2022
DOI: 10.1142/s0218213022600028
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WPEviRC: A Multi-rules-based Classifier for Evidential Databases Without Class Label Ambiguities

Abstract: Rule-based classifiers use a collection of high-quality rules to classify new data instances. They can be categorized according to the adopted classification strategy: Classifiers based on a single rule, and classifiers based on multiple rules. Many works were proposed in this field. However, most of them do not handle imperfect data. In this study, we focus on the issue of multi-rules-based classification for evidential data, i.e., data where imperfection is modeled via the belief functions theory. In this re… Show more

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