blob: c52ad38d7d3e5c312ff2af8b0cad651dbe0437a1 [file] [log] [blame]
/*
* Copyright (C) 2017 The Android Open Source Project
*
* Licensed under the Apache License, Version 2.0 (the "License");
* you may not use this file except in compliance with the License.
* You may obtain a copy of the License at
*
* http://www.apache.org/licenses/LICENSE-2.0
*
* Unless required by applicable law or agreed to in writing, software
* distributed under the License is distributed on an "AS IS" BASIS,
* WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
* See the License for the specific language governing permissions and
* limitations under the License.
*/
#include "smartselect/text-classification-model.h"
#include <fcntl.h>
#include <stdio.h>
#include <memory>
#include <string>
#include "base.h"
#include "gtest/gtest.h"
namespace libtextclassifier {
namespace {
std::string GetModelPath() {
return TEST_DATA_DIR "smartselection.model";
}
TEST(TextClassificationModelTest, SuggestSelection) {
const std::string model_path = GetModelPath();
int fd = open(model_path.c_str(), O_RDONLY);
std::unique_ptr<TextClassificationModel> model(
new TextClassificationModel(fd));
close(fd);
EXPECT_EQ(model->SuggestSelection(
"this afternoon Barack Obama gave a speech at", {15, 21}),
std::make_pair(15, 27));
// Try passing whole string.
// If more than 1 token is specified, we should return back what entered.
EXPECT_EQ(model->SuggestSelection("350 Third Street, Cambridge", {0, 27}),
std::make_pair(0, 27));
// Single letter.
EXPECT_EQ(std::make_pair(0, 1), model->SuggestSelection("a", {0, 1}));
// Single word.
EXPECT_EQ(std::make_pair(0, 4), model->SuggestSelection("asdf", {0, 4}));
}
TEST(TextClassificationModelTest, SuggestSelectionsAreSymmetric) {
const std::string model_path = GetModelPath();
int fd = open(model_path.c_str(), O_RDONLY);
std::unique_ptr<TextClassificationModel> model(
new TextClassificationModel(fd));
close(fd);
EXPECT_EQ(std::make_pair(0, 27),
model->SuggestSelection("350 Third Street, Cambridge", {0, 3}));
EXPECT_EQ(std::make_pair(0, 27),
model->SuggestSelection("350 Third Street, Cambridge", {4, 9}));
EXPECT_EQ(std::make_pair(0, 27),
model->SuggestSelection("350 Third Street, Cambridge", {10, 16}));
EXPECT_EQ(std::make_pair(6, 33),
model->SuggestSelection("a\nb\nc\n350 Third Street, Cambridge",
{16, 22}));
}
TEST(TextClassificationModelTest, SuggestSelectionWithNewLine) {
const std::string model_path = GetModelPath();
int fd = open(model_path.c_str(), O_RDONLY);
std::unique_ptr<TextClassificationModel> model(
new TextClassificationModel(fd));
close(fd);
std::tuple<int, int> selection;
selection = model->SuggestSelection("abc\nBarack Obama", {4, 10});
EXPECT_EQ(4, std::get<0>(selection));
EXPECT_EQ(16, std::get<1>(selection));
selection = model->SuggestSelection("Barack Obama\nabc", {0, 6});
EXPECT_EQ(0, std::get<0>(selection));
EXPECT_EQ(12, std::get<1>(selection));
}
TEST(TextClassificationModelTest, SuggestSelectionWithPunctuation) {
const std::string model_path = GetModelPath();
int fd = open(model_path.c_str(), O_RDONLY);
std::unique_ptr<TextClassificationModel> model(
new TextClassificationModel(fd));
close(fd);
std::tuple<int, int> selection;
// From the right.
selection = model->SuggestSelection(
"this afternoon Barack Obama, gave a speech at", {15, 21});
EXPECT_EQ(15, std::get<0>(selection));
EXPECT_EQ(27, std::get<1>(selection));
// From the right multiple.
selection = model->SuggestSelection(
"this afternoon Barack Obama,.,.,, gave a speech at", {15, 21});
EXPECT_EQ(15, std::get<0>(selection));
EXPECT_EQ(27, std::get<1>(selection));
// From the left multiple.
