Which activation function outputs values between zero and one and is common in classification?

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Multiple Choice

Which activation function outputs values between zero and one and is common in classification?

Explanation:
Sigmoid is the activation that outputs values between zero and one, making it ideal for probability-style predictions in classification tasks. It uses the logistic function f(z) = 1/(1+e^{-z}), which takes any real-valued input and squashes it into the (0,1) range. This lets you interpret the network’s output as the estimated probability of the positive class in binary classification, and it’s a common final activation in binary classifiers and logistic regression. Other activations don’t produce a single probability: ReLU is non-negative and unbounded above, tanh maps to (-1,1), and Softmax, while producing numbers between 0 and 1, yields a distribution across multiple classes and is used for multi-class problems with several outputs.

Sigmoid is the activation that outputs values between zero and one, making it ideal for probability-style predictions in classification tasks. It uses the logistic function f(z) = 1/(1+e^{-z}), which takes any real-valued input and squashes it into the (0,1) range. This lets you interpret the network’s output as the estimated probability of the positive class in binary classification, and it’s a common final activation in binary classifiers and logistic regression. Other activations don’t produce a single probability: ReLU is non-negative and unbounded above, tanh maps to (-1,1), and Softmax, while producing numbers between 0 and 1, yields a distribution across multiple classes and is used for multi-class problems with several outputs.

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