Пример #1
0
        public override EvaluationResults EvaluateModelOnData(Converter <Leaf, SufficientStatistics> predMap, Converter <Leaf, SufficientStatistics> targMap)
        {
            int predCount             = ModelScorer.PhyloTree.CountOfNonMissingLeaves(predMap);
            int targCount             = ModelScorer.PhyloTree.CountOfNonMissingLeaves(targMap);
            int globalNonMissingCount = ModelScorer.PhyloTree.CountOfNonMissingLeaves(predMap, targMap);

            MessageInitializerGaussian nullMessageInitializer = MessageInitializerGaussian.GetInstance(
                predMap, targMap, (DistributionGaussianConditional)NullDistns[0], ModelScorer.PhyloTree.LeafCollection);
            Score nullScore = ModelScorer.MaximizeLikelihood(nullMessageInitializer);

            MessageInitializerGaussian altMessageInitializer = MessageInitializerGaussian.GetInstance(
                predMap, targMap, (DistributionGaussianConditional)AltDistn, ModelScorer.PhyloTree.LeafCollection);
            Score altScore = ModelScorer.MaximizeLikelihood(altMessageInitializer);

            EvaluationResults evalResults = EvaluationResultsGaussian.GetInstance(this, nullScore, altScore, predCount, targCount, globalNonMissingCount, ChiSquareDegreesOfFreedom);

            return(evalResults);
        }
Пример #2
0
        public override EvaluationResults EvaluateModelOnDataGivenParams(Converter <Leaf, SufficientStatistics> predMap, Converter <Leaf, SufficientStatistics> targMap, EvaluationResults previousResults)
        {
            int predCount             = ModelScorer.PhyloTree.CountOfNonMissingLeaves(predMap);
            int targCount             = ModelScorer.PhyloTree.CountOfNonMissingLeaves(targMap);
            int globalNonMissingCount = ModelScorer.PhyloTree.CountOfNonMissingLeaves(predMap, targMap);

            MessageInitializerGaussian nullMessageInitializer = MessageInitializerGaussian.GetInstance(
                predMap, targMap, (DistributionGaussianConditional)NullDistns[0], ModelScorer.PhyloTree.LeafCollection);
            double nullLL    = ModelScorer.ComputeLogLikelihoodModelGivenData(nullMessageInitializer, previousResults.NullScores[0].OptimizationParameters);
            Score  nullScore = Score.GetInstance(nullLL, previousResults.NullScores[0].OptimizationParameters, previousResults.NullScores[0].Distribution);

            MessageInitializerGaussian altMessageInitializer = MessageInitializerGaussian.GetInstance(
                predMap, targMap, (DistributionGaussianConditional)AltDistn, ModelScorer.PhyloTree.LeafCollection);
            double altLL    = ModelScorer.ComputeLogLikelihoodModelGivenData(altMessageInitializer, previousResults.AltScore.OptimizationParameters);
            Score  altScore = Score.GetInstance(altLL, previousResults.AltScore.OptimizationParameters, previousResults.AltScore.Distribution);

            EvaluationResults evalResults = EvaluationResultsGaussian.GetInstance(this, nullScore, altScore, predCount, targCount, globalNonMissingCount, ChiSquareDegreesOfFreedom);

            return(evalResults);
        }