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https://github.com/rmontanana/mdlp.git
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310 lines
11 KiB
C++
310 lines
11 KiB
C++
#include "gtest/gtest.h"
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#include "../Metrics.h"
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#include "../CPPFImdlp.h"
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#include <fstream>
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#include <iostream>
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#include "ArffFiles.h"
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#define EXPECT_THROW_WITH_MESSAGE(stmt, etype, whatstring) EXPECT_THROW( \
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try { \
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stmt; \
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} catch (const etype& ex) { \
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EXPECT_EQ(whatstring, std::string(ex.what())); \
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throw; \
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} \
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, etype)
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namespace mdlp {
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class TestFImdlp : public CPPFImdlp, public testing::Test {
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public:
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precision_t precision = 0.000001f;
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TestFImdlp() : CPPFImdlp() {}
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string data_path;
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void SetUp() override {
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X = {4.7f, 4.7f, 4.7f, 4.7f, 4.8f, 4.8f, 4.8f, 4.8f, 4.9f, 4.95f, 5.7f, 5.3f, 5.2f, 5.1f, 5.0f, 5.6f, 5.1f,
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6.0f, 5.1f, 5.9f};
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y = {1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 1, 2, 2, 2, 2, 2};
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fit(X, y);
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data_path = set_data_path();
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}
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static string set_data_path() {
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string path = "../datasets/";
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ifstream file(path + "iris.arff");
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if (file.is_open()) {
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file.close();
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return path;
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}
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return "../../tests/datasets/";
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}
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void checkSortedVector() {
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indices_t testSortedIndices = sortIndices(X, y);
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precision_t prev = X[testSortedIndices[0]];
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for (unsigned long i = 0; i < X.size(); ++i) {
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EXPECT_EQ(testSortedIndices[i], indices[i]);
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EXPECT_LE(prev, X[testSortedIndices[i]]);
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prev = X[testSortedIndices[i]];
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}
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}
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void checkCutPoints(cutPoints_t &computed, cutPoints_t &expected) const {
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EXPECT_EQ(computed.size(), expected.size());
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for (unsigned long i = 0; i < computed.size(); i++) {
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cout << "(" << computed[i] << ", " << expected[i] << ") ";
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EXPECT_NEAR(computed[i], expected[i], precision);
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}
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}
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bool test_result(const samples_t &X_, size_t cut, float midPoint, size_t limit, const string &title) {
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pair<precision_t, size_t> result;
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labels_t y_ = {0, 1, 2, 3, 4, 5, 6, 7, 8, 9};
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X = X_;
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y = y_;
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indices = sortIndices(X, y);
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cout << "* " << title << endl;
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result = valueCutPoint(0, cut, 10);
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EXPECT_NEAR(result.first, midPoint, precision);
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EXPECT_EQ(result.second, limit);
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return true;
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}
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void test_dataset(CPPFImdlp &test, const string &filename, vector<cutPoints_t> &expected,
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vector<int> &depths) const {
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ArffFiles file;
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file.load(data_path + filename + ".arff", true);
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vector<samples_t> &X = file.getX();
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labels_t &y = file.getY();
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auto attributes = file.getAttributes();
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for (auto feature = 0; feature < attributes.size(); feature++) {
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test.fit(X[feature], y);
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EXPECT_EQ(test.get_depth(), depths[feature]);
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auto computed = test.getCutPoints();
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cout << "Feature " << feature << ": ";
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checkCutPoints(computed, expected[feature]);
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cout << endl;
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}
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}
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};
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TEST_F(TestFImdlp, FitErrorEmptyDataset) {
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X = samples_t();
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y = labels_t();
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EXPECT_THROW_WITH_MESSAGE(fit(X, y), invalid_argument, "X and y must have at least one element");
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}
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TEST_F(TestFImdlp, FitErrorDifferentSize) {
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X = {1, 2, 3};
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y = {1, 2};
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EXPECT_THROW_WITH_MESSAGE(fit(X, y), invalid_argument, "X and y must have the same size");
