Meta-patterns: Revealing Hidden Periodic Patterns

ICDM(2001)

引用 27|浏览58
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摘要
Discovery of periodic patterns in time series data has become an active research area with many applications. These patterns can be hierarchical in nature, where higher level pattern may consist of repetitions of lower level patterns.Unfortunately, the presence of noise m y prevent these higher level patterns from being recognized in the sense that two portions (of data sequence) that support the same (high level) pattern may have different layouts of occurrences of basic symbols. There may not exist any common representation in terms of raw symbol combinations; and hence such (high level) pattern may not be expressed by any previous model (defined on raw symbols or symbol combinations) and would not be properly recognized by any existing method. In this paper, we propose novel model, namely meta-pattern, to capture these high level patterns. As more flexible model, the number of potential meta-patterns could be very large. A substantial difficulty lies on how to identify the proper pattern candidates. However, the well-known Apriori property is not able to provide sufficient pruning power. A new property, namely component location property, is identified and used to conduct the candidate generation so that an efficient computation-based mining algorithm can be developed. Last but not least, we apply our algorithm to some real and synthetic sequences and some interesting patterns are discovered.
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关键词
revealing hidden periodic patterns,new property,interesting pattern,component location property,higher level pattern,high level pattern,flexible model,proper pattern candidate,high level,lower level pattern,periodic pattern,symbols,data mining,fluctuations,noise,history,time series,time series data,pattern recognition,sequences,frequency,pattern matching,power generation
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