RMIT University
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Web readibility and computer-assisted language learning

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conference contribution
posted on 2024-11-23, 01:56 authored by Sandra UitdenbogerdSandra Uitdenbogerd
Proficiency in a second language is of vital importance for many people. Today's access to corpora of text, including the Web, allows new techniques for improving language skill. Our project's aim is the development of techniques for presenting the user with suitable web text, to allow optimal language acquisition via reading. Some text found on the Web may be of a suitable level of difficulty but appropriate techniques need to be devised for locating it, as well as methods for rapid retrieval. Our experiments described here compare the range of difficulty of text found on the Web to that found in traditional hard-copy texts for English as a Second Language (ESL) learners, using standard readability measures. The results show that the ESL text readability range fall within the range for Web text. This suggests that an on-line text retrieval engine based on readability can be of use to language learners. However, web pages pose their own difficulty, since those with scores representing high readability are often of limited use. Therefore readability measurement techniques need to be modified for the Web domain.

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Start page

99

End page

106

Total pages

8

Outlet

Proceedings of the 2006 Australasian Language Technology Workshop

Editors

L. Cavedon and I. Zukerman

Name of conference

Australasian Language Technology Workshop

Publisher

Australian Language Technology Association

Place published

Carlton, Vic

Start date

2006-11-30

End date

2006-12-01

Language

English

Copyright

Copyright 2003 ALTA

Former Identifier

2006001968

Esploro creation date

2020-06-22

Fedora creation date

2011-06-09

Open access

  • Yes

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