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Data-Peeler: Constraint-Based Closed Pattern Mining in n-ary Relations

机译:数据削皮器:基于约束的N-ARY关系闭合模式挖掘

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Set pattern discovery from binary relations has been extensively studied during the last decade. In particular, many complete and efficient algorithms which extract frequent closed sets are now available. Generalizing such a task to n-ary relations (n ≥ 2) appears as a timely challenge. It may be important for many applications, e.g., when adding the time dimension to the popular objects × features bi-nary case. The generality of the task - no assumption being made on the relation arity or on the size of its attribute domains - makes it computationally challenging. We introduce an algorithm called Data-Peeler. From a n-ary relation, it extracts all closed n-sets satisfying given piece-wise (anti)-monotonic constraints. This new class of constraints generalizes both monotonic and anti-monotonic constraints. Considering the special case of ternary relations, Data-Peeler outperforms the state-of-the-art algorithms CubeMiner and Trias by orders of magnitude. These good performances must be granted to a new clever enumeration strategy allowing an efficient closeness checking. An original application on a real-life 4-ary relation is used to assess the relevancy of closed n-sets constraint-based mining.
机译:在过去十年中,在二元关系中设置了模式发现。特别是,现在可以使用频繁关闭集的许多完整和高效的算法。将这种任务概括为N-ARY关系(N≥2)显示为及时挑战。对于许多应用来说,例如,当将时间尺寸添加到流行对象×特征双人的情况时,这可能是重要的。任务的一般性 - 没有关于ARINIT的关系或其属性域的大小 - 使其在计算上具有挑战性。我们介绍了一种称为数据削皮器的算法。从N-ARY关系中,提取满足给定的所有闭合N-Sets,令人满意的(反) - 单调约束。这类新的约束概述了单调和反单调约束。考虑到三元关系的特殊情况,数据 - 削皮器优于最先进的算法立方体和三级按数量级。必须授予这些良好的表演,以便新的聪明枚举策略,允许有效的亲密检查。在真实寿命4-ary关系上的原始应用程序用于评估闭合N-Set约束的挖掘的相关性。

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