Franke et al., 2023 - Google Patents
The softmax function: Properties, motivation, and interpretationFranke et al., 2023
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- 2180987526809781066
- Author
- Franke M
- Degen J
- Publication year
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The softmax function is a ubiquitous helper function, frequently used as a probabilistic link function for unordered categorical data, in different kinds of models, such as regression, artificial neural networks, or probabilistic cognitive models. To fully understand the models in …
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