
Challenges and solutions in the opinion summarization of user-generated content
Estimating mass opinion from subjective texts on the Web can beuseful for many real-world applications e.g., marketing, business intelligence,product assessment, decision-support etc. In this paper, we present dierentapproaches to summarizing opinion. We apply these approaches to: a) identifypositive and negative opinions in blog threads in order to produce a list ofarguments in favor and against a given topic and b) summarize the opinionexpressed in reviews. Subsequently, we evaluate the proposed methods on twodistinct datasets and analyze the quality of the obtained results, as well asdiscuss the errors produced. Finally, we conclude that the proposed approachis appropriate in the context of opinion summarization.
Keywords: Sentiment analysis, opinion mining, opinion summarisation, social media
Year: 2012

Authors of this publication:

Josef Steinberger
E-mail: jstein@kiv.zcu.cz
Related Projects:

Automatic Text Summarisation | |
Authors: | Josef Steinberger, Karel Ježek, Michal Campr, Jiří Hynek |
Desc.: | Automatic text summarisation using various text mining methods, mainly Latent Semantic Analysis (LSA). |

Multilingual Sentiment Analysis | |
Authors: | Josef Steinberger |
Desc.: | Sentiment analysis of news and social media in multiple languages. |