Genetic programming-based feature learning for question answering
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @Article{Khodadi:2016:IPM,
-
author = "Iman Khodadi and Mohammad Saniee Abadeh",
-
title = "Genetic programming-based feature learning for
question answering",
-
journal = "Information Processing \& Management",
-
year = "2016",
-
volume = "52",
-
number = "2",
-
pages = "340--357",
-
month = mar,
-
keywords = "genetic algorithms, genetic programming, Question
Answering (QA), Feature learning, Feature weight
learning, Factoid questions, Information Extraction
(IE)",
-
ISSN = "0306-4573",
-
DOI = "doi:10.1016/j.ipm.2015.09.001",
-
URL = "http://www.sciencedirect.com/science/article/pii/S0306457315001193",
-
size = "18 pages",
-
abstract = "Question Answering (QA) systems are developed to
answer human questions. In this paper, we have proposed
a framework for answering definitional and factoid
questions, enriched by machine learning and
evolutionary methods and integrated in a web-based QA
system. Our main purpose is to build new features by
combining state-of-the-art features with arithmetic
operators. To accomplish this goal, we have presented a
Genetic Programming (GP)-based approach. The exact GP
duty is to find the most promising formulas, made by a
set of features and operators, which can accurately
rank paragraphs, sentences, and words. We have also
developed a QA system in order to test the new
features. The input of our system is texts of documents
retrieved by a search engine. To answer definitional
questions, our system performs paragraph ranking and
returns the most related paragraph. Moreover, in order
to answer factoid questions, the system evaluates
sentences of the filtered paragraphs ranked by the
previous module of our framework. After this phase, the
system extracts one or more words from the ranked
sentences based on a set of hand-made patterns and
ranks them to find the final answer. We have used Text
Retrieval Conference (TREC) QA track questions, web
data, and AQUAINT and AQUAINT-2 datasets for training
and testing our system. Results show that the learned
features can perform a better ranking in comparison
with other evaluation formulas.",
- }
Genetic Programming entries for
Iman Khodadi
Mohammad Saniee Abadeh
Citations