Weighted pretopological approach for decision accuracy in information system
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Keywords:
Pretopology, Information system, Decision accuracyAbstract
Computing decision accuracy is an important step in making and choosing decision in information system. Most works in this direction does not use the concepts of topology. This work is to use pretopological structures generated from weighted similarity classes to find accuracy of decision sets. Example is given to indicate the approach and comparison between weighted accuracy and other types of accuracy
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- 2023-07-27 (2)
- 2023-07-18 (1)