This commit is contained in:
2026-04-28 23:23:57 +07:00
parent ced1c1c291
commit 229c5d85c4
4 changed files with 158 additions and 16 deletions
+82
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#include "core.h"
NeuralNetwork::NeuralNetwork(LayerStructure_t layers[], int count) {
numLayers = count;
for (int i = 0; i < count; i++) {
layerSizes.push_back(layers[i].size);
}
// Инициализация весов случайными числами
for (int i = 0; i < count - 1; i++) {
std::vector<std::vector<double>> layerWeights;
for (int j = 0; j < layerSizes[i+1]; j++) {
std::vector<double> nodeWeights;
for (int k = 0; k < layerSizes[i]; k++) {
nodeWeights.push_back(((double)rand() / RAND_MAX) * 2 - 1);
}
layerWeights.push_back(nodeWeights);
}
weights.push_back(layerWeights);
std::vector<double> layerBiases;
for (int j = 0; j < layerSizes[i+1]; j++) {
layerBiases.push_back(((double)rand() / RAND_MAX) * 2 - 1);
}
biases.push_back(layerBiases);
}
}
std::vector<double> NeuralNetwork::feedForward(std::vector<double> input) {
outputs.clear();
outputs.push_back(input);
std::vector<double> current = input;
for (int i = 0; i < numLayers - 1; i++) {
std::vector<double> next;
for (int j = 0; j < layerSizes[i+1]; j++) {
double sum = biases[i][j];
for (int k = 0; k < layerSizes[i]; k++) {
sum += current[k] * weights[i][j][k];
}
next.push_back(sigmoid(sum));
}
current = next;
outputs.push_back(current);
}
return current;
}
void NeuralNetwork::train(std::vector<double> input, std::vector<double> target, double lr) {
// 1. Прямой проход
feedForward(input);
// 2. Вычисление ошибок для выходного слоя
std::vector<std::vector<double>> errors(numLayers);
errors[numLayers - 1].resize(layerSizes[numLayers - 1]);
for (int i = 0; i < layerSizes[numLayers - 1]; i++) {
double output = outputs[numLayers - 1][i];
errors[numLayers - 1][i] = (target[i] - output) * sigmoidDerivative(output);
}
// 3. Обратное распространение ошибки на скрытые слои
for (int i = numLayers - 2; i > 0; i--) {
errors[i].resize(layerSizes[i]);
for (int j = 0; j < layerSizes[i]; j++) {
double error = 0.0;
for (int k = 0; k < layerSizes[i+1]; k++) {
error += errors[i+1][k] * weights[i][k][j];
}
errors[i][j] = error * sigmoidDerivative(outputs[i][j]);
}
}
// 4. Обновление весов и смещений
for (int i = 0; i < numLayers - 1; i++) {
for (int j = 0; j < layerSizes[i+1]; j++) {
for (int k = 0; k < layerSizes[i]; k++) {
weights[i][j][k] += lr * errors[i+1][j] * outputs[i][k];
}
biases[i][j] += lr * errors[i+1][j];
}
}
}
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#ifndef CORE_H
#define CORE_H
class NeuroEngine: { #include "typedef.h"
private: #include <vector>
void* m_engine; #include <cmath>
public: #include <iostream>
NeuroEngine(); #include <cstdlib>
~NeuroEngine();
void* getEngine(); class NeuralNetwork {
} private:
int numLayers;
std::vector<int> layerSizes;
std::vector<std::vector<std::vector<double>>> weights; // weights[layer][to_node][from_node]
std::vector<std::vector<double>> biases; // biases[layer][node]
std::vector<std::vector<double>> outputs; // Храним выходы слоев для backprop
double sigmoid(double x) { return 1.0 / (1.0 + exp(-x)); }
double sigmoidDerivative(double x) { return x * (1.0 - x); }
public:
NeuralNetwork(LayerStructure_t layers[], int count);
std::vector<double> feedForward(std::vector<double> input);
void train(std::vector<double> input, std::vector<double> target, double learningRate);
};
#endif
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#ifndef TYPEDEF_H
#define TYPEDEF_H
#include <vector>
typedef enum {
SIGMOID
} FunctionActivate_t;
typedef struct {
int size;
FunctionActivate_t activate;
} LayerStructure_t;
#endif
+34 -8
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@@ -1,13 +1,39 @@
#include <iostream> #include <iostream>
#include <vector>
int calculate(int a, int b) { #include <ctime>
return a + o; #include "Xenith/core.h"
} #include "Xenith/typedef.h"
int main() { int main() {
// print hello world and test void calculate function srand(time(NULL));
std::cout << "Hello World!" << std::endl;
int result = calculate(1, 2); LayerStructure_t layers[] = {
std::cout << result << std::endl; {2, SIGMOID}, // Вход: 2 числа
{3, SIGMOID}, // Скрытый слой
{1, SIGMOID} // Выход: 1 число
};
NeuralNetwork nn(layers, 3);
// Данные для обучения
std::vector<std::vector<double>> inputs = {{1, 1}, {1, 0}, {0, 0}, {0, 1}};
std::vector<std::vector<double>> targets = {{0}, {1}, {1}, {0}};
// Цикл обучения
std::cout << "Training..." << std::endl;
for (int epoch = 0; epoch < 20000; epoch++) {
for (int i = 0; i < inputs.size(); i++) {
nn.train(inputs[i], targets[i], 0.5);
}
}
// Проверка результатов
std::cout << "Results:" << std::endl;
for (int i = 0; i < inputs.size(); i++) {
std::vector<double> res = nn.feedForward(inputs[i]);
std::cout << inputs[i][0] << " " << inputs[i][1] << " -> "
<< (res[0] > 0.5 ? 1 : 0) << " (raw: " << res[0] << ")" << std::endl;
}
return 0; return 0;
} }