Ejemplo n.º 1
0
        /// <summary>
        ///   Fits the underlying distribution to a given set of observations.
        /// </summary>
        ///
        /// <param name="observations">The array of observations to fit the model against. The array
        ///   elements can be either of type double (for univariate data) or
        ///   type double[] (for multivariate data).</param>
        ///
        /// <param name="weights">The weight vector containing the weight for each of the samples.</param>
        /// <param name="options">Optional arguments which may be used during fitting, such
        /// as regularization constants and additional parameters.</param>
        ///
        /// <remarks>
        ///   Although both double[] and double[][] arrays are supported,
        ///   providing a double[] for a multivariate distribution or a
        ///   double[][] for a univariate distribution may have a negative
        ///   impact in performance.
        /// </remarks>
        ///
        public void Fit(double[] observations, double[] weights, VonMisesOptions options)
        {
            double m, k;

            if (weights != null)
            {
                m = Circular.WeightedMean(observations, weights);
                k = Circular.WeightedConcentration(observations, weights, m);
            }
            else
            {
                m = Circular.Mean(observations);
                k = Circular.Concentration(observations, m);
            }

            if (options != null)
            {
                // Parse optional estimation options
                if (options.UseBiasCorrection)
                {
                    double N = observations.Length;
                    if (k < 2)
                    {
                        k = System.Math.Max(k - 1.0 / (2.0 * (N * k)), 0);
                    }
                    else
                    {
                        double Nm1 = N - 1;
                        k = (Nm1 * Nm1 * Nm1 * k) / (N * N * N + N);
                    }
                }
            }

            initialize(m, k);
        }
Ejemplo n.º 2
0
        public void KappaTest1()
        {
            double expected = 3.721646;
            double actual   = Circular.Concentration(angles);

            Assert.AreEqual(expected, actual, 1e-6);
        }