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Learning sentiment classification model from labeled features
Yulan He
Computer Science Research Group
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Dive into the research topics of 'Learning sentiment classification model from labeled features'. Together they form a unique fingerprint.
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Keyphrases
Sentiment Classification
100%
Unsupervised Learning
50%
Classification Methods
50%
Lexicon
50%
Model Prediction
50%
Sentiment Lexicon
50%
Self-learned Features
50%
Word Class
50%
Class Distribution
50%
Sentiment Label
50%
Generalized Expectation Criteria
50%
Unlabeled Instances
50%
Movie Reviews
50%
Domain-specific Features
50%
Multi-domain
50%
Sentiment Dataset
50%
Feature Acquisition
50%
Computer Science
Classification Models
100%
Labeled Example
100%
Sentiment Classification
100%
Extracted Information
50%
Labeled Document
50%
Generalized Expectation
50%
Model Prediction
50%
Classification Method
50%
Learned Feature
50%
Class Distribution
50%