Seeing stars: Exploiting class relationships for sentiment categorization with respect to rating scales
Cornell University · Carnegie Mellon University
Abstract
We address the rating-inference problem, wherein rather than simply decide whether a review is "thumbs up" or "thumbs down", as in previous sentiment analysis work, one must determine an author's evaluation with respect to a multi-point scale (e.g., one to five "stars"). This task represents an interesting twist on standard multi-class text categorization because there are several different degrees of similarity between class labels; for example, "three stars" is intuitively closer to "four stars" than to "one star". We first evaluate human performance at the task. Then, we apply a meta-algorithm, based on a metric labeling formulation of the problem, that alters a given n-ary classifier's output in an…
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Authors
2Topics & keywords
- Categorization
- Class (philosophy)
- Rating scale
- Sentiment analysis
- Stars
- Artificial intelligence
- Psychology
- Natural language processing
- Quality Education