Title of article :
Indexing high-dimensional data for efficient in-memory similarity search
Author/Authors :
Su، Jianwen نويسنده , , Cui، Bin نويسنده , , Coi، Beng Chin نويسنده , , K.-L.، Tan, نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Abstract :
In main memory systems, the L2 cache typically employs cache line sizes of 32-128 bytes. These values are relatively small compared to high-dimensional data, e.g., >32D. The consequence is that existing techniques (on low-dimensional data) that minimize cache misses are no longer effective. We present a novel index structure, called(delta)-tree, to speed up the high-dimensional query in main memory environment. The(delta)-tree is a multilevel structure where each level represents the data space at different dimensionalities: the number of dimensions increases toward the leaf level. The remaining dimensions are obtained using principal component analysis. Each level of the tree serves to prune the search space more efficiently as the lower dimensions can reduce the distance computation and better exploit the small cache line size. Additionally, the top-down clustering scheme can capture the feature of the data set and, hence, reduces the search space. We also propose an extension, called(delta)/sup +/-tree, that globally clusters the data space and then partitions clusters into small regions. The(delta)/sup +/-tree can further reduce the computational cost and cache misses. We conducted extensive experiments to evaluate the proposed structures against existing techniques on different kinds of data sets. Our results show that the(delta)/sup +/-tree is superior in most cases.
Keywords :
Abdominal obesity , Food patterns , Prospective study , waist circumference
Journal title :
IEEE Transactions on Knowledge and Data Engineering
Journal title :
IEEE Transactions on Knowledge and Data Engineering