Adaptive imputation of missing values for incomplete pattern classification
Zhun-Ga Liu, Quan Pan, Jean Dezert (Palaiseau), Arnaud Martin (DRUID)

TL;DR
This paper introduces a credal classification method for incomplete patterns that adaptively imputes missing values using belief functions, improving classification accuracy and uncertainty management.
Contribution
It presents a novel adaptive imputation approach combining belief function theory with K-NN and SOM techniques for credal classification of incomplete data.
Findings
Reduces misclassification rates compared to classical methods
Effectively captures uncertainty with belief-based meta-classes
Demonstrates improved accuracy on artificial and real datasets
Abstract
In classification of incomplete pattern, the missing values can either play a crucial role in the class determination, or have only little influence (or eventually none) on the classification results according to the context. We propose a credal classification method for incomplete pattern with adaptive imputation of missing values based on belief function theory. At first, we try to classify the object (incomplete pattern) based only on the available attribute values. As underlying principle, we assume that the missing information is not crucial for the classification if a specific class for the object can be found using only the available information. In this case, the object is committed to this particular class. However, if the object cannot be classified without ambiguity, it means that the missing values play a main role for achieving an accurate classification. In this case, the…
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