COMBINING ADABOOST WITH PREPROCESSING ALGORITHMS FOR EXTRACTING FUZZY RULES FROM LOW QUALITY DATA IN POSSIBLY IMBALANCED PROBLEMS
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| Abstract | An extension of the Adaboost algorithm for obtaining fuzzy rule-based systems from low quality data is combined with preprocessing algorithms for equalizing imbalanced datasets. With the help of synthetic and real-world problems, it is shown that the performance of the Adaboost algorithm is degraded in presence of a moderate uncertainty in either the input or the output values. It is also established that a preprocessing stage improves the accuracy of the classifier in a wide range of binary classification problems, including those whose imbalance ratio is uncertain. | 
| Year of Publication | 
					2012
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| Journal | 
					International Journal of Uncertainty, Fuzziness and Knowledge-Based Systems
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| Volume | 
					20
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| Number of Pages | 
					51-71
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| URL | 
					https://doi.org/10.1142/S0218488512400156
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| DOI | 
					10.1142/S0218488512400156
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