Abstract

Many of the tasks required for semantic tagging of phrases and texts rely on a list of words annotated with some semantic features. We present a method for extracting sentiment-bearing adjectives from WordNet using the Sentiment Tag Extraction Program (STEP). We did 58 STEP runs on unique non-intersecting seed lists drawn from manually annotated list of positive and negative adjectives and evaluated the results against other manually annotated lists. The 58 runs were then collapsed into a single set of 7, 813 unique words. For each word we computed a Net Overlap Score by subtracting the total number of runs assigning this word a negative sentiment from the total of the runs that consider it positive. We demonstrate that Net Overlap Score can be used as a measure of the words degree of membership in the fuzzy category of sentiment: the core adjectives, which had the highest Net Overlap scores, were identified most accurately both by STEP and by human annotators, while the words on the periphery of the category had the lowest scores and were associated with low rates of inter-annotator agreement.

Keywords

WordNetComputer scienceNatural language processingArtificial intelligenceWord (group theory)Sentiment analysisSet (abstract data type)Semantic similarityInformation retrievalFuzzy logicMathematics

Affiliated Institutions

Related Publications

Word Space

Representations for semantic information about words are necessary for many applications of neural networks in natural language processing. This paper describes an efficient, co...

1992 Neural Information Processing Systems 212 citations

Publication Info

Year
2006
Type
article
Pages
209-216
Citations
318
Access
Closed

External Links

Citation Metrics

318
OpenAlex

Cite This

Alina Andreevskaia, Sabine Bergler (2006). Mining WordNet for a Fuzzy Sentiment: Sentiment Tag Extraction from WordNet Glosses. , 209-216.