use of org.kie.kogito.explainability.model.PredictionProvider in project kogito-apps by kiegroup.
the class PmmlRegressionCategoricalLimeExplainerTest method testExplanationStabilityWithOptimization.
@Disabled("See KOGITO-6154")
@Test
void testExplanationStabilityWithOptimization() throws ExecutionException, InterruptedException, TimeoutException {
PredictionProvider model = getModel();
List<PredictionInput> samples = getSamples();
List<PredictionOutput> predictionOutputs = model.predictAsync(samples.subList(0, 5)).get();
List<Prediction> predictions = DataUtils.getPredictions(samples, predictionOutputs);
long seed = 0;
LimeConfigOptimizer limeConfigOptimizer = new LimeConfigOptimizer().withDeterministicExecution(true);
Random random = new Random();
PerturbationContext perturbationContext = new PerturbationContext(seed, random, 1);
LimeConfig initialConfig = new LimeConfig().withSamples(10).withPerturbationContext(perturbationContext);
LimeConfig optimizedConfig = limeConfigOptimizer.optimize(initialConfig, predictions, model);
assertThat(optimizedConfig).isNotSameAs(initialConfig);
LimeExplainer limeExplainer = new LimeExplainer(optimizedConfig);
PredictionInput testPredictionInput = getTestInput();
List<PredictionOutput> testPredictionOutputs = model.predictAsync(List.of(testPredictionInput)).get(Config.INSTANCE.getAsyncTimeout(), Config.INSTANCE.getAsyncTimeUnit());
Prediction instance = new SimplePrediction(testPredictionInput, testPredictionOutputs.get(0));
assertDoesNotThrow(() -> ValidationUtils.validateLocalSaliencyStability(model, instance, limeExplainer, 1, 0.6, 0.6));
}
use of org.kie.kogito.explainability.model.PredictionProvider in project kogito-apps by kiegroup.
the class CounterfactualScoreCalculatorTest method testGoalSizeMatch.
/**
* If the goal and the model's output is the same, the distances should all be zero.
*/
@Test
void testGoalSizeMatch() throws ExecutionException, InterruptedException {
final CounterFactualScoreCalculator scoreCalculator = new CounterFactualScoreCalculator();
PredictionProvider model = TestUtils.getFeatureSkipModel(0);
List<Feature> features = new ArrayList<>();
List<FeatureDomain> featureDomains = new ArrayList<>();
List<Boolean> constraints = new ArrayList<>();
// f-1
features.add(FeatureFactory.newNumericalFeature("f-1", 1.0));
featureDomains.add(NumericalFeatureDomain.create(0.0, 10.0));
constraints.add(false);
// f-2
features.add(FeatureFactory.newNumericalFeature("f-2", 2.0));
featureDomains.add(NumericalFeatureDomain.create(0.0, 10.0));
constraints.add(false);
// f-3
features.add(FeatureFactory.newBooleanFeature("f-3", true));
featureDomains.add(EmptyFeatureDomain.create());
constraints.add(false);
PredictionInput input = new PredictionInput(features);
PredictionFeatureDomain domains = new PredictionFeatureDomain(featureDomains);
List<CounterfactualEntity> entities = CounterfactualEntityFactory.createEntities(input);
List<Output> goal = new ArrayList<>();
goal.add(new Output("f-2", Type.NUMBER, new Value(2.0), 0.0));
goal.add(new Output("f-3", Type.BOOLEAN, new Value(true), 0.0));
final CounterfactualSolution solution = new CounterfactualSolution(entities, features, model, goal, UUID.randomUUID(), UUID.randomUUID(), 0.0);
BendableBigDecimalScore score = scoreCalculator.calculateScore(solution);
List<PredictionOutput> predictionOutputs = model.predictAsync(List.of(input)).get();
assertTrue(score.isFeasible());
assertEquals(2, goal.size());
// A single prediction is expected
assertEquals(1, predictionOutputs.size());
// Single prediction with two features
assertEquals(2, predictionOutputs.get(0).getOutputs().size());
assertEquals(0, score.getHardScore(0).compareTo(BigDecimal.ZERO));
assertEquals(0, score.getHardScore(1).compareTo(BigDecimal.ZERO));
assertEquals(0, score.getHardScore(2).compareTo(BigDecimal.ZERO));
assertEquals(0, score.getSoftScore(0).compareTo(BigDecimal.ZERO));
assertEquals(0, score.getSoftScore(1).compareTo(BigDecimal.ZERO));
assertEquals(3, score.getHardLevelsSize());
assertEquals(2, score.getSoftLevelsSize());
}
use of org.kie.kogito.explainability.model.PredictionProvider in project kogito-apps by kiegroup.
