Temporal Issue Trend Identifications in Blogs
- categorize
- Machine Learning
- Conference Name
- IEEE International Conference on Social Computing (SocialCom 2009)
- Presentation Date
- Aug 29
- City
- Vancouver
- Country
- Canada
- File
- CF-1.pdf (1.1M) 39회 다운로드 DATE : 2023-11-09 23:50:46
Il-Chul Moon, Yong-Min Kim, Hyun-Jong Lee, and Alice H. Oh, Temporal Issue Trend Identifications in Blogs, Symposium on Social Computing Applications, IEEE International Conference on Social Computing (SocialCom 2009), Vancouver, Canada, Aug 29, 2009
Abstract :
Many blog posts deal with current issues, so much attention has been paid to identifying topic trends in blogs. This paper suggests a new metric of selecting topic words. We empirically tested the accuracy and the performance of the metric with a massive blog corpus. First, we created blog site groups to their indegree influence. Second, we ran the metric with blog posts of each group. The test was encouraging because the metric identified key issues matching to the headlines of New York Times when it is applied to the top indegree blog group. We expect that this metric and the source grouping methods will be developed to a new topic analysis framework of a large blog corpus.
@INPROCEEDINGS{5283805,
author={I. C. Moon and Y. M. Kim and H. J. Lee and A. H. Oh},
booktitle={Computational Science and Engineering, 2009. CSE '09. International Conference on},
title={Temporal Issue Trend Identifications in Blogs},
year={2009},
volume={4},
pages={619-626},
keywords={Web sites;blog posts;massive blog corpus;temporal issue trend identifications;topic trends;Blogs;Computer science;Data privacy;Data processing;Data structures;IP networks;Needles;Radio access networks;Testing;XML;Blog;Issue Identification;Social Media},
doi={10.1109/CSE.2009.343},
month={Aug}
}
Source Website:
http://ieeexplore.ieee.org/document/5283805