruning strategy is inapplicable. The problem demands a confidence-based pruning strategy. In particular, the following monotonicity of confidence, called the universal-existential upward closure, holds: if a rule of size k is confident (for the given minimum confidence), for every other attribute not in the rule, some specialization of size k+1 using the attribute must be confident. Like the support-based pruning, the bottleneck is at the memory that often is too small to store the candidates required for search. We implement this strategy on disk and study its performance.
机译:一个开放的问题是找到满足最低置信度但不一定达到最低支持的所有规则。如果没有支持要求,则基于支持的经典修剪策略将不适用。该问题需要基于信任的修剪策略。尤其是,以下称为 universal-existential向上闭合的置信度单调成立:如果大小 k 的规则是置信的(对于给定的最小置信度),则其他所有属性都不在规则中,使用该属性的 k + 1 大小的一些专业化必须是自信的。像基于支持的修剪一样,瓶颈处在内存上,而内存通常太小而无法存储搜索所需的候选对象。我们在磁盘上实施此策略并研究其性能。

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