mirror of
https://github.com/Relintai/pmlpp.git
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273 lines
6.8 KiB
C++
273 lines
6.8 KiB
C++
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#include "c_log_log_reg.h"
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#include "../activation/activation.h"
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#include "../cost/cost.h"
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#include "../regularization/reg.h"
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#include "../utilities/utilities.h"
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#include <random>
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Ref<MLPPVector> MLPPCLogLogReg::model_set_test(const Ref<MLPPMatrix> &X) {
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return evaluatem(X);
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}
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real_t MLPPCLogLogReg::model_test(const Ref<MLPPVector> &x) {
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return evaluatev(x);
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}
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void MLPPCLogLogReg::gradient_descent(real_t learning_rate, int max_epoch, bool ui) {
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MLPPActivation avn;
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MLPPReg regularization;
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real_t cost_prev = 0;
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int epoch = 1;
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forward_pass();
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while (true) {
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cost_prev = cost(_y_hat, _output_set);
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Ref<MLPPVector> error = _y_hat->subn(_output_set);
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// Calculating the weight gradients
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_weights->sub(_input_set->transposen()->mult_vec(error->hadamard_productn(avn.cloglog_derivv(_z)))->scalar_multiplyn(learning_rate / _n));
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_weights = regularization.reg_weightsv(_weights, _lambda, _alpha, _reg);
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// Calculating the bias gradients
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bias -= learning_rate * error->hadamard_productn(avn.cloglog_derivv(_z))->sum_elements() / _n;
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forward_pass();
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if (ui) {
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MLPPUtilities::cost_info(epoch, cost_prev, cost(_y_hat, _output_set));
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MLPPUtilities::print_ui_vb(_weights, bias);
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}
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epoch++;
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if (epoch > max_epoch) {
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break;
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}
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}
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}
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void MLPPCLogLogReg::mle(real_t learning_rate, int max_epoch, bool ui) {
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MLPPActivation avn;
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MLPPReg regularization;
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real_t cost_prev = 0;
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int epoch = 1;
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forward_pass();
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while (true) {
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cost_prev = cost(_y_hat, _output_set);
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Ref<MLPPVector> error = _y_hat->subn(_output_set);
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_weights->add(_input_set->transposen()->mult_vec(error->hadamard_productn(avn.cloglog_derivv(_z)))->scalar_multiplyn(learning_rate / _n));
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_weights = regularization.reg_weightsv(_weights, _lambda, _alpha, _reg);
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// Calculating the bias gradients
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bias += learning_rate * error->hadamard_productn(avn.cloglog_derivv(_z))->sum_elements() / _n;
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forward_pass();
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if (ui) {
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MLPPUtilities::cost_info(epoch, cost_prev, cost(_y_hat, _output_set));
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MLPPUtilities::print_ui_vb(_weights, bias);
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}
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epoch++;
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if (epoch > max_epoch) {
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break;
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}
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}
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}
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void MLPPCLogLogReg::sgd(real_t learning_rate, int max_epoch, bool p_) {
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MLPPReg regularization;
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real_t cost_prev = 0;
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int epoch = 1;
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std::random_device rd;
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std::default_random_engine generator(rd());
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std::uniform_int_distribution<int> distribution(0, int(_n - 1));
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forward_pass();
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Ref<MLPPVector> input_set_row_tmp;
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input_set_row_tmp.instance();
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input_set_row_tmp->resize(_input_set->size().x);
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Ref<MLPPVector> y_hat_row_tmp;
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y_hat_row_tmp.instance();
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y_hat_row_tmp->resize(1);
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Ref<MLPPVector> output_set_row_tmp;
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output_set_row_tmp.instance();
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output_set_row_tmp->resize(1);
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while (true) {
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int output_index = distribution(generator);
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_input_set->row_get_into_mlpp_vector(output_index, input_set_row_tmp);
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real_t output_element_set = _output_set->element_get(output_index);
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output_set_row_tmp->element_set(0, output_element_set);
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real_t y_hat = evaluatev(input_set_row_tmp);
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y_hat_row_tmp->element_set(0, y_hat);
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real_t z = propagatev(input_set_row_tmp);
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cost_prev = cost(y_hat_row_tmp, output_set_row_tmp);
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real_t error = y_hat - output_element_set;
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// Weight Updation
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_weights->sub(input_set_row_tmp->scalar_multiplyn(learning_rate * error * Math::exp(z - Math::exp(z))));
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_weights = regularization.reg_weightsv(_weights, _lambda, _alpha, _reg);
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// Bias updation
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bias -= learning_rate * error * exp(z - exp(z));
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y_hat = evaluatev(input_set_row_tmp);
