Rusiecki, 2019 - Google Patents
Trimmed categorical cross‐entropy for deep learning with label noiseRusiecki, 2019
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- 14398378880821750634
- Author
- Rusiecki A
- Publication year
- Publication venue
- Electronics Letters
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Deep learning methods are nowadays considered as state‐of‐the‐art approach in many sophisticated problems, such as computer vision, speech understanding or natural language processing. However, their performance relies on the quality of large annotated …
- 238000000034 method 0 abstract description 7
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