Title of article
Analysis of Unsupervised Dimensionality Reduction Techniques
Author/Authors
Ch. Aswani Kumar، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2009
Pages
11
From page
217
To page
227
Abstract
Domains such as text, images etc contain large amounts of redundancies and ambiguities among the attributes which result in considerable noise effects (i.e. the data is high dimension). Retrieving the data from high dimensional datasets is a big challenge. Dimensionality reduction techniques have been a successful avenue for automatically extracting the latent concepts by removing the noise and reducing the complexity in processing the high dimensional data. In this paper we conduct a systematic study on comparing the unsupervised dimensionality reduction techniques for text retrieval task. We analyze these techniques from the view of complexity, approximation error and retrieval quality with experiments on four testing document collections.
Keywords
Dimensionality reduction , Latent semantic indexing , Information retrieval , Matrix decompositions
Journal title
Computer Science and Information Systems
Serial Year
2009
Journal title
Computer Science and Information Systems
Record number
679243
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