Ejemplo n.º 1
0
        public static bool VerifyLossFuncDerivative(LossFunc func, Tensor targetOutput, bool onlyPositiveOutput = false, int batchSize = 1, float tolerance = 0.01f)
        {
            Tensor.SetOpMode(Tensor.OpMode.CPU);
            var output = new Tensor(new Shape(3, 3, 3, batchSize));

            output.FillWithRand(10, onlyPositiveOutput ? 0 : -1);

            // for derivation purposes activation functions expect already processed input
            var error = new Tensor(output.Shape);

            func.Compute(targetOutput, output, error);

            var derivative = new Tensor(output.Shape);

            func.Derivative(targetOutput, output, derivative);

            var error1 = new Tensor(output.Shape);

            func.Compute(targetOutput, output.Sub(LOSS_DERIVATIVE_EPSILON), error1);

            var error2 = new Tensor(output.Shape);

            func.Compute(targetOutput, output.Add(LOSS_DERIVATIVE_EPSILON), error2);

            var result = new Tensor(output.Shape);

            error2.Sub(error1, result);

            var approxDerivative = result.Div(2 * LOSS_DERIVATIVE_EPSILON);

            return(approxDerivative.Equals(derivative, tolerance));
        }
Ejemplo n.º 2
0
        public void Optimize(Optimizers.OptimizerBase optimizer, LossFunc loss)
        {
            Optimizer = optimizer;
            Model.Optimize();

            LossFuncs = new LossFunc[Model.GetOutputLayersCount()];
            for (int i = 0; i < LossFuncs.Length; ++i)
            {
                LossFuncs[i] = loss;
            }
        }
Ejemplo n.º 3
0
        public void Optimize(Optimizers.OptimizerBase optimizer, Dictionary <string, LossFunc> lossDict)
        {
            Optimizer = optimizer;
            Model.Optimize();

#if VALIDATION_ENABLED
            if (lossDict.Count != Model.GetOutputLayersCount())
            {
                throw new Exception($"Mismatched number of loss functions ({lossDict.Count}) and output layers ({Model.GetOutputLayersCount()})!");
            }
#endif

            LossFuncs = new LossFunc[Model.GetOutputLayersCount()];
            int i = 0;
            foreach (var outLayer in Model.GetOutputLayers())
            {
                LossFuncs[i++] = lossDict[outLayer.Name];
            }
        }
Ejemplo n.º 4
0
        public static bool VerifyLossFunc(LossFunc func, Tensor targetOutput, Func <float, float, float> testFunc, bool onlyPositiveOutput = false, int batchSize = 1)
        {
            Tensor.SetOpMode(Tensor.OpMode.CPU);
            var output = new Tensor(new Shape(3, 3, 3, batchSize));

            output.FillWithRand(10, onlyPositiveOutput ? 0 : -1);

            var error = new Tensor(output.Shape);

            func.Compute(targetOutput, output, error);

            for (int i = 0; i < output.Shape.Length; ++i)
            {
                if (Math.Abs(error.GetFlat(i) - testFunc(targetOutput.GetFlat(i), output.GetFlat(i))) > 1e-4)
                {
                    return(false);
                }
            }

            return(true);
        }