Constructing a Novel Chinese Readability Classification Model Using Principal Component Analysis and Genetic Programming
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @InProceedings{Lee:2012:ICALT,
-
author = "Yi-Shian Lee and Hou-Chiang Tseng and Ju-Ling Chen and
Chun-Yi Peng and Tao-Hsing Chang and Yao-Ting Sung",
-
booktitle = "12th IEEE International Conference on Advanced
Learning Technologies (ICALT 2012)",
-
title = "Constructing a Novel Chinese Readability
Classification Model Using Principal Component Analysis
and Genetic Programming",
-
year = "2012",
-
pages = "164--166",
-
keywords = "genetic algorithms, genetic programming, natural
language processing, pattern classification, principal
component analysis, text analysis, English text,
Flesch-Kincaid formula, GP, PCA, multiple linguistic
features, novel Chinese readability classification
model, principal component analysis, text
classification, text readability, Educational
institutions, Mathematical model, Predictive models,
Principal component analysis, Psychology, Support
vector machines, Principal component analysis,
Readability, Text analysis component",
-
DOI = "doi:10.1109/ICALT.2012.134",
-
abstract = "The studies of readability aim to measure the level of
text difficulty. Although traditional formulae such as
the Flesch-Kincaid formula can properly predict text
readability, they are only effective for English text.
Other formulae with very few features may result in
inaccurate text classification. The study takes into
account multiple linguistic features, and attempts to
increase the level of accuracy in text classification
by adopting a new model which integrates Principal
Component Analysis (PCA) with Genetic Programming (GP).
Empirical data are used to demonstrate the performance
of the proposed model.",
-
notes = "Also known as \cite{6268065}",
- }
Genetic Programming entries for
Yi-Shian Lee
Hou-Chiang Tseng
Ju-Ling Chen
Chun-Yi Peng
Tao-Hsing Chang
Yao-Ting Sung
Citations