Ejemplo n.º 1
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def SimEM(smodel, time=600):
    sim_em = SimuHawkes(kernels=smodel.time_kernel,
                        baseline=smodel.baseline,
                        verbose=False,
                        end_time=time)
    sim_em.simulate()
    return sim_em.timestamps
    def test_simu_hawkes_multi_attrs(self):
        """...Test multiple simulations via SimuHawkesMulti vs. single Hawkes

        See that multiple simulations has same attributes as a single Hawkes
        simulation, but different results
        """

        hawkes = SimuHawkes(kernels=self.kernels,
                            baseline=self.baseline,
                            end_time=10,
                            verbose=False,
                            seed=504)

        multi = SimuHawkesMulti(hawkes, n_threads=4, n_simulations=10)
        multi.simulate()

        hawkes.simulate()

        np.testing.assert_array_equal(hawkes.simulation_time,
                                      multi.simulation_time)
        np.testing.assert_array_equal(hawkes.n_nodes, multi.n_nodes)
        np.testing.assert_array_equal(hawkes.end_time, multi.end_time)
        np.testing.assert_array_equal(hawkes.max_jumps, multi.max_jumps)
        np.testing.assert_array_equal(hawkes.spectral_radius(),
                                      multi.spectral_radius)

        self.assertTrue(
            all(
                np.array_equal(hawkes.mean_intensity(), np.array(x))
                for x in multi.mean_intensity))

        self.assertFalse(
            np.array_equal(hawkes.n_total_jumps, multi.n_total_jumps))
Ejemplo n.º 3
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    def test_hawkes_set_baseline_piecewiseconstant(self):
        """...Test Hawkes process baseline set with time and value arrays
        """
        baselines = [[1., 2., 1.5, 4.],
                     [2., 1.5, 4., 1.]]
        hawkes = SimuHawkes(baseline=baselines, period_length=3.5,
                            kernels=self.kernels, verbose=False)

        hawkes.end_time = 10
        hawkes.simulate()
        self.assertGreater(hawkes.n_total_jumps, 1)
Ejemplo n.º 4
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    def simulate_hawkes(self, model_name):
        self.model_name = model_name

        def y_func_pos(t_values):
            y_values = 0.02 * np.exp(-t_values)
            return y_values

        def y_func_neg(t_values):
            y_values = -0.1 * np.exp(-t_values)
            return y_values

        if model_name == 'hawkes_neg':
            y_func = y_func_neg
        elif model_name == 'hawkes_pos':
            y_func = y_func_pos

        t_values = np.linspace(0, 101, 100)
        y_values = y_func(t_values)
        tf = TimeFunction([t_values, y_values],
                          inter_mode=TimeFunction.InterLinear,
                          dt=0.1)

        tf_kernel = HawkesKernelTimeFunc(tf)

        N_enodes = self.G_e2n.number_of_nodes()  # regarded as 'N_enodes' types

        base_int = 0.2
        baselines = [base_int for i in range(N_enodes)]
        kernels = [[] for i in range(N_enodes)]
        for i in range(N_enodes):
            for j in range(N_enodes):
                if i == j:
                    # kernels[i].append(HawkesKernel0())
                    kernels[i].append(HawkesKernelExp(.1, 4))  # self influence
                else:
                    if self.G_e2n.has_edge(self.idx_elabel_map[i],
                                           self.idx_elabel_map[j]):
                        kernels[i].append(tf_kernel)
                    else:
                        kernels[i].append(HawkesKernel0())

        hawkes = SimuHawkes(kernels=kernels,
                            baseline=baselines,
                            verbose=False,
                            seed=self.seed)
        hawkes.threshold_negative_intensity(allow=True)

        run_time = 100
        hawkes.end_time = run_time
        hawkes.simulate()
        timestamps = hawkes.timestamps

        self.save(timestamps, self.model_name)
Ejemplo n.º 5
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 def test_hawkes_set_baseline_timefunction(self):
     """...Test Hawkes process baseline set with TimeFunction
     """
     t_values = [0.5, 1., 2., 3.5]
     y_values_1 = [1., 2., 1.5, 4.]
     y_values_2 = [2., 1.5, 4., 1.]
     timefunction1 = TimeFunction((t_values, y_values_1))
     timefunction2 = TimeFunction((t_values, y_values_2))
     hawkes = SimuHawkes(baseline=[timefunction1, timefunction2],
                         kernels=self.kernels, verbose=False)
     hawkes.end_time = 10
     hawkes.simulate()
     self.assertGreater(hawkes.n_total_jumps, 1)
Ejemplo n.º 6
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    def test_hawkes_mean_intensity(self):
        """...Test that Hawkes obtained mean intensity is consistent
        """

