mirror of
https://github.com/lxsang/antd-lua-plugin
synced 2024-12-30 19:18:21 +01:00
169 lines
5.7 KiB
C++
169 lines
5.7 KiB
C++
#include <vector>
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#include "fann_test.h"
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using namespace std;
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void FannTest::SetUp() {
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//ensure random generator is seeded at a known value to ensure reproducible results
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srand(0);
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fann_disable_seed_rand();
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}
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void FannTest::TearDown() {
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net.destroy();
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data.destroy_train();
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}
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void FannTest::AssertCreate(neural_net &net, unsigned int numLayers, const unsigned int *layers,
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unsigned int neurons, unsigned int connections) {
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EXPECT_EQ(numLayers, net.get_num_layers());
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EXPECT_EQ(layers[0], net.get_num_input());
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EXPECT_EQ(layers[numLayers - 1], net.get_num_output());
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unsigned int *layers_res = new unsigned int[numLayers];
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net.get_layer_array(layers_res);
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for (unsigned int i = 0; i < numLayers; i++) {
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EXPECT_EQ(layers[i], layers_res[i]);
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}
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delete layers_res;
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EXPECT_EQ(neurons, net.get_total_neurons());
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EXPECT_EQ(connections, net.get_total_connections());
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AssertWeights(net, -0.09, 0.09, 0.0);
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}
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void FannTest::AssertCreateAndCopy(neural_net &net, unsigned int numLayers, const unsigned int *layers, unsigned int neurons,
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unsigned int connections) {
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AssertCreate(net, numLayers, layers, neurons, connections);
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neural_net net_copy(net);
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AssertCreate(net_copy, numLayers, layers, neurons, connections);
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}
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void FannTest::AssertWeights(neural_net &net, fann_type min, fann_type max, fann_type avg) {
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connection *connections = new connection[net.get_total_connections()];
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net.get_connection_array(connections);
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fann_type minWeight = connections[0].weight;
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fann_type maxWeight = connections[0].weight;
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fann_type totalWeight = 0.0;
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for (int i = 1; i < net.get_total_connections(); ++i) {
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if (connections[i].weight < minWeight)
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minWeight = connections[i].weight;
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if (connections[i].weight > maxWeight)
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maxWeight = connections[i].weight;
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totalWeight += connections[i].weight;
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}
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EXPECT_NEAR(min, minWeight, 0.05);
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EXPECT_NEAR(max, maxWeight, 0.05);
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EXPECT_NEAR(avg, totalWeight / (fann_type) net.get_total_connections(), 0.5);
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}
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TEST_F(FannTest, CreateStandardThreeLayers) {
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neural_net net(LAYER, 3, 2, 3, 4);
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AssertCreateAndCopy(net, 3, (const unsigned int[]) {2, 3, 4}, 11, 25);
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}
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TEST_F(FannTest, CreateStandardThreeLayersUsingCreateMethod) {
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ASSERT_TRUE(net.create_standard(3, 2, 3, 4));
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unsigned int layers[] = {2, 3, 4};
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AssertCreateAndCopy(net, 3, layers, 11, 25);
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}
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TEST_F(FannTest, CreateStandardFourLayersArray) {
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unsigned int layers[] = {2, 3, 4, 5};
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neural_net net(LAYER, 4, layers);
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AssertCreateAndCopy(net, 4, layers, 17, 50);
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}
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TEST_F(FannTest, CreateStandardFourLayersArrayUsingCreateMethod) {
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unsigned int layers[] = {2, 3, 4, 5};
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ASSERT_TRUE(net.create_standard_array(4, layers));
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AssertCreateAndCopy(net, 4, layers, 17, 50);
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}
