Directory > Computers > Software > Information Retrieval > Ranking > By Content A Case Study in Web Search Using TREC Algorithms This study evaluates the performance of a state-of-the-art keyword-based document ranking algorithm (coming out of TREC) on a popular web search task. http://www.www10.org/cdrom/papers/317/ Reviews Rating: Not yet Rated
Whois Check
Exploring the Similarity Space Evaluation of many combinations of term frequency statistics, document frequency statistics and document length normalization. [PDF format] http://goanna.cs.rmit.edu.au/~jz/fulltext/sigirforum98.pdf Reviews Rating: Not yet Rated
Whois Check
Ranking Algorithms "Ranking Algorithms" is chapter 14 in the Frakes and Baeza-Yates book. It gives a good discussion of the tradeoffs and choices among different term-weighting strategies. http://www.dcc.uchile.cl/~rbaeza/iradsbook/irbook.html Reviews Rating: Not yet Rated
Whois Check
Probabilistic Retrieval A Chapter in a book which introduces probabilistic retrieval. http://www.dcs.gla.ac.uk/Keith/Chapter.6/Ch.6.html Reviews Rating: Not yet Rated
Whois Check
Latent Semantic Indexing: a Probabilistic Analysis Formal introduction to latent semantic indexing. [PS format] http://www.cs.berkeley.edu/~christos/ir.ps Reviews Rating: Not yet Rated
Whois Check
Is This Document Relevant? ...Probably A survey of probabilistic models in information retrieval. [PDF format] http://www.dcs.gla.ac.uk/~iain/papers/98-csur.pdf Reviews Rating: Not yet Rated
Whois Check
Document Ranking and the Vector-Space Model. It describes key issues in document ranking techniques based on the vector space model. Several TF*IDF variants are discussed. The cosine measure, recall and precision are introduced. [PS format] http://www.cs.ust.hk/~dlee/Papers/ir/ieee-sw-rank.ps.gz Reviews Rating: Not yet Rated
Whois Check
Information Retrieval Tutorial Description of boolean retrieval, vector space model, probabilistic retrieval, latent semantic indexing and other IR topics. An introduction to various classical ranking methods is also provided. http://isp.imm.dtu.dk/thor/projects/multimedia/textmining/ Reviews Rating: Not yet Rated
Whois Check
Probabilistic Models in Information Retrieval Introduction to probabilistic models. http://www.is.informatik.uni-duisburg.de/bib/xml/Fuhr_92.html Reviews Rating: Not yet Rated
Whois Check
|