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KCI 등재
Special Issue Section : A Biclustering Method for Time Series Analysis
( Jeong Hwa Lee ) , ( Chi Hyuck Jun ) , ( Young Rok Lee )
UCI I410-ECN-0102-2012-530-001619047
* 발행 기관의 요청으로 이용이 불가한 자료입니다.

Biclustering is a method of finding meaningful subsets of objects and attributes simultaneously, which may not be detected by traditional clustering methods. It is popularly used for the analysis of microarray data representing the expression levels of genes by conditions. Usually, biclustering algorithms do not consider a sequential relation between attributes. For time series data, however, bicluster solutions should keep the time sequence. This paper proposes a new biclustering algorithm for time series data by modifying the plaid model. The proposed algorithm introduces a parameter controlling an interval between two selected time points. Also, the pruning step preventing an over-fitting problem is modified so as to eliminate only starting or ending points. Results from artificial data sets show that the proposed method is more suitable for the extraction of biclusters from time series data sets. Moreover, by using the proposed method, we find some interesting observations from real-world time-course microarray data sets and apartment price data sets in metropolitan areas.

[자료제공 : 네이버학술정보]
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