Exemplo n.º 1
0
        public ColumnVector1D AsColumnVector()
        {
            if (_vector == null && FeatureVector != null)
            {
                _vector = new ColumnVector1D(FeatureVector);
            }

            return _vector;
        }
Exemplo n.º 2
0
        public double Train(ColumnVector1D inputVector, ColumnVector1D targetOutput)
        {
            var output = _network.Evaluate(inputVector);

            var errors = CalculateError(output, targetOutput);

            Adjust(errors.Item1);

            return errors.Item2 / 2; // Math.Sqrt(errors.Item2);
        }
Exemplo n.º 3
0
        protected virtual Tuple<ColumnVector1D[], double> CalculateError(ColumnVector1D actualOutput, ColumnVector1D targetOutput)
        {
            // network
            //    -- layers[]
            //          -- neuron[]
            //              -- weights[]

            ILayer lastLayer = null;
            ColumnVector1D lastError = null;
            double error = 0;
            
            var errors = _network.ForEachLayer((layer) =>
            {
                if (lastError == null)
                {
                    lastError = layer.ForEachNeuron((n, k) =>
                    {
                        var e = targetOutput[k] - n.Output;
                        error += e * e;
                        return e * _network.Parameters.Activator.Derivative(n.Output);
                    });
                }
                else
                {
                    lastError = layer.ForEachNeuron((n, i) =>
                    {
                        var err = lastLayer.ForEachNeuron((nk, k) =>
                        {
                            return lastError[k] * nk[i];
                            //return nk.Calculate(w => w * lastError[k]).Sum();
                        });

                        return err.Sum() * _network.Parameters.Activator.Derivative(n.Output);
                    });
                }

                lastLayer = layer;
                
                return lastError;
            }).Reverse().ToArray();

            return new Tuple<ColumnVector1D[], double>(errors, error);
        }
Exemplo n.º 4
0
        protected virtual void Adjust(ColumnVector1D[] errors)
        {
            ILayer previousLayer = null;
            var i = 0;

            _network.ForEachLayer(layer =>
            {
                var layerErrors = errors[i++];

                var update = layer.ForEachNeuron((n, j) =>
                {
                    var error = layerErrors[j];

                    n.Adjust((w, k) => {
                        var prevOutput = previousLayer == null || k < 0 ? 1 : previousLayer[k].Output;
                        return ExecuteUpdateRule(w, error, prevOutput);
                    });

                    return n.Bias;
                });

                previousLayer = layer;

                return update;
            }, false).ToArray();
        }
Exemplo n.º 5
0
 public ColumnVector1DEventArgs(ColumnVector1D vector)
 {
     Vector = vector;
 }