Albqmi, 2022 - Google Patents
Integrating three-way decisions framework with multiple support vector machines for text classificationAlbqmi, 2022
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- 5324389279443122020
- Author
- Albqmi A
- Publication year
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Identifying the boundary between relevant and irrelevant objects in text classification is a significant challenge due to the numerous uncertainties in text documents. Most existing binary text classifiers cannot deal effectively with this problem due to the issue of over-fitting …
- 238000000034 method 0 abstract description 129
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