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}
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TEST_F(TestFImdlp, FitErrorMinLengtMaxDepth) {
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auto testLength = CPPFImdlp(2, 10, 0);
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auto testDepth = CPPFImdlp(3, 0, 0);
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X = {1, 2, 3};
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y = {1, 2, 3};
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EXPECT_THROW_WITH_MESSAGE(testLength.fit(X, y), invalid_argument, "min_length must be greater than 2");
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EXPECT_THROW_WITH_MESSAGE(testDepth.fit(X, y), invalid_argument, "max_depth must be greater than 0");
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}
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TEST_F(TestFImdlp, JoinFit) {
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samples_t X_ = {1, 2, 2, 3, 4, 2, 3};
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labels_t y_ = {0, 0, 1, 2, 3, 4, 5};
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cutPoints_t expected = {1.5f, 2.5f};
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fit(X_, y_);
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auto computed = getCutPoints();
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EXPECT_EQ(computed.size(), expected.size());
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checkCutPoints(computed, expected);
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}
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TEST_F(TestFImdlp, FitErrorMaxCutPoints) {
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auto testmin = CPPFImdlp(2, 10, -1);
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auto testmax = CPPFImdlp(3, 0, 200);
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X = {1, 2, 3};
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y = {1, 2, 3};
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EXPECT_THROW_WITH_MESSAGE(testmin.fit(X, y), invalid_argument, "wrong proposed num_cuts value");
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EXPECT_THROW_WITH_MESSAGE(testmax.fit(X, y), invalid_argument, "wrong proposed num_cuts value");
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}
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TEST_F(TestFImdlp, SortIndices) {
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X = {5.7f, 5.3f, 5.2f, 5.1f, 5.0f, 5.6f, 5.1f, 6.0f, 5.1f, 5.9f};
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y = {1, 1, 1, 1, 1, 2, 2, 2, 2, 2};
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indices = {4, 3, 6, 8, 2, 1, 5, 0, 9, 7};
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checkSortedVector();
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X = {5.77f, 5.88f, 5.99f};
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y = {1, 2, 1};
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indices = {0, 1, 2};
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checkSortedVector();
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X = {5.33f, 5.22f, 5.11f};
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y = {1, 2, 1};
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indices = {2, 1, 0};
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checkSortedVector();
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X = {5.33f, 5.22f, 5.33f};
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y = {2, 2, 1};
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indices = {1, 2, 0};
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}
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TEST_F(TestFImdlp, TestShortDatasets) {
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vector<precision_t> computed;
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X = {1};
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y = {1};
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fit(X, y);
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computed = getCutPoints();
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EXPECT_EQ(computed.size(), 0);
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X = {1, 3};
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y = {1, 2};
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fit(X, y);
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computed = getCutPoints();
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EXPECT_EQ(computed.size(), 0);
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X = {2, 4};
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y = {1, 2};
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fit(X, y);
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computed = getCutPoints();
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EXPECT_EQ(computed.size(), 0);
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X = {1, 2, 3};
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y = {1, 2, 2};
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fit(X, y);
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computed = getCutPoints();
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EXPECT_EQ(computed.size(), 1);
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EXPECT_NEAR(computed[0], 1.5, precision);
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}
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TEST_F(TestFImdlp, TestArtificialDataset) {
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fit(X, y);
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cutPoints_t expected = {5.05f};
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vector<precision_t> computed = getCutPoints();
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EXPECT_EQ(computed.size(), expected.size());
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for (unsigned long i = 0; i < computed.size(); i++) {
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EXPECT_NEAR(computed[i], expected[i], precision);
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}
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}
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TEST_F(TestFImdlp, TestIris) {
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vector<cutPoints_t> expected = {
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{5.45f, 5.75f},
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{2.75f, 2.85f, 2.95f, 3.05f, 3.35f},
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{2.45f, 4.75f, 5.05f},
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{0.8f, 1.75f}
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};
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vector<int> depths = {3, 5, 4, 3};
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auto test = CPPFImdlp();
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test_dataset(test, "iris", expected, depths);
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}
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TEST_F(TestFImdlp, ComputeCutPointsGCase) {
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cutPoints_t expected;
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expected = {1.5};
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samples_t X_ = {0, 1, 2, 2, 2};
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labels_t y_ = {1, 1, 1, 2, 2};
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fit(X_, y_);
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auto computed = getCutPoints();
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checkCutPoints(computed, expected);
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}
