Title :
High-Dimensional Similarity Retrieval Using Dimensional Choice
Author :
Tahmoush, Dave ; Samet, Hanan
Author_Institution :
Univ. of Maryland, College Park
Abstract :
There are several pieces of information that can be utilized in order to improve the efficiency of similarity searches on high-dimensional data. The most commonly used information is the distribution of the data itself but the use of dimensional choice based on the information in the query as well as the parameters of the distribution can provide an effective improvement in the query processing speed and storage. The use of this method can produce dimension reduction by as much as a factor of n, the number of data points in the database, over sequential search. We demonstrate that the curse of dimensionality is not based on the dimension of the data itself, but primarily upon the effective dimension of the distance function. We also introduce a new distance function that utilizes fewer dimensions of the higher dimensional space to produce a maximal lower bound distance in order to approximate the full distance function. This work has demonstrated significant dimension reduction, up to 70% reduction with an improvement in accuracy or over 99% with only a 6% loss in accuracy on a prostate cancer data set.
Keywords :
data reduction; database management systems; query processing; database system; dimension reduction; distance function; high-dimensional data similarity retrieval; query processing; sequential search; similarity search; Bioinformatics; Databases; Density functional theory; Educational institutions; Histograms; Information retrieval; Nearest neighbor searches; Probability density function; Prostate cancer; Query processing; high dimensional; retrieval; similarity;
Conference_Titel :
Similarity Search and Applications, 2008. SISAP 2008. First International Workshop on
Conference_Location :
Belfast
Print_ISBN :
0-7695-3101-6
DOI :
10.1109/SISAP.2008.20