The minimum description length principle for pattern mining: a survey

被引:0
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作者
Esther Galbrun
机构
[1] University of Eastern Finland,School of Computing
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关键词
Data mining; Pattern mining; Frequent itemset mining; Minimum description length principle; Information theory;
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摘要
Mining patterns is a core task in data analysis and, beyond issues of efficient enumeration, the selection of patterns constitutes a major challenge. The Minimum Description Length (MDL) principle, a model selection method grounded in information theory, has been applied to pattern mining with the aim to obtain compact high-quality sets of patterns. After giving an outline of relevant concepts from information theory and coding, we review MDL-based methods for mining different kinds of patterns from various types of data. Finally, we open a discussion on some issues regarding these methods.
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页码:1679 / 1727
页数:48
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