public static void RunCyclingTime2()
        {
            double[]  trainingData = new double[] { 13, 17, 16, 12, 13, 12, 14, 18, 16, 16 };
            ModelData initPriors   = new ModelData(
                Gaussian.FromMeanAndPrecision(1.0, 0.01),
                Gamma.FromShapeAndScale(2.0, 0.5)
                );

            //Train the model
            CyclistTraining cyclistTraining = new CyclistTraining();

            cyclistTraining.CreateModel();
            cyclistTraining.SetModelData(initPriors);

            ModelData posteriors1 = cyclistTraining.InferModelData(trainingData);

            //Print the training results
            Console.WriteLine("Average travel time = {0:f2}", posteriors1.AverageTimeDist);
            Console.WriteLine("Traffic noise = {0:f2}", posteriors1.TrafficNoiseDist);

            CyclistPrediction cyclistPrediction = new CyclistPrediction();

            cyclistPrediction.CreateModel();
            cyclistPrediction.SetModelData(posteriors1);
            Gaussian tomorrowsTimeDist = cyclistPrediction.InferTomorrowsTime();
            double   tomorrowsMean     = tomorrowsTimeDist.GetMean();
            double   tomorrowsStdDev   = Math.Sqrt(tomorrowsTimeDist.GetVariance());

            Console.WriteLine("Tomorrows average time: {0:f2}", tomorrowsMean);
            Console.WriteLine("Tomorrows standard deviation: {0:f2}", tomorrowsStdDev);
            Console.WriteLine(
                "Probability that tomorrow's time is < 18 min: {0}",
                cyclistPrediction.InferProbabilityTimeLessThan(18.0)
                );

            // Second phase online learning
            double[] trainingData2 = new double[] { 17, 19, 18, 21, 15 };
            cyclistTraining.SetModelData(posteriors1);
            ModelData posteriors2 = cyclistTraining.InferModelData(trainingData2);

            //Print the training results
            Console.WriteLine("Average travel time = {0:f2}", posteriors2.AverageTimeDist);
            Console.WriteLine("Traffic noise = {0:f2}", posteriors2.TrafficNoiseDist);
            cyclistPrediction.SetModelData(posteriors2);
            tomorrowsTimeDist = cyclistPrediction.InferTomorrowsTime();
            tomorrowsMean     = tomorrowsTimeDist.GetMean();
            tomorrowsStdDev   = Math.Sqrt(tomorrowsTimeDist.GetVariance());
            Console.WriteLine("Tomorrows average time: {0:f2}", tomorrowsMean);
            Console.WriteLine("Tomorrows standard deviation: {0:f2}", tomorrowsStdDev);
            Console.WriteLine(
                "Probability that tomorrow's time is < 18 min: {0}",
                cyclistPrediction.InferProbabilityTimeLessThan(18.0)
                );
        }
Пример #2
0
 public void CreateModel()
 {
     CommonEngine = new InferenceEngine();
     cyclist1     = new CyclistPrediction()
     {
         InferenceEngine = CommonEngine
     };
     cyclist1.CreateModel();
     cyclist2 = new CyclistPrediction()
     {
         InferenceEngine = CommonEngine
     };
     cyclist2.CreateModel();
     TimeDifference   = cyclist1.TomorrowsTime - cyclist2.TomorrowsTime;
     Cyclist1IsFaster = cyclist1.TomorrowsTime < cyclist2.TomorrowsTime;
 }