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Phased Vertical Cavity Laser Arrays

Authors :
Kent D. Choquette
Stewart T. M. Fryslie
Matthew T. Johnson
Dominic F. Siriani
Meng Peun Tan
Source :
2014 International Semiconductor Laser Conference.
Publication Year :
2014
Publisher :
IEEE, 2014.

Abstract

Vector space models (VSMs) are mathematically well-defined frameworks that have been widely used in text processing. In these models, high-dimensional, often sparse vectors represent text units. In an application, the similarity of vectors -- and hence the text units that they represent -- is computed by a distance formula. The high dimensionality of vectors, however, is a barrier to the performance of methods that employ VSMs. Consequently, a dimensionality reduction technique is employed to alleviate this problem. This paper introduces a new method, called Random Manhattan Indexing (RMI), for the construction of L1 normed VSMs at reduced dimensionality. RMI combines the construction of a VSM and dimension reduction into an incremental, and thus scalable, procedure. In order to attain its goal, RMI employs the sparse Cauchy random projections.

Details

Database :
OpenAIRE
Journal :
2014 International Semiconductor Laser Conference
Accession number :
edsair.doi...........960b2467cb60e665f9f1acbe5a1797d1