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TEST_F(FannTest, CreateStandardFourLayersVector) {
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vector<unsigned int> layers{2, 3, 4, 5};
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neural_net net(LAYER, layers.begin(), layers.end());
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AssertCreateAndCopy(net, 4, layers.data(), 17, 50);
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}
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TEST_F(FannTest, CreateSparseFourLayers) {
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neural_net net(0.5, 4, 2, 3, 4, 5);
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AssertCreateAndCopy(net, 4, (const unsigned int[]){2, 3, 4, 5}, 17, 31);
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}
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TEST_F(FannTest, CreateSparseFourLayersUsingCreateMethod) {
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ASSERT_TRUE(net.create_sparse(0.5f, 4, 2, 3, 4, 5));
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AssertCreateAndCopy(net, 4, (const unsigned int[]){2, 3, 4, 5}, 17, 31);
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}
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TEST_F(FannTest, CreateSparseArrayFourLayers) {
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unsigned int layers[] = {2, 3, 4, 5};
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neural_net net(0.5f, 4, layers);
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AssertCreateAndCopy(net, 4, layers, 17, 31);
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}
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TEST_F(FannTest, CreateSparseArrayFourLayersUsingCreateMethod) {
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unsigned int layers[] = {2, 3, 4, 5};
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ASSERT_TRUE(net.create_sparse_array(0.5f, 4, layers));
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AssertCreateAndCopy(net, 4, layers, 17, 31);
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}
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TEST_F(FannTest, CreateSparseArrayWithMinimalConnectivity) {
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unsigned int layers[] = {2, 2, 2};
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neural_net net(0.01f, 3, layers);
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AssertCreateAndCopy(net, 3, layers, 8, 8);
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}
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TEST_F(FannTest, CreateShortcutFourLayers) {
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neural_net net(SHORTCUT, 4, 2, 3, 4, 5);
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AssertCreateAndCopy(net, 4, (const unsigned int[]){2, 3, 4, 5}, 15, 83);
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EXPECT_EQ(SHORTCUT, net.get_network_type());
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}
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TEST_F(FannTest, CreateShortcutFourLayersUsingCreateMethod) {
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ASSERT_TRUE(net.create_shortcut(4, 2, 3, 4, 5));
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AssertCreateAndCopy(net, 4, (const unsigned int[]){2, 3, 4, 5}, 15, 83);
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EXPECT_EQ(SHORTCUT, net.get_network_type());
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}
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TEST_F(FannTest, CreateShortcutArrayFourLayers) {
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unsigned int layers[] = {2, 3, 4, 5};
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neural_net net(SHORTCUT, 4, layers);
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AssertCreateAndCopy(net, 4, layers, 15, 83);
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EXPECT_EQ(SHORTCUT, net.get_network_type());
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}
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TEST_F(FannTest, CreateShortcutArrayFourLayersUsingCreateMethod) {
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unsigned int layers[] = {2, 3, 4, 5};
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ASSERT_TRUE(net.create_shortcut_array(4, layers));
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AssertCreateAndCopy(net, 4, layers, 15, 83);
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EXPECT_EQ(SHORTCUT, net.get_network_type());
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}
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TEST_F(FannTest, CreateFromFile) {
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ASSERT_TRUE(net.create_standard(3, 2, 3, 4));
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neural_net netToBeSaved(LAYER, 3, 2, 3, 4);
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ASSERT_TRUE(netToBeSaved.save("tmpfile"));
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neural_net netToBeLoaded("tmpfile");
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AssertCreateAndCopy(netToBeLoaded, 3, (const unsigned int[]){2, 3, 4}, 11, 25);
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}
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TEST_F(FannTest, CreateFromFileUsingCreateMethod) {
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ASSERT_TRUE(net.create_standard(3, 2, 3, 4));
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neural_net inputNet(LAYER, 3, 2, 3, 4);
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ASSERT_TRUE(inputNet.save("tmpfile"));
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ASSERT_TRUE(net.create_from_file("tmpfile"));
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AssertCreateAndCopy(net, 3, (const unsigned int[]){2, 3, 4}, 11, 25);
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}
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TEST_F(FannTest, RandomizeWeights) {
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neural_net net(LAYER, 2, 20, 10);
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net.randomize_weights(-1.0, 1.0);
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AssertWeights(net, -1.0, 1.0, 0);
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}
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