the class DummyModelsLimeExplainerTest method testUnusedFeatureClassification.
@ParameterizedTest
@ValueSource(longs = { 0 })
void testUnusedFeatureClassification(long seed) throws Exception {
Random random = new Random();
int idx = 2;
List<Feature> features = new LinkedList<>();
features.add(FeatureFactory.newNumericalFeature("f1", 6));
features.add(FeatureFactory.newNumericalFeature("f2", 3));
features.add(FeatureFactory.newNumericalFeature("f3", 5));
PredictionProvider model = TestUtils.getEvenSumModel(idx);
PredictionInput input = new PredictionInput(features);
List<PredictionOutput> outputs = model.predictAsync(List.of(input)).get(Config.INSTANCE.getAsyncTimeout(), Config.INSTANCE.getAsyncTimeUnit());
Prediction prediction = new SimplePrediction(input, outputs.get(0));
LimeConfig limeConfig = new LimeConfig().withSamples(100).withPerturbationContext(new PerturbationContext(seed, random, 1));
LimeExplainer limeExplainer = new LimeExplainer(limeConfig);
Map<String, Saliency> saliencyMap = limeExplainer.explainAsync(prediction, model).get(Config.INSTANCE.getAsyncTimeout(), Config.INSTANCE.getAsyncTimeUnit());
for (Saliency saliency : saliencyMap.values()) {
assertNotNull(saliency);
List<FeatureImportance> topFeatures = saliency.getTopFeatures(3);
assertEquals(3, topFeatures.size());
assertEquals(1d, ExplainabilityMetrics.impactScore(model, prediction, topFeatures));
}
int topK = 1;
double minimumPositiveStabilityRate = 0.5;
double minimumNegativeStabilityRate = 0.5;
TestUtils.assertLimeStability(model, prediction, limeExplainer, topK, minimumPositiveStabilityRate, minimumNegativeStabilityRate);
List<PredictionInput> inputs = new ArrayList<>();
for (int i = 0; i < 100; i++) {
List<Feature> fs = new LinkedList<>();
fs.add(TestUtils.getMockedNumericFeature());
fs.add(TestUtils.getMockedNumericFeature());
fs.add(TestUtils.getMockedNumericFeature());
inputs.add(new PredictionInput(fs));
}
DataDistribution distribution = new PredictionInputsDataDistribution(inputs);
int k = 2;
int chunkSize = 10;
String decision = "sum-even-but" + idx;
double precision = ExplainabilityMetrics.getLocalSaliencyPrecision(decision, model, limeExplainer, distribution, k, chunkSize);
assertThat(precision).isEqualTo(1);
double recall = ExplainabilityMetrics.getLocalSaliencyRecall(decision, model, limeExplainer, distribution, k, chunkSize);
assertThat(recall).isEqualTo(1);
double f1 = ExplainabilityMetrics.getLocalSaliencyF1(decision, model, limeExplainer, distribution, k, chunkSize);
assertThat(f1).isEqualTo(1);
}
use of org.kie.kogito.explainability.model.PredictionProvider in project kogito-apps by kiegroup.
the class DummyModelsLimeExplainerTest method testTextSpamClassification.
