Title :
Prediction of Frequent Items to One Dimensional Stream Data
Author :
Duck Jin Chai ; Buhyun Hwang ; Eun Hee Kim ; Long Jin ; Keun Ho Ryu
Author_Institution :
CBNUBK21 Chungbuk Inf. Technol. Center, Chungbuk
Abstract :
Data mining in the stream data handles quality and data analysis using extremely large and infinite amount of data and disk or memory with limited volume. In such traditional transaction environment it is impossible to perform frequent items mining because it requires analyzing which item is a frequent one to continuously incoming stream data and which is probable to become a frequent item. This paper proposes a way to predict frequent items using regression model to the continuously incoming one dimensional stream data like the time series data. By establishing the regression model from the stream data, it may be used as a prediction model to uncertain items. The proposing way will exhibit its effectiveness through experiment in stream data.
Keywords :
data analysis; data mining; regression analysis; data analysis; data mining; one dimensional stream data; regression model; time series data; Computer science; Data analysis; Data mining; Economic forecasting; Information technology; Linear regression; Predictive models; Regression analysis; Sensor phenomena and characterization; Space technology;
Conference_Titel :
Computational Science and its Applications, 2007. ICCSA 2007. International Conference on
Conference_Location :
Kuala Lampur
Print_ISBN :
978-0-7695-2945-5
DOI :
10.1109/ICCSA.2007.61