Paraconsistent Random Forest: An Alternative Approach for Dealing With Uncertain Data

Volume: 7, Pages: 147914 - 147927
Published: Jan 1, 2019
Abstract
Pattern recognition algorithms have introduced increasingly sophisticated solutions. However, many datasets are far from perfect; for example, they may include inconsistencies and have missing data, which may interfere with the classification process. Thus, the use of paraconsistent logic can provide a compelling quantitative analysis approach in classification algorithms because it deals directly with inaccurate, inconsistent and incomplete...
Paper Details
Title
Paraconsistent Random Forest: An Alternative Approach for Dealing With Uncertain Data
Published Date
Jan 1, 2019
Volume
7
Pages
147914 - 147927
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