A GP-adaptive web ranking discovery framework based on combinative content and context features
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{Keyhanipour2009,
-
author = "Amir Hosein Keyhanipour and Maryam Piroozmand and
Kambiz Badie",
-
title = "A GP-adaptive web ranking discovery framework based on
combinative content and context features",
-
journal = "Journal of Informetrics",
-
year = "2009",
-
volume = "3",
-
number = "1",
-
pages = "78--89",
-
month = jan,
-
ISSN = "1751-1577",
-
DOI = "DOI:10.1016/j.joi.2008.11.006",
-
URL = "http://www.sciencedirect.com/science/article/B83WV-4V99602-2/2/dbdb4475cf1bfdaf20f775edd1aa4636",
-
keywords = "genetic algorithms, genetic programming, Document
ranking, Classifier designing, LETOR, LAGEP",
-
abstract = "The problem of ranking is a crucial task in the web
information retrieval systems. The dynamic nature of
information resources as well as the continuous changes
in the information demands of the users has made it
very difficult to provide effective methods for data
mining and document ranking. Regarding these
challenges, in this paper an adaptive ranking algorithm
is proposed named GPRank. This algorithm which is a
function discovery framework, uses the relatively
simple features of web documents to provide suitable
rankings using a multi-layer/multi-population genetic
programming architecture. Experiments done, illustrate
that GPRank has better performance in comparison with
well-known ranking techniques and also against its full
mode edition.",
- }
Genetic Programming entries for
Amir Hosein Keyhanipour
Maryam Piroozmand
Kambiz Badie
Citations