selection = model->SuggestSelection(
"this afternoon ,.,.,,Barack Obama gave a speech at", {21, 27});
EXPECT_EQ(21, std::get<0>(selection));
EXPECT_EQ(27, std::get<1>(selection));
// From both sides.
selection = model->SuggestSelection(
"this afternoon !Barack Obama,- gave a speech at", {16, 22});
EXPECT_EQ(16, std::get<0>(selection));
EXPECT_EQ(28, std::get<1>(selection));
}
class TestingTextClassificationModel
: public libtextclassifier::TextClassificationModel {
public:
explicit TestingTextClassificationModel(int fd)
: libtextclassifier::TextClassificationModel(fd) {}
using libtextclassifier::TextClassificationModel::StripPunctuation;
void DisableClassificationHints() {
sharing_options_.set_always_accept_url_hint(false);
sharing_options_.set_always_accept_email_hint(false);
}
};
TEST(TextClassificationModelTest, StripPunctuation) {
const std::string model_path = GetModelPath();
int fd = open(model_path.c_str(), O_RDONLY);
std::unique_ptr<TestingTextClassificationModel> model(
new TestingTextClassificationModel(fd));
close(fd);
EXPECT_EQ(std::make_pair(3, 10),
model->StripPunctuation({0, 10}, ".,-abcd.()"));
EXPECT_EQ(std::make_pair(0, 6), model->StripPunctuation({0, 6}, "(abcd)"));
EXPECT_EQ(std::make_pair(1, 5), model->StripPunctuation({0, 6}, "[abcd]"));
EXPECT_EQ(std::make_pair(1, 5), model->StripPunctuation({0, 6}, "{abcd}"));
// Empty result.
EXPECT_EQ(std::make_pair(0, 0), model->StripPunctuation({0, 1}, "&"));
EXPECT_EQ(std::make_pair(0, 0), model->StripPunctuation({0, 4}, "&-,}"));
// Invalid indices
EXPECT_EQ(std::make_pair(-1, 523), model->StripPunctuation({-1, 523}, "a"));
EXPECT_EQ(std::make_pair(-1, -1), model->StripPunctuation({-1, -1}, "a"));
EXPECT_EQ(std::make_pair(0, -1), model->StripPunctuation({0, -1}, "a"));
}
TEST(TextClassificationModelTest, SuggestSelectionNoCrashWithJunk) {
const std::string model_path = GetModelPath();
int fd = open(model_path.c_str(), O_RDONLY);
std::unique_ptr<TextClassificationModel> ff_model(
new TextClassificationModel(fd));
close(fd);
std::tuple<int, int> selection;
// Try passing in bunch of invalid selections.
selection = ff_model->SuggestSelection("", {0, 27});
// If more than 1 token is specified, we should return back what entered.
EXPECT_EQ(0, std::get<0>(selection));
EXPECT_EQ(27, std::get<1>(selection));
selection = ff_model->SuggestSelection("", {-10, 27});
// If more than 1 token is specified, we should return back what entered.
EXPECT_EQ(-10, std::get<0>(selection));
EXPECT_EQ(27, std::get<1>(selection));
selection = ff_model->SuggestSelection("Word 1 2 3 hello!", {0, 27});
// If more than 1 token is specified, we should return back what entered.
EXPECT_EQ(0, std::get<0>(selection));
EXPECT_EQ(27, std::get<1>(selection));
selection = ff_model->SuggestSelection("Word 1 2 3 hello!", {-30, 300});
// If more than 1 token is specified, we should return back what entered.
EXPECT_EQ(-30, std::get<0>(selection));
EXPECT_EQ(300, std::get<1>(selection));
selection = ff_model->SuggestSelection("Word 1 2 3 hello!", {-10, -1});
// If more than 1 token is specified, we should return back what entered.
EXPECT_EQ(-10, std::get<0>(selection));
EXPECT_EQ(-1, std::get<1>(selection));
selection = ff_model->SuggestSelection("Word 1 2 3 hello!", {100, 17});
// If more than 1 token is specified, we should return back what entered.
