Example #1
0
        /// DO POPRAWY
        public static float Learn(Network network, DataSet data)
        {
            float meanError = 0.0f;
            List <List <float> > placeForErrors  = CreateNodesForErrors(network);
            List <List <float> > placeForOutputs = CreateNodesForErrors(network);

            for (int i = 0; i < data.Input.Count; i++)
            {
                float[] solution = new float [network.Classes];
                solution = NetworkCalculation.CalculateSingleRecord(network, data.Input[i].ToArray(), placeForOutputs);
                float[] MSError        = SquaredError(solution, data.Output[i].ToArray());
                float[] lastLayerError = LastLayerError(solution, data.Output[i].ToArray());
                float   tmpError       = 0.0f;
                for (int j = 0; j < MSError.Length; j++)
                {
                    tmpError += MSError[j];
                }

                CalculateNodeErrors(placeForErrors, lastLayerError, network);
                ModifyWages(network, placeForErrors, placeForOutputs, network.LearningFactor);
                meanError += tmpError;
            }
            meanError = meanError / (float)data.Input.Count;
            return(meanError);
        }
        public static float GetTestingSetError(Network network, DataSet testingSet)
        {
            float error = 0.0f;
            int   correctAnswerCounter           = 0;
            List <List <float> > placeForOutputs = LearningHelper.CreateNodesForErrors(network);

            for (int i = 0; i < testingSet.Input.Count; i++)
            {
                float[] solution = new float[network.Classes];
                solution = NetworkCalculation.CalculateSingleRecord(network, testingSet.Input[i].ToArray(), placeForOutputs);
                bool areSame = CompareAnswers(solution, testingSet.Output[i].ToArray());
                if (areSame)
                {
                    correctAnswerCounter++;
                }
            }
            error = (float)(((double)correctAnswerCounter * 100.0) / (double)testingSet.Output.Count);
            return(error);
        }