Opinion-Based Entity Ranking using learning to rank
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{Bashir:2016:ASC,
-
author = "Shariq Bashir and Wasif Afzal and Abdul Rauf Baig",
-
title = "Opinion-Based Entity Ranking using learning to rank",
-
journal = "Applied Soft Computing",
-
volume = "38",
-
pages = "151--163",
-
year = "2016",
-
ISSN = "1568-4946",
-
DOI = "doi:10.1016/j.asoc.2015.10.001",
-
URL = "http://www.sciencedirect.com/science/article/pii/S156849461500616X",
-
abstract = "As social media and e-commerce on the Internet
continue to grow, opinions have become one of the most
important sources of information for users to base
their future decisions on. Unfortunately, the large
quantities of opinions make it difficult for an
individual to comprehend and evaluate them all in a
reasonable amount of time. The users have to read a
large number of opinions of different entities before
making any decision. Recently a new retrieval task in
information retrieval known as Opinion-Based Entity
Ranking (OpER) has emerged. OpER directly ranks
relevant entities based on how well opinions on them
are matched with a user's preferences that are given in
the form of queries. With such a capability, users do
not need to read a large number of opinions available
for the entities. Previous research on OpER does not
take into account the importance and subjectivity of
query keywords in individual opinions of an entity.
Entity relevance scores are computed primarily on the
basis of occurrences of query keywords match, by
assuming all opinions of an entity as a single field of
text. Intuitively, entities that have positive
judgements and strong relevance with query keywords
should be ranked higher than those entities that have
poor relevance and negative judgments. This paper
outlines several ranking features and develops an
intuitive framework for OpER in which entities are
ranked according to how well individual opinions of
entities are matched with the user's query keywords. As
a useful ranking model may be constructed from many
ranking features, we apply learning to rank approach
based on genetic programming (GP) to combine features
in order to develop an effective retrieval model for
OpER task. The proposed approach is evaluated on two
collections and is found to be significantly more
effective than the standard OpER approach.",
-
keywords = "genetic algorithms, genetic programming, Entity
Ranking, Opinion analysis, Learning to rank",
- }
Genetic Programming entries for
Shariq Bashir
Wasif Afzal
Abdul Rauf Baig
Citations