Вылетает в этой фукции:
float Neuron::Axon::getSignal() const
{
return 1 / (1 + exp(ownerNeuron->sum_function()));
}
Функция вызывается из:
float get_axon_value() const {return axon.getSignal(); }
Это функция из
vector<float> Neural_network::test(const vector<float> &in)
{
set_inputs(in);
vector<float> out(outNeurons.size());
for (int i{0}; i < outNeurons.size(); i++)
out[i] = outNeurons[i].get_axon_value();
return out;
}
Это точка входа:
Neural_network neuralNetwork;
neuralNetwork.add_input_neuron(Neural_network::Input_neuron());
neuralNetwork.add_out_neuron(Neuron(
std::vector<Neuron::Dendrite>{Neuron::Dendrite(
1,
neuralNetwork.get_input_neuron_ref(0).get_axon_ref()
)}
));
std::cout << neuralNetwork.test(std::vector<float>{1})[0];
Типы:
/* Axon is the output part of the neuron. Dentrits gets value of neuron from it's Axon.*/
class Axon{
public:
float getSignal() const;//Activation function
Neuron *ownerNeuron;
};
/* Dendrite is an input part of neuron. It has weight. It gets value from axon of neron from previous layer.*/
class Dendrite{
public:
float weight;
Axon *inputAkson;
Dendrite(float weight, Axon inAxon) : weight{weight}, inputAkson{&inAxon} {}
};
Neuron::Neuron() : axon()
{
axon.ownerNeuron = this;
dendrite.clear();
}
Neuron::Neuron(const vector<Dendrite>& dendrites) : Neuron()
{
for(Dendrite den : dendrites)
dendrite.emplace_back(den);
}
class Input_neuron : public Neuron{
public:
float sum_function(){
return value;
}
void set_value(float v) { value = v; }
private:
float value;
};
Остальные функции:
void Neural_network::add_input_neuron(const Neural_network::Input_neuron& inputNeuron) {
inNeurons.emplace_back(inputNeuron);
}
void Neural_network::add_out_neuron(const Neuron& neuron) {
outNeurons.emplace_back(neuron);
}
Neural_network::Input_neuron &Neural_network::get_input_neuron_ref(int ind) {
if (ind < 0 || ind >= inNeurons.size())
throw runtime_error("Neural_network::get_input_neuron_ref(): out of input neurons");
return inNeurons[ind];
}
Axon& get_axon_ref() { return axon; }