@ParameterizedTest
@ValueSource(longs = { 0 })
void testTextSpamClassification(long seed) throws Exception {
Random random = new Random();
List<Feature> features = new LinkedList<>();
Function<String, List<String>> tokenizer = s -> Arrays.asList(s.split(" ").clone());
features.add(FeatureFactory.newFulltextFeature("f1", "we go here and there", tokenizer));
features.add(FeatureFactory.newFulltextFeature("f2", "please give me some money", tokenizer));
features.add(FeatureFactory.newFulltextFeature("f3", "dear friend, please reply", tokenizer));
PredictionInput input = new PredictionInput(features);
PredictionProvider model = TestUtils.getDummyTextClassifier();
List<PredictionOutput> outputs = model.predictAsync(List.of(input)).get(Config.INSTANCE.getAsyncTimeout(), Config.INSTANCE.getAsyncTimeUnit());
Prediction prediction = new SimplePrediction(input, outputs.get(0));
LimeConfig limeConfig = new LimeConfig().withSamples(100).withPerturbationContext(new PerturbationContext(seed, random, 1));
LimeExplainer limeExplainer = new LimeExplainer(limeConfig);
Map<String, Saliency> saliencyMap = limeExplainer.explainAsync(prediction, model).toCompletableFuture().get(Config.INSTANCE.getAsyncTimeout(), Config.INSTANCE.getAsyncTimeUnit());
for (Saliency saliency : saliencyMap.values()) {
assertNotNull(saliency);
List<FeatureImportance> topFeatures = saliency.getPositiveFeatures(1);
assertEquals(1, topFeatures.size());
assertEquals(1d, ExplainabilityMetrics.impactScore(model, prediction, topFeatures));
}
int topK = 1;
double minimumPositiveStabilityRate = 0.5;
double minimumNegativeStabilityRate = 0.2;
TestUtils.assertLimeStability(model, prediction, limeExplainer, topK, minimumPositiveStabilityRate, minimumNegativeStabilityRate);
List<PredictionInput> inputs = new ArrayList<>();
for (int i = 0; i < 100; i++) {
List<Feature> fs = new LinkedList<>();
fs.add(TestUtils.getMockedNumericFeature());
fs.add(TestUtils.getMockedNumericFeature());
fs.add(TestUtils.getMockedNumericFeature());
inputs.add(new PredictionInput(fs));
}
DataDistribution distribution = new PredictionInputsDataDistribution(inputs);
int k = 2;
int chunkSize = 10;
String decision = "spam";
double precision = ExplainabilityMetrics.getLocalSaliencyPrecision(decision, model, limeExplainer, distribution, k, chunkSize);
assertThat(precision).isEqualTo(1);
double recall = ExplainabilityMetrics.getLocalSaliencyRecall(decision, model, limeExplainer, distribution, k, chunkSize);
assertThat(recall).isEqualTo(1);
double f1 = ExplainabilityMetrics.getLocalSaliencyF1(decision, model, limeExplainer, distribution, k, chunkSize);
assertThat(f1).isEqualTo(1);
}
use of org.kie.kogito.explainability.model.PredictionProvider in project kogito-apps by kiegroup.
the class HighScoreNumericFeatureZonesProviderTest method testEmptyData.
@Test
void testEmptyData() {
List<Feature> features = new ArrayList<>();
PredictionProvider predictionProvider = TestUtils.getSumThresholdModel(0.1, 0.1);
List<FeatureDistribution> featureDistributions = new ArrayList<>();
DataDistribution dataDistribution = new IndependentFeaturesDataDistribution(featureDistributions);
Map<String, HighScoreNumericFeatureZones> highScoreFeatureZones = HighScoreNumericFeatureZonesProvider.getHighScoreFeatureZones(dataDistribution, predictionProvider, features, 10);
assertThat(highScoreFeatureZones).isNotNull();
assertThat(highScoreFeatureZones.size()).isZero();
}
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