Incremental Aggregation on MOLAP Cube Based on n-Dimensional Extendible Karnaugh Arrays

  • Rabbi J
  • Awal M
  • Hasan K
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Abstract

-Data is increasing so rapidly that new data warehousing approaches are required to process and analyze data. Aggregation of data incrementally is needed to fast access of data and compute aggregation functions. Multidimensional arrays are generally used for this purpose. But some disadvantages such as address space requirement is large and processing time is comparatively slow in case of aggregation. For this purpose we use Extendible Karnaugh Array (EKA). EKA is an efficient scheme which has better performance than other data structures that we have tested in our research. In this research work we use EKA as basic structure for implementing incremental aggregation of data and evaluate its performance over other approaches. We use Multidimensional Online Analytical Processing (MOLAP) which stores data in optimized multi-dimensional array storage, rather than in a relational database. We create 4 and 6 dimensional MOLAP data cube using Traditional Multidimensional Array (TMA) and EKA scheme and compare incremental aggregation with Relational Online Analytical Processing (ROLAP). The effective outcome of EKA structure for incremental aggregation on 4 and 6 dimensional MOLAP structure is shown by some experimental results and efficiency is proved for n higher dimensions.

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APA

Rabbi, J., Awal, M. A., & Hasan, K. M. A. (2017). Incremental Aggregation on MOLAP Cube Based on n-Dimensional Extendible Karnaugh Arrays. IJCSN International Journal of Computer Science and Network, 6(25), 58–64.

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