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https://github.com/rmontanana/mdlp.git
synced 2025-08-15 23:45:57 +00:00
Fix int type
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@@ -20,7 +20,7 @@ namespace mdlp {
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{
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auto num_elements = X_.numel();
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samples_t X(X_.data_ptr<precision_t>(), X_.data_ptr<precision_t>() + num_elements);
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labels_t y(y_.data_ptr<int64_t>(), y_.data_ptr<int64_t>() + num_elements);
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labels_t y(y_.data_ptr<int>(), y_.data_ptr<int>() + num_elements);
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fit(X, y);
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}
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torch::Tensor Discretizer::transform_t(torch::Tensor& X_)
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@@ -28,14 +28,14 @@ namespace mdlp {
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auto num_elements = X_.numel();
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samples_t X(X_.data_ptr<float>(), X_.data_ptr<float>() + num_elements);
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auto result = transform(X);
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return torch::tensor(result, torch::kInt64);
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return torch::tensor(result, torch::kInt32);
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}
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torch::Tensor Discretizer::fit_transform_t(torch::Tensor& X_, torch::Tensor& y_)
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{
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auto num_elements = X_.numel();
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samples_t X(X_.data_ptr<precision_t>(), X_.data_ptr<precision_t>() + num_elements);
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labels_t y(y_.data_ptr<int64_t>(), y_.data_ptr<int64_t>() + num_elements);
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labels_t y(y_.data_ptr<int>(), y_.data_ptr<int>() + num_elements);
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auto result = fit_transform(X, y);
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return torch::tensor(result, torch::kInt64);
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return torch::tensor(result, torch::kInt32);
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}
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}
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@@ -139,12 +139,12 @@ void process_file(const string& path, const string& file_name, bool class_last,
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std::cout << std::fixed << std::setprecision(1) << X[0][i] << " " << data[i] << std::endl;
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}
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auto Xt = torch::tensor(X[0], torch::kFloat32);
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auto yt = torch::tensor(y, torch::kInt64);
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auto yt = torch::tensor(y, torch::kInt32);
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//test.fit_t(Xt, yt);
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auto result = test.fit_transform_t(Xt, yt);
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std::cout << "Transformed data (torch)...: " << std::endl;
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for (int i = 130; i < 135; i++) {
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std::cout << std::fixed << std::setprecision(1) << Xt[i].item<float>() << " " << result[i].item<int64_t>() << std::endl;
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std::cout << std::fixed << std::setprecision(1) << Xt[i].item<float>() << " " << result[i].item<int>() << std::endl;
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}
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auto disc = mdlp::BinDisc(3);
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auto res_v = disc.fit_transform(X[0], y);
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@@ -152,7 +152,7 @@ void process_file(const string& path, const string& file_name, bool class_last,
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auto res_t = disc.transform_t(Xt);
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std::cout << "Transformed data (BinDisc)...: " << std::endl;
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for (int i = 130; i < 135; i++) {
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std::cout << std::fixed << std::setprecision(1) << Xt[i].item<float>() << " " << res_v[i] << " " << res_t[i].item<int64_t>() << std::endl;
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std::cout << std::fixed << std::setprecision(1) << Xt[i].item<float>() << " " << res_v[i] << " " << res_t[i].item<int>() << std::endl;
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}
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}
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@@ -335,10 +335,10 @@ namespace mdlp {
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auto Xtt = fit_transform(X[0], file.getY());
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EXPECT_EQ(expected, Xtt);
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auto Xt_t = torch::tensor(X[0], torch::kFloat32);
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auto y_t = torch::tensor(file.getY(), torch::kInt64);
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auto y_t = torch::tensor(file.getY(), torch::kInt32);
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auto Xtt_t = fit_transform_t(Xt_t, y_t);
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for (int i = 0; i < expected.size(); i++)
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EXPECT_EQ(expected[i], Xtt_t[i].item<int64_t>());
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EXPECT_EQ(expected[i], Xtt_t[i].item<int>());
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}
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TEST_F(TestBinDisc4Q, irisQuantile)
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{
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@@ -352,13 +352,13 @@ namespace mdlp {
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auto Xtt = fit_transform(X[0], file.getY());
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EXPECT_EQ(expected, Xtt);
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auto Xt_t = torch::tensor(X[0], torch::kFloat32);
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auto y_t = torch::tensor(file.getY(), torch::kInt64);
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auto y_t = torch::tensor(file.getY(), torch::kInt32);
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auto Xtt_t = fit_transform_t(Xt_t, y_t);
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for (int i = 0; i < expected.size(); i++)
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EXPECT_EQ(expected[i], Xtt_t[i].item<int64_t>());
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EXPECT_EQ(expected[i], Xtt_t[i].item<int>());
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fit_t(Xt_t, y_t);
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auto Xt_t2 = transform_t(Xt_t);
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for (int i = 0; i < expected.size(); i++)
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EXPECT_EQ(expected[i], Xt_t2[i].item<int64_t>());
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EXPECT_EQ(expected[i], Xt_t2[i].item<int>());
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}
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}
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