A general framework for adaptive two-index fusion attribute weighted naive Bayes
Xiaoliang Zhou, Dongyang Wu, Zitong You, Li Zhang, Ning Ye

TL;DR
This paper introduces a flexible framework for adaptive two-index fusion in attribute weighted naive Bayes, enhancing accuracy by optimally combining correlation indices with a dynamic switching factor.
Contribution
It proposes a general adaptive fusion framework for two indices in attribute weighted naive Bayes, with a novel switching factor to improve classification performance.
Findings
Outperforms basic Naive Bayes and state-of-the-art filter weighted NB models.
Effectively selects and fuses two correlation indices adaptively.
Significantly increases accuracy on benchmark datasets.
Abstract
Naive Bayes(NB) is one of the essential algorithms in data mining. However, it is rarely used in reality because of the attribute independent assumption. Researchers have proposed many improved NB methods to alleviate this assumption. Among these methods, due to high efficiency and easy implementation, the filter attribute weighted NB methods receive great attentions. However, there still exists several challenges, such as the poor representation ability for single index and the fusion problem of two indexes. To overcome above challenges, we propose a general framework for Adaptive Two-index Fusion attribute weighted NB(ATFNB). Two types of data description category are used to represent the correlation between classes and attributes, intercorrelation between attributes and attributes, respectively. ATFNB can select any one index from each category. Then, we introduce a switching factor…
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Taxonomy
TopicsRough Sets and Fuzzy Logic · Data Mining Algorithms and Applications · Bayesian Modeling and Causal Inference
