Title :
New Algorithm for Computing Cube on Very Large Compressed Data Sets
Author :
Wu, Weili ; Gao, Hong ; Li, Jianzhong
Author_Institution :
Dept. of Comput. Sci. Eng., Texas Univ., Richardson, TX
Abstract :
Data compression is an effective technique to improve the performance of data warehouses. Since cube operation represents the core of online analytical processing in data warehouses, it is a major challenge to develop efficient algorithms for computing cube on compressed data warehouses. To our knowledge, very few cube computation techniques have been proposed for compressed data warehouses to date in the literature. This paper presents a novel algorithm to compute cubes on compressed data warehouses. The algorithm operates directly on compressed data sets without the need of first decompressing them. The algorithm is applicable to a large class of mapping complete data compression methods. The complexity of the algorithm is analyzed in detail. The analytical and experimental results show that the algorithm is more efficient than all other existing cube algorithms. In addition, a heuristic algorithm to generate an optimal plan for computing cube is also proposed
Keywords :
computational complexity; data compression; data mining; data warehouses; algorithm complexity; compressed data warehouses; cube computation techniques; data compression; heuristic algorithm; online analytical processing; very large compressed data sets; Algorithm design and analysis; Computer applications; Costs; Data analysis; Data compression; Data warehouses; Databases; Decision making; Heuristic algorithms; Multidimensional systems; Data warehouses; OLAP.; cube operation; data compression;
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
DOI :
10.1109/TKDE.2006.195