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Machine learning / Artificial intelligence / Learning / Statistical classification / Cognition / Natural language processing / Semi-supervised learning / Co-training / Supervised learning / Domain adaptation / Sentiment analysis / Support vector machine
Date: 2011-07-02 16:22:38
Machine learning
Artificial intelligence
Learning
Statistical classification
Cognition
Natural language processing
Semi-supervised learning
Co-training
Supervised learning
Domain adaptation
Sentiment analysis
Support vector machine

Filling the Gap: Semi-Supervised Learning for Opinion Detection Across Domains Abstract We investigate the use of Semi-Supervised Learning (SSL) in opinion detection both in

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