Black-Box vs. White-Box: Understanding Their Advantages and Weaknesses From a Practical Point of View
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Abstract
Nowadays, in the international scientific community of machine learning, there exists an enormous discussion about the use of black-box models or explainable models; especially in practical problems. On the one hand, a part of the community defends that black-box models are more accurate than explainable models in some contexts, like image preprocessing. On the other hand, there exist another part of the community alleging that explainable models are better than black-box models because they can obtain comparable results and also they can explain these results in a language close to a human expert by using patterns. In this paper, advantages and weaknesses for each approach are shown; taking into account a…
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529
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- 23.36
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Authors
1Topics & keywords
Topics
Keywords
- White box
- Computer science
- Black box
- Strengths and weaknesses
- Point (geometry)
- White (mutation)
- Artificial intelligence
- Machine learning
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