Multi-way set enumeration in weight tensors

被引:0
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作者
Elisabeth Georgii
Koji Tsuda
Bernhard Schölkopf
机构
[1] Max Planck Institute for Biological Cybernetics,Department of Empirical Inference
[2] Friedrich Miescher Laboratory of the Max Planck Society,Department of Information and Computer Science, Helsinki Institute for Information Technology, HIIT
[3] Aalto University School of Science and Technology,Computational Biology Research Center
[4] National Institute of Advanced Industrial Science and Technology,ERATO Minato Project
[5] AIST,Department of Empirical Inference
[6] Japan Science and Technology Agency,undefined
[7] Max Planck Institute for Biological Cybernetics,undefined
来源
Machine Learning | 2011年 / 82卷
关键词
Tensor; Multi-way set; Dense pattern enumeration; Quasi-hyper-clique; N-ary relation; Graph mining;
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学科分类号
摘要
The analysis of n-ary relations receives attention in many different fields, for instance biology, web mining, and social studies. In the basic setting, there are n sets of instances, and each observation associates n instances, one from each set. A common approach to explore these n-way data is the search for n-set patterns, the n-way equivalent of itemsets. More precisely, an n-set pattern consists of specific subsets of the n instance sets such that all possible associations between the corresponding instances are observed in the data. In contrast, traditional itemset mining approaches consider only two-way data, namely items versus transactions. The n-set patterns provide a higher-level view of the data, revealing associative relationships between groups of instances. Here, we generalize this approach in two respects. First, we tolerate missing observations to a certain degree, that means we are also interested in n-sets where most (although not all) of the possible associations have been recorded in the data. Second, we take association weights into account. In fact, we propose a method to enumerate all n-sets that satisfy a minimum threshold with respect to the average association weight. Technically, we solve the enumeration task using a reverse search strategy, which allows for effective pruning of the search space. In addition, our algorithm provides a ranking of the solutions and can consider further constraints. We show experimental results on artificial and real-world datasets from different domains.
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页码:123 / 155
页数:32
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