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if (p_) {
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MLPPUtilities::cost_info(epoch, cost_prev, cost(y_hat_row_tmp, output_set_row_tmp));
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MLPPUtilities::print_ui_vb(_weights, bias);
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}
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epoch++;
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if (epoch > max_epoch) {
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break;
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}
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}
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forward_pass();
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}
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void MLPPCLogLogReg::mbgd(real_t learning_rate, int max_epoch, int mini_batch_size, bool p_) {
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MLPPActivation avn;
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MLPPReg regularization;
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real_t cost_prev = 0;
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int epoch = 1;
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// Creating the mini-batches
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int n_mini_batch = _n / mini_batch_size;
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MLPPUtilities::CreateMiniBatchMVBatch batches = MLPPUtilities::create_mini_batchesmv(_input_set, _output_set, n_mini_batch);
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while (true) {
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for (int i = 0; i < n_mini_batch; i++) {
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Ref<MLPPMatrix> current_input_batch = batches.input_sets[i];
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Ref<MLPPVector> current_output_batch = batches.output_sets[i];
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Ref<MLPPVector> y_hat = evaluatem(current_input_batch);
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Ref<MLPPVector> z = propagatem(current_input_batch);
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cost_prev = cost(y_hat, current_output_batch);
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Ref<MLPPVector> error = y_hat->subn(current_output_batch);
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// Calculating the weight gradients
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_weights->sub(current_input_batch->transposen()->mult_vec(error->hadamard_productn(avn.cloglog_derivv(z)))->scalar_multiplyn(learning_rate / _n));
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_weights = regularization.reg_weightsv(_weights, _lambda, _alpha, _reg);
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// Calculating the bias gradients
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bias -= learning_rate * error->hadamard_productn(avn.cloglog_derivv(z))->sum_elements() / _n;
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forward_pass();
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y_hat = evaluatem(current_input_batch);
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if (p_) {
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MLPPUtilities::cost_info(epoch, cost_prev, cost(y_hat, current_output_batch));
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MLPPUtilities::print_ui_vb(_weights, bias);
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}
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}
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epoch++;
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if (epoch > max_epoch) {
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break;
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}
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}
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forward_pass();
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}
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real_t MLPPCLogLogReg::score() {
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MLPPUtilities util;
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return util.performance_vec(_y_hat, _output_set);
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}
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MLPPCLogLogReg::MLPPCLogLogReg(const Ref<MLPPMatrix> &p_input_set, const Ref<MLPPVector> &p_output_set, MLPPReg::RegularizationType p_reg, real_t p_lambda, real_t p_alpha) {
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_input_set = p_input_set;
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_output_set = p_output_set;
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_n = _input_set->size().y;
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_k = _input_set->size().x;
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_reg = p_reg;
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_lambda = p_lambda;
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_alpha = p_alpha;
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_y_hat.instance();
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_y_hat->resize(_n);
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MLPPUtilities utilities;
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_weights.instance();
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_weights->resize(_k);
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utilities.weight_initializationv(_weights);
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bias = utilities.bias_initializationr();
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}
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MLPPCLogLogReg::MLPPCLogLogReg() {
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}
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MLPPCLogLogReg::~MLPPCLogLogReg() {
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}
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real_t MLPPCLogLogReg::cost(const Ref<MLPPVector> &y_hat, const Ref<MLPPVector> &y) {
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MLPPReg regularization;
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MLPPCost mlpp_cost;
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return mlpp_cost.msev(y_hat, y) + regularization.reg_termv(_weights, _lambda, _alpha, _reg);
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}
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real_t MLPPCLogLogReg::evaluatev(const Ref<MLPPVector> &x) {
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MLPPActivation avn;
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return avn.cloglog_normr(_weights->dot(x) + bias);
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}
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real_t MLPPCLogLogReg::propagatev(const Ref<MLPPVector> &x) {
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return _weights->dot(x) + bias;
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}
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Ref<MLPPVector> MLPPCLogLogReg::evaluatem(const Ref<MLPPMatrix> &X) {
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MLPPActivation avn;
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return avn.cloglog_normv(X->mult_vec(_weights)->scalar_addn(bias));
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}
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Ref<MLPPVector> MLPPCLogLogReg::propagatem(const Ref<MLPPMatrix> &X) {
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return X->mult_vec(_weights)->scalar_addn(bias);
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}
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// cloglog ( wTx + b )
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void MLPPCLogLogReg::forward_pass() {
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MLPPActivation avn;
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_z = propagatem(_input_set);
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_y_hat = avn.cloglog_normv(_z);
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}
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void MLPPCLogLogReg::_bind_methods() {
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}
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