<--- Back to Details
First PageDocument Content
Latent semantic analysis / Document-term matrix / Vector space model / Precision and recall / Singular value decomposition / Rank / Relevance / Tf*idf / Latent semantic indexing / Information science / Information retrieval / Science
Date: 2006-10-31 17:06:49
Latent semantic analysis
Document-term matrix
Vector space model
Precision and recall
Singular value decomposition
Rank
Relevance
Tf*idf
Latent semantic indexing
Information science
Information retrieval
Science

Add to Reading List

Source URL: www.cs.colorado.edu

Download Document from Source Website

File Size: 179,58 KB

Share Document on Facebook

Similar Documents

Quick and Reliable Document Alignment via TF/IDF-weighted Cosine Distance Christian Buck Philipp Koehn University of Edinburgh Center for Language and Speech Processing

Quick and Reliable Document Alignment via TF/IDF-weighted Cosine Distance Christian Buck Philipp Koehn University of Edinburgh Center for Language and Speech Processing

DocID: 1tmqa - View Document

Back to Our Roots for Retrieving Very Short Passages Nada Naji University of Neuchatel, Computer Science Dept. Rue Emile-Argand 11, 2000 Neuchatel Switzerland

Back to Our Roots for Retrieving Very Short Passages Nada Naji University of Neuchatel, Computer Science Dept. Rue Emile-Argand 11, 2000 Neuchatel Switzerland

DocID: 1gC3e - View Document

Microsoft Word - _paged_overlay_100.doc

Microsoft Word - _paged_overlay_100.doc

DocID: 1gzhS - View Document

A Survey of Feature Location Techniques Julia Rubin and Marsha Chechik Abstract Feature location techniques aim at locating software artifacts that implement a specific program functionality, a.k.a. a feature. These tech

A Survey of Feature Location Techniques Julia Rubin and Marsha Chechik Abstract Feature location techniques aim at locating software artifacts that implement a specific program functionality, a.k.a. a feature. These tech

DocID: 1gwU0 - View Document

Splitting Models Using Information Retrieval and Model Crawling Techniques Daniel Str¨uber1 , Julia Rubin2,3 , Gabriele Taentzer1 , and Marsha Chechik3 1  Philipps-Universit¨at Marburg, Germany

Splitting Models Using Information Retrieval and Model Crawling Techniques Daniel Str¨uber1 , Julia Rubin2,3 , Gabriele Taentzer1 , and Marsha Chechik3 1 Philipps-Universit¨at Marburg, Germany

DocID: 1gwdL - View Document