Automated Keyword Extraction of Learning Materials Using Semantic Relations
Inoue, Keisuke; McCracken, Nancy
Loading…
Permalink
https://hdl.handle.net/2142/15050
Description
Title
Automated Keyword Extraction of Learning Materials Using Semantic Relations
Author(s)
Inoue, Keisuke
McCracken, Nancy
Issue Date
2010-02-03
Keyword(s)
TextRank
PageRank
Keword Extraction
Metadata
Semantic Relatedness
Abstract
The poster will present our on-going research, which will
develop new algorithms to automatically generate keywords
from online documents that describes lesson plans in mathe-
matics and science. The motivations for improving the cur-
rent keyword extraction mechanism are twofold:
• Feedback from our previous study (described below)
showed that the keyword extraction was the least sat-
isfying component of our automatic metadata extrac-
tion mechanisms to the users.
• Our data indicated that human annotators often as-
signed keywords to a document that do not appear in
the document, which were impossible for the current
keyword extraction mechanism to generate.
Building upon TextRank by Mihalcea and Tarau [4], our ap-
proach is to use a graph-based algorithm to rank keywords,
based on semantic relationships
Use this login method if you
don't
have an
@illinois.edu
email address.
(Oops, I do have one)
IDEALS migrated to a new platform on June 23, 2022. If you created
your account prior to this date, you will have to reset your password
using the forgot-password link below.