Title
Estimating intrinsic dimensionality using the multi-criteria decision weighted model and the average standard estimator
Abstract
Information retrieval today is much more challenging than traditional small document retrieval. The main difference is the importance of correlations between related concepts in complex data structures. As collections of data grow and contain more entries, they require more complex relationships, links, and groupings between individual entries. This paper introduces two novel methods for estimating data intrinsic dimensionality based on the singular value decomposition (SVD). The average standard estimator (ASE) and the multi-criteria decision weighted model are used to estimate matrix intrinsic dimensionality for large document collections. The multi-criteria weighted model calculates the sum of weighted values of matrix dimensions which demonstrated best performance using all possible dimensions [1]. ASE estimates the level of significance for singular values that resulted from the singular value decomposition. ASE assumes that those variables with deep relations have sufficient correlation and that only those relationships with high singular values are significant and should be maintained [1]. Experimental results indicate that ASE improves precision and relative relevance for MEDLINE document collection by 10.2% and 12.9% respectively compared to the percentage of variance dimensionality estimation. Results based on testing three document collections over all possible dimensions using selected performance measures indicate that ASE improved matrix intrinsic dimensionality estimation by including the effect of both singular values magnitude of decrease and random noise distracters. The multi-criteria weighted model with dimensionality reduction provides a more efficient implementation for information retrieval than using a full rank model.
Year
DOI
Venue
2010
10.1016/j.ins.2010.04.006
Inf. Sci.
Keywords
Field
DocType
singular value decomposition,multi-criteria decision,matrix intrinsic dimensionality,information retrieval,possible dimension,average standard estimator,multi-criteria weighted model,high singular value,singular value,data intrinsic dimensionality,matrix intrinsic dimensionality estimation,dimensionality reduction,business process,business process optimization,complex data,document retrieval
Rank (linear algebra),Singular value decomposition,Dimensionality reduction,Singular value,Matrix (mathematics),Curse of dimensionality,Artificial intelligence,Document retrieval,Statistics,Mathematics,Machine learning,Estimator
Journal
Volume
Issue
ISSN
180
15
0020-0255
Citations 
PageRank 
References 
3
0.40
15
Authors
3
Name
Order
Citations
PageRank
Tareq Z. Ahram1287.73
Pamela McCauley-Bush230.40
Waldemar Karwowski312031.49