EXPECT_EQ(100, std::get<0>(selection));
EXPECT_EQ(17, std::get<1>(selection));
}
namespace {
std::string FindBestResult(std::vector<std::pair<std::string, float>> results) {
if (results.empty()) {
return "<INVALID RESULTS>";
}
std::sort(results.begin(), results.end(),
[](const std::pair<std::string, float> a,
const std::pair<std::string, float> b) {
return a.second > b.second;
});
return results[0].first;
}
} // namespace
TEST(TextClassificationModelTest, ClassifyText) {
const std::string model_path = GetModelPath();
int fd = open(model_path.c_str(), O_RDONLY);
std::unique_ptr<TestingTextClassificationModel> model(
new TestingTextClassificationModel(fd));
close(fd);
model->DisableClassificationHints();
EXPECT_EQ("other",
FindBestResult(model->ClassifyText(
"this afternoon Barack Obama gave a speech at", {15, 27})));
EXPECT_EQ("other",
FindBestResult(model->ClassifyText("you@android.com", {0, 15})));
EXPECT_EQ("other", FindBestResult(model->ClassifyText(
"Contact me at you@android.com", {14, 29})));
EXPECT_EQ("phone", FindBestResult(model->ClassifyText(
"Call me at (800) 123-456 today", {11, 24})));
EXPECT_EQ("other", FindBestResult(model->ClassifyText(
"Visit www.google.com every today!", {6, 20})));
// More lines.
EXPECT_EQ("other",
FindBestResult(model->ClassifyText(
"this afternoon Barack Obama gave a speech at|Visit "
"www.google.com every today!|Call me at (800) 123-456 today.",
{15, 27})));
EXPECT_EQ("other",
FindBestResult(model->ClassifyText(
"this afternoon Barack Obama gave a speech at|Visit "
"www.google.com every today!|Call me at (800) 123-456 today.",
{51, 65})));
EXPECT_EQ("phone",
FindBestResult(model->ClassifyText(
"this afternoon Barack Obama gave a speech at|Visit "
"www.google.com every today!|Call me at (800) 123-456 today.",
{90, 103})));
// Single word.
EXPECT_EQ("other",
FindBestResult(model->ClassifyText("Barack Obama", {0, 12})));
EXPECT_EQ("other", FindBestResult(model->ClassifyText("asdf", {0, 4})));
EXPECT_EQ("<INVALID RESULTS>",
FindBestResult(model->ClassifyText("asdf", {0, 0})));
// Junk.
EXPECT_EQ("<INVALID RESULTS>",
FindBestResult(model->ClassifyText("", {0, 0})));
EXPECT_EQ("<INVALID RESULTS>", FindBestResult(model->ClassifyText(
"a\n\n\n\nx x x\n\n\n\n\n\n", {1, 5})));
}
TEST(TextClassificationModelTest, ClassifyTextWithHints) {
const std::string model_path = GetModelPath();
int fd = open(model_path.c_str(), O_RDONLY);
std::unique_ptr<TestingTextClassificationModel> model(
new TestingTextClassificationModel(fd));
close(fd);
// When EMAIL hint is passed, the result should be email.
EXPECT_EQ("email",
FindBestResult(model->ClassifyText(
"x", {0, 1}, TextClassificationModel::SELECTION_IS_EMAIL)));
// When URL hint is passed, the result should be email.
EXPECT_EQ("url",
FindBestResult(model->ClassifyText(
"x", {0, 1}, TextClassificationModel::SELECTION_IS_URL)));
// When both hints are passed, the result should be url (as it's probably
// better to let Chrome handle this case).
EXPECT_EQ("url", FindBestResult(model->ClassifyText(
"x", {0, 1},
TextClassificationModel::SELECTION_IS_EMAIL |
TextClassificationModel::SELECTION_IS_URL)));
// With disabled hints, we should get the same prediction regardless of the
// hint.
model->DisableClassificationHints();
EXPECT_EQ(model->ClassifyText("x", {0, 1}, 0),
model->ClassifyText("x", {0, 1},
TextClassificationModel::SELECTION_IS_EMAIL));
EXPECT_EQ(model->ClassifyText("x", {0, 1}, 0),
model->ClassifyText("x", {0, 1},
TextClassificationModel::SELECTION_IS_URL));
}
} // namespace
} // namespace libtextclassifier