ICDM 2014 Paper ShellMiner Mining Organizational Phrases in Argumentative Texts in Social Media

该研究提出Shell Topic Model (STM),一种概率生成模型,用于分析社交论坛文本中的组织性短语和主题。STM能够无监督地分离论据内容与组织结构,并在真实在线辩论数据上表现出有效性能。

中文简介: 本文提出了概率生成模型 Shell Topic Model (STM)对社交论坛文本中的组织性短语(Organizational Phrases)和主题词(topical contents)进行建模分析,主要的应用有组织性短语的挖掘和文档建模。

论文出处:ICDM‘14.

英文摘要:Threaded debate forums have become one of the major social media platforms. Usually people argue with one another using not only claims and evidences about the topic under discussion but also language used to organize them, which we refer to as shell. In this paper, we study how to separate shell from topical contents using unsupervised methods. Along this line, we develop a latent variable model named Shell Topic Model (STM) to jointly model both topics and shell. Experiments on real online debate data show that our model can find both meaningful shell and topics. The results also show the effectiveness of our model by comparing it with several baselines in shell phrases extraction and document modeling.

Threaded debate forums have become one of the
major social media platforms. Usually people argue with one
another using not only claims and evidences about the topic
under discussion but also language used to organize them,
which we refer to as shell. In this paper, we study how
to separate shell from topical contents using unsupervised
methods. Along this line, we develop a latent variable model
named Shell Topic Model (STM) to jointly model both topics
and shell. Experiments on real online debate data show that
our model can find both meaningful shell and topics. The
results also show the effectiveness of our model by comparing it
with several baselines in shell phrases extraction and document
modeling.
Threaded debate forums have become one of the
major social media platforms. Usually people argue with one
another using not only claims and evidences about the topic
under discussion but also language used to organize them,
which we refer to as shell. In this paper, we study how
to separate shell from topical contents using unsupervised
methods. Along this line, we develop a latent variable model
named Shell Topic Model (STM) to jointly model both topics
and shell. Experiments on real online debate data show that
our model can find both meaningful shell and topics. The
results also show the effectiveness of our model by comparing it
with several baselines in shell phrases extraction and document
modeling.
Threaded debate forums have become one of the
major social media platforms. Usually people argue with one
another using not only claims and evidences about the topic
under discussion but also language used to organize them,
which we refer to as shell. In this paper, we study how
to separate shell from topical contents using unsupervised
methods. Along this line, we develop a latent variable model
named Shell Topic Model (STM) to jointly model both topics
and shell. Experiments on real online debate data show that
our model can find both meaningful shell and topics. The
results also show the effectiveness of our model by comparing it
with several baselines in shell phrases extraction and document
modeling.

下载链接:https://yangliuy.github.io/files/papers/14-ICDM-shellMiner.pdf

评论
添加红包

请填写红包祝福语或标题

红包个数最小为10个

红包金额最低5元

当前余额3.43前往充值 >
需支付:10.00
成就一亿技术人!
领取后你会自动成为博主和红包主的粉丝 规则
hope_wisdom
发出的红包
实付
使用余额支付
点击重新获取
扫码支付
钱包余额 0

抵扣说明:

1.余额是钱包充值的虚拟货币,按照1:1的比例进行支付金额的抵扣。
2.余额无法直接购买下载,可以购买VIP、付费专栏及课程。

余额充值