Add tests to reach 90% coverage
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@@ -1,3 +1,4 @@
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#include <type_traits>
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#include <catch2/catch_test_macros.hpp>
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#include <catch2/catch_approx.hpp>
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#include <catch2/generators/catch_generators.hpp>
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@@ -98,6 +99,30 @@ TEST_CASE("BoostAODE feature_select CFS", "[Models]")
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REQUIRE(clf.getNotes()[0] == "Used features in initialization: 6 of 9 with CFS");
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REQUIRE(clf.getNotes()[1] == "Number of models: 9");
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}
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TEST_CASE("BoostAODE feature_select IWSS", "[Models]")
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{
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auto raw = RawDatasets("glass", true);
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auto clf = bayesnet::BoostAODE();
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clf.setHyperparameters({ {"select_features", "IWSS"}, {"threshold", 0.5 } });
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clf.fit(raw.Xv, raw.yv, raw.featuresv, raw.classNamev, raw.statesv);
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REQUIRE(clf.getNumberOfNodes() == 90);
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REQUIRE(clf.getNumberOfEdges() == 153);
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REQUIRE(clf.getNotes().size() == 2);
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REQUIRE(clf.getNotes()[0] == "Used features in initialization: 5 of 9 with IWSS");
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REQUIRE(clf.getNotes()[1] == "Number of models: 9");
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}
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TEST_CASE("BoostAODE feature_select FCBF", "[Models]")
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{
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auto raw = RawDatasets("glass", true);
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auto clf = bayesnet::BoostAODE();
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clf.setHyperparameters({ {"select_features", "FCBF"}, {"threshold", 1e-7 } });
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clf.fit(raw.Xv, raw.yv, raw.featuresv, raw.classNamev, raw.statesv);
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REQUIRE(clf.getNumberOfNodes() == 90);
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REQUIRE(clf.getNumberOfEdges() == 153);
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REQUIRE(clf.getNotes().size() == 2);
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REQUIRE(clf.getNotes()[0] == "Used features in initialization: 5 of 9 with FCBF");
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REQUIRE(clf.getNotes()[1] == "Number of models: 9");
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}
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TEST_CASE("BoostAODE test used features in train note and score", "[Models]")
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{
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auto raw = RawDatasets("diabetes", true);
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@@ -246,7 +271,7 @@ TEST_CASE("SPODELd dataset", "[Models]")
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{
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auto raw = RawDatasets("iris", false);
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auto clf = bayesnet::SPODELd(0);
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raw.dataset.to(torch::kFloat32);
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// raw.dataset.to(torch::kFloat32);
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clf.fit(raw.dataset, raw.featuresv, raw.classNamev, raw.statesv);
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auto score = clf.score(raw.Xt, raw.yt);
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clf.fit(raw.Xt, raw.yt, raw.featurest, raw.classNamet, raw.statest);
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