A Survey of Applications of Fuzzy Orderings: From Databases to Statistics and Machine Learning
نویسنده
چکیده
This contribution provides an overview of practical applications of similarity-based fuzzy orderings. These applications include flexible database querying, robust statistics, natural language semantics, and fuzzy rulebased machine learning.
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