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https://github.com/davidalbertonogueira/MLP.git
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More test changes.
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@@ -43,10 +43,12 @@ UNIT(LearnAND) {
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for (const auto & training_sample : training_sample_set_with_bias) {
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std::vector<double> output;
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my_mlp.GetOutput(training_sample.input_vector(), &output);
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bool predicted_output = output[0] > 0.5 ? true : false;
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bool correct_output = training_sample.output_vector()[0] > 0.5 ? true : false;
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for (int i = 0; i < num_outputs; i++) {
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bool predicted_output = output[i] > 0.5 ? true : false;
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bool correct_output = training_sample.output_vector()[i] > 0.5 ? true : false;
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ASSERT_TRUE(predicted_output == correct_output);
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}
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}
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std::cout << "Trained with success." << std::endl;
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std::cout << std::endl;
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}
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@@ -82,10 +84,12 @@ UNIT(LearnNAND) {
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for (const auto & training_sample : training_sample_set_with_bias) {
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std::vector<double> output;
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my_mlp.GetOutput(training_sample.input_vector(), &output);
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bool predicted_output = output[0] > 0.5 ? true : false;
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bool correct_output = training_sample.output_vector()[0] > 0.5 ? true : false;
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for (int i = 0; i < num_outputs; i++) {
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bool predicted_output = output[i] > 0.5 ? true : false;
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bool correct_output = training_sample.output_vector()[i] > 0.5 ? true : false;
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ASSERT_TRUE(predicted_output == correct_output);
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}
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}
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std::cout << "Trained with success." << std::endl;
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std::cout << std::endl;
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}
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@@ -121,10 +125,12 @@ UNIT(LearnOR) {
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for (const auto & training_sample : training_sample_set_with_bias) {
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std::vector<double> output;
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my_mlp.GetOutput(training_sample.input_vector(), &output);
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bool predicted_output = output[0] > 0.5 ? true : false;
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bool correct_output = training_sample.output_vector()[0] > 0.5 ? true : false;
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for (int i = 0; i < num_outputs; i++) {
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bool predicted_output = output[i] > 0.5 ? true : false;
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bool correct_output = training_sample.output_vector()[i] > 0.5 ? true : false;
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ASSERT_TRUE(predicted_output == correct_output);
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}
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}
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std::cout << "Trained with success." << std::endl;
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std::cout << std::endl;
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}
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@@ -160,10 +166,12 @@ UNIT(LearnNOR) {
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for (const auto & training_sample : training_sample_set_with_bias) {
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std::vector<double> output;
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my_mlp.GetOutput(training_sample.input_vector(), &output);
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bool predicted_output = output[0] > 0.5 ? true : false;
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bool correct_output = training_sample.output_vector()[0] > 0.5 ? true : false;
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for (int i = 0; i < num_outputs; i++) {
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bool predicted_output = output[i] > 0.5 ? true : false;
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bool correct_output = training_sample.output_vector()[i] > 0.5 ? true : false;
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ASSERT_TRUE(predicted_output == correct_output);
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}
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}
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std::cout << "Trained with success." << std::endl;
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std::cout << std::endl;
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}
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@@ -197,10 +205,12 @@ UNIT(LearnXOR) {
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for (const auto & training_sample : training_sample_set_with_bias) {
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std::vector<double> output;
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my_mlp.GetOutput(training_sample.input_vector(), &output);
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bool predicted_output = output[0] > 0.5 ? true : false;
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bool correct_output = training_sample.output_vector()[0] > 0.5 ? true : false;
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for (int i = 0; i < num_outputs; i++) {
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bool predicted_output = output[i] > 0.5 ? true : false;
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bool correct_output = training_sample.output_vector()[i] > 0.5 ? true : false;
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ASSERT_TRUE(predicted_output == correct_output);
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}
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}
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std::cout << "Trained with success." << std::endl;
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std::cout << std::endl;
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}
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@@ -232,10 +242,12 @@ UNIT(LearnNOT) {
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for (const auto & training_sample : training_sample_set_with_bias) {
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std::vector<double> output;
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my_mlp.GetOutput(training_sample.input_vector(), &output);
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bool predicted_output = output[0] > 0.5 ? true : false;
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bool correct_output = training_sample.output_vector()[0] > 0.5 ? true : false;
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for (int i = 0; i < num_outputs; i++) {
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bool predicted_output = output[i] > 0.5 ? true : false;
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bool correct_output = training_sample.output_vector()[i] > 0.5 ? true : false;
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ASSERT_TRUE(predicted_output == correct_output);
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}
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}
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std::cout << "Trained with success." << std::endl;
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std::cout << std::endl;
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}
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@@ -269,15 +281,16 @@ UNIT(LearnX1) {
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for (const auto & training_sample : training_sample_set_with_bias) {
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std::vector<double> output;
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my_mlp.GetOutput(training_sample.input_vector(), &output);
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bool predicted_output = output[0] > 0.5 ? true : false;
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bool correct_output = training_sample.output_vector()[0] > 0.5 ? true : false;
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for (int i = 0; i < num_outputs; i++) {
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bool predicted_output = output[i] > 0.5 ? true : false;
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bool correct_output = training_sample.output_vector()[i] > 0.5 ? true : false;
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ASSERT_TRUE(predicted_output == correct_output);
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}
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}
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std::cout << "Trained with success." << std::endl;
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std::cout << std::endl;
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}
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UNIT(LearnX2) {
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std::cout << "Train X2 function with mlp." << std::endl;
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@@ -307,10 +320,12 @@ UNIT(LearnX2) {
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for (const auto & training_sample : training_sample_set_with_bias) {
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std::vector<double> output;
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my_mlp.GetOutput(training_sample.input_vector(), &output);
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bool predicted_output = output[0] > 0.5 ? true : false;
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bool correct_output = training_sample.output_vector()[0] > 0.5 ? true : false;
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for (int i = 0; i < num_outputs; i++) {
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bool predicted_output = output[i] > 0.5 ? true : false;
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bool correct_output = training_sample.output_vector()[i] > 0.5 ? true : false;
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ASSERT_TRUE(predicted_output == correct_output);
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}
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}
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std::cout << "Trained with success." << std::endl;
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std::cout << std::endl;
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}
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