Neural Network Model (NNet) Training Task
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A Neural Network Model (NNet) Training Task is a model-based training task that is a neural network creation task (that can produce an artificial neural network).
- Context:
- output: Neural Network Model Instance.
- It can be solved by a ANN Training System (that implements an NNet training algorithm).
- It can range from being Single-Layer Neural Network Training to being Multi-Layer Neural Network Training.
- It can range from being an ANN Classifier Training Task to being an ANN Ranker Training Task to being an ANN Estimator Training Task.
- It can range from (typically) being a Data-Driven Neural Network Training Task to being a Heuristic Neural Network Training Task.
- Example(s):
- a Feed-Forward NNet Training Task, such as a [CCN training task]] for an RNN training task.
- a Language Model NNet Training, Image Classifier NNet Training, ....
- …
- Counter-Example(s):
- See: CNN Model Training.
References
2014
- http://deeplearning.stanford.edu/wiki/index.php/Backpropagation_Algorithm
- QUOTE: Suppose we have a fixed training set [math]\displaystyle{ \{ (x^{(1)}, y^{(1)}), \ldots, (x^{(m)}, y^{(m)}) \} }[/math] of [math]\displaystyle{ m }[/math] training examples. We can train our neural network using batch gradient descent ...