Abstract
Policy makers and environmental organizations have a keen interest in awareness building and the evolution of stakeholder opinions on environmental issues. Mere polarity detection, as provided by many existing methods, does not suffice to understand the emergence of collective awareness. Methods for extracting affective knowledge should be able to pinpoint opinion targets within a thread. Opinion target extraction provides a more accurate and fine-grained identification of opinions expressed in online media. This paper compares two different approaches for identifying potential opinion targets and applies them to comments from the YouTube video sharing platform. The first approach is based on statistical keyword analysis in conjunction with sentiment classification on the sentence level. The second approach uses dependency parsing to pinpoint the target of an opinionated term. A case study based on YouTube postings applies the developed methods and measures their ability to handle noisy input data from social media streams.
Original language | English |
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Pages | 1040-1048 |
Number of pages | 9 |
DOIs | |
Publication status | Published - 2016 |
Keywords
- Internet
- data mining
- environmental factors
- grammars
- pattern classification
- sentiment analysis
- social networking (online)
- statistical analysis
- video retrieval
- YouTube postings
- YouTube video sharing platform
- dependency parsing
- environmental Web coverage
- environmental issues
- environmental organizations
- fine-grained identification
- knowledge extraction
- online media
- opinion target extraction
- opinion target identification
- polarity detection
- policy makers
- sentiment classification
- social media streams
- stakeholder opinions
- statistical keyword analysis
- Earth
- Feature extraction
- Media
- Meteorology
- Organizations
- Syntactics
- YouTube
- climate change
- keyword analysis
- opinion mining