In machine learning, a loss function is a mathematical function that must be minimized in order to achieve convergence. Choosing the proper loss function is an important step in designing your neural network. The IDLmllfLogCosh (Log Cosh) loss function is implemented with the following formula:
            
                 
             
            where x is the calculated output of the model and y is the predicted output or truth.
            Example
            Compile_opt idl2
            LossFunction = IDLmllfLogCosh()
            Print, LossFunction(Findgen(10)/9.0, Fltarr(10))
             
            Typically, you will pass an object of this class to a neural network model definition:
            Classifier = IDLmlFeedForwardNeuralNetwork([3, 7, 1],
            LOSS_FUNCTION=IDLmllfLogCosh()
            Syntax
            Kernel = IDLmllfLogCosh()
            Arguments
            None
            Keywords
            None
            Version History
            
            See Also
            IDLmllfCrossEntropy, IDLmllfHuber, IDLmllfMeanAbsoluteError, IDLmllfMeanSquaredError