The Softmax Function is an activation function used in the output layer of neural networks for multi-class classification problems. It converts a vector of raw scores (logits) into probabilities, with each value representing the probability of the input belonging to a particular class.
The Softmax Function is crucial for multi-class classification tasks because it normalizes the output scores into a probability distribution, allowing the model to make predictions about which class the input belongs to.
The Softmax Function is an essential component of neural networks for multi-class classification. Its ability to convert raw scores into a probability distribution makes it a powerful tool for various machine learning tasks.
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