This research paper is focused on the framework design of temporal data by using personalised modelling approach in order to cluster the temporal data. Real world problem on flood occurrences is used as a case study focusing only in Malaysia region. The data are designed according to the criteria needed for temporal data clustering, tested with three clustering techniques including K-means, X-means, and K-medoids. Rapid Miner is used for conducting the clustering processes. Finally, the result from each clustering method is compared to conclude and justify the best clustering approach for clustering temporal data.
CITATION STYLE
Othman, M., Mohamed, S. A., Abdullah, M. H. A., Yusof, M. M., & Mohamed, R. (2018). A framework to cluster temporal data using personalised modelling approach. In Advances in Intelligent Systems and Computing (Vol. 700, pp. 181–190). Springer Verlag. https://doi.org/10.1007/978-3-319-72550-5_18
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