An algorithm for optimal partitioning of data on an interval 论文
2005IEEE Signal Processing Letters引用 336
Time Series Analysis and ForecastingAdvanced Clustering Algorithms ResearchBayesian Methods and Mixture Models
详细信息
- 发表期刊/会议
- IEEE Signal Processing Letters
- 发表日期
- 2005-01-17
- 发表年份
- 2005
关键词
Time Series Analysis and ForecastingAdvanced Clustering Algorithms ResearchBayesian Methods and Mixture Models
摘要
Many signal processing problems can be solved by maximizing the fitness of a segmented model over all possible partitions of the data interval. This letter describes a simple but powerful algorithm that searches the exponentially large space of partitions of N data points in time O(N/sup 2/). The algorithm is guaranteed to find the exact global optimum, automatically determines the model order (the number of segments), has a convenient real-time mode, can be extended to higher dimensional data spaces, and solves a surprising variety of problems in signal detection and characterization, density estimation, cluster analysis, and classification.
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