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TEST_F(TestFImdlp, ValueCutPoint) {
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// Case titles as stated in the doc
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samples_t X1a{3.1f, 3.2f, 3.3f, 3.4f, 3.5f, 3.6f, 3.7f, 3.8f, 3.9f, 4.0f};
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test_result(X1a, 6, 7.3f / 2, 6, "1a");
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samples_t X2a = {3.1f, 3.2f, 3.3f, 3.4f, 3.7f, 3.7f, 3.7f, 3.8f, 3.9f, 4.0f};
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test_result(X2a, 6, 7.1f / 2, 4, "2a");
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samples_t X2b = {3.7f, 3.7f, 3.7f, 3.7f, 3.7f, 3.7f, 3.7f, 3.8f, 3.9f, 4.0f};
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test_result(X2b, 6, 7.5f / 2, 7, "2b");
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samples_t X3a = {3.f, 3.2f, 3.3f, 3.4f, 3.7f, 3.7f, 3.7f, 3.8f, 3.9f, 4.0f};
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test_result(X3a, 4, 7.1f / 2, 4, "3a");
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samples_t X3b = {3.1f, 3.2f, 3.3f, 3.4f, 3.7f, 3.7f, 3.7f, 3.7f, 3.7f, 3.7f};
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test_result(X3b, 4, 7.1f / 2, 4, "3b");
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samples_t X4a = {3.1f, 3.2f, 3.7f, 3.7f, 3.7f, 3.7f, 3.7f, 3.7f, 3.9f, 4.0f};
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test_result(X4a, 4, 6.9f / 2, 2, "4a");
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samples_t X4b = {3.7f, 3.7f, 3.7f, 3.7f, 3.7f, 3.7f, 3.7f, 3.8f, 3.9f, 4.0f};
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test_result(X4b, 4, 7.5f / 2, 7, "4b");
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samples_t X4c = {3.1f, 3.2f, 3.7f, 3.7f, 3.7f, 3.7f, 3.7f, 3.7f, 3.7f, 3.7f};
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test_result(X4c, 4, 6.9f / 2, 2, "4c");
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}
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TEST_F(TestFImdlp, MaxDepth) {
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// Set max_depth to 1
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auto test = CPPFImdlp(3, 1, 0);
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vector<cutPoints_t> expected = {
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{5.45f},
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{3.35f},
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{2.45f},
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{0.8f}
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};
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vector<int> depths = {1, 1, 1, 1};
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test_dataset(test, "iris", expected, depths);
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}
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TEST_F(TestFImdlp, MinLength) {
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auto test = CPPFImdlp(75, 100, 0);
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// Set min_length to 75
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vector<cutPoints_t> expected = {
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{5.45f, 5.75f},
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{2.85f, 3.35f},
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{2.45f, 4.75f},
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{0.8f, 1.75f}
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};
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vector<int> depths = {3, 2, 2, 2};
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test_dataset(test, "iris", expected, depths);
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}
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TEST_F(TestFImdlp, MinLengthMaxDepth) {
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// Set min_length to 75
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auto test = CPPFImdlp(75, 2, 0);
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vector<cutPoints_t> expected = {
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{5.45f, 5.75f},
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{2.85f, 3.35f},
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{2.45f, 4.75f},
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{0.8f, 1.75f}
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};
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vector<int> depths = {2, 2, 2, 2};
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test_dataset(test, "iris", expected, depths);
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}
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TEST_F(TestFImdlp, MaxCutPointsInteger) {
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// Set min_length to 75
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auto test = CPPFImdlp(75, 2, 1);
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vector<cutPoints_t> expected = {
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{5.45f},
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{2.85f},
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{2.45f},
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{0.8f}
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};
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vector<int> depths = {2, 2, 2, 2};
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test_dataset(test, "iris", expected, depths);
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}
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TEST_F(TestFImdlp, MaxCutPointsFloat) {
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// Set min_length to 75
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auto test = CPPFImdlp(75, 2, 0.2f);
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vector<cutPoints_t> expected = {
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{5.45f, 5.75f},
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{2.85f, 3.35f},
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{2.45f, 4.75f},
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{0.8f, 1.75f}
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};
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vector<int> depths = {2, 2, 2, 2};
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test_dataset(test, "iris", expected, depths);
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}
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TEST_F(TestFImdlp, ProposedCuts) {
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vector<pair<float, size_t>> proposed_list = {{0.1f, 2},
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{0.5f, 10},
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{0.07f, 1},
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{1.0f, 1},
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{2.0f, 2}};
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size_t expected;
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size_t computed;
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for (auto proposed_item: proposed_list) {
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tie(proposed_cuts, expected) = proposed_item;
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computed = compute_max_num_cut_points();
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ASSERT_EQ(expected, computed);
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}
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}
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}
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