        hawkes = SimuHawkes(kernels=self.kernels, baseline=self.baseline,
                            seed=308, end_time=300, verbose=False)
        self.assertLess(hawkes.spectral_radius(), 1)

        hawkes.track_intensity(0.01)
        hawkes.simulate()

        mean_intensity = hawkes.mean_intensity()
        for i in range(hawkes.n_nodes):
            self.assertAlmostEqual(np.mean(hawkes.tracked_intensity[i]),
                                   mean_intensity[i], delta=0.3)
Ejemplo n.º 7
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    def test_hawkes_negative_intensity_fail(self):
        """...Test simulation with negative kernel without threshold_negative_intensity
        """
        run_time = 40

        hawkes = SimuHawkes(n_nodes=1, end_time=run_time, verbose=False,
                            seed=1398)
        kernel = HawkesKernelExp(-1.3, .8)
        hawkes.set_kernel(0, 0, kernel)
        hawkes.set_baseline(0, 0.3)

        msg = 'Simulation stopped because intensity went negative ' \
              '\(you could call ``threshold_negative_intensity`` to allow it\)'
        with self.assertRaisesRegex(RuntimeError, msg):
            hawkes.simulate()
Ejemplo n.º 8
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def SimulateBasis(kernel, baseline, time=600):
    sim_em = SimuHawkes(kernels=kernel,
                        baseline=baseline,
                        verbose=False,
                        end_time=time)

    dt = 0.001  #millisecond granularity
    sim_em.track_intensity(dt)
    sim_em.simulate()

    timestamps = sim_em.timestamps
    l = 0
    for series in timestamps:
        l += len(series)
    print(f"Simulated {l} points")
    return sim_em.timestamps
Ejemplo n.º 9
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    def test_simu_hawkes_force_simulation(self):
        """...Test force_simulation parameter of SimuHawkes
        """
        diverging_kernel = [[HawkesKernelExp(2, 3)]]
        hawkes = SimuHawkes(kernels=diverging_kernel, baseline=[1],
                            verbose=False)
        hawkes.end_time = 10

        msg = '^Simulation not launched as this Hawkes process is not ' \
              'stable \(spectral radius of 2\). You can use ' \
              'force_simulation parameter if you really want to simulate it$'
        with self.assertRaisesRegex(ValueError, msg):
            hawkes.simulate()

        msg = "^This process has already be simulated until time 0.000000$"
        with self.assertWarnsRegex(UserWarning, msg):
            hawkes.end_time = 0
            hawkes.force_simulation = True
            hawkes.simulate()
Ejemplo n.º 10
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def generate_points(n_processes, mu, alpha, decay, window, seed, dt=0.01):
    """
    Generates points of an marked Hawkes processes using the tick library
    """
    hawkes = SimuHawkes(n_nodes=n_processes,
                        end_time=window,
                        verbose=False,
                        seed=seed)
    for i in range(n_processes):
        for j in range(n_processes):
            hawkes.set_kernel(i=i,
                              j=j,
                              kernel=HawkesKernelExp(intensity=alpha[i][j] /
                                                     decay[i][j],
                                                     decay=decay[i][j]))
        hawkes.set_baseline(i, mu[i])

    hawkes.track_intensity(dt)
    hawkes.simulate()
    return hawkes.timestamps
Ejemplo n.º 11
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    def test_hawkes_negative_intensity(self):
        """...Test simulation with negative kernel
        """
        run_time = 40

        hawkes = SimuHawkes(n_nodes=1, end_time=run_time, verbose=False,
                            seed=1398)
        kernel = HawkesKernelExp(-1.3, .8)
        hawkes.set_kernel(0, 0, kernel)
        hawkes.set_baseline(0, 0.3)
        hawkes.threshold_negative_intensity()

        dt = 0.1
        hawkes.track_intensity(dt)
        hawkes.simulate()

        self.assertAlmostEqual(hawkes.tracked_intensity[0].min(), 0)
        self.assertAlmostEqual(hawkes.tracked_intensity[0].max(),
                               hawkes.baseline[0])
        self.assertGreater(hawkes.n_total_jumps, 1)
t_values = np.array([0, 1, 1.5], dtype=float)
y_values = np.array([0, .2, 0], dtype=float)
tf1 = TimeFunction([t_values, y_values],
                   inter_mode=TimeFunction.InterConstRight,
                   dt=0.1)
kernel_1 = HawkesKernelTimeFunc(tf1)

t_values = np.array([0, .1, 2], dtype=float)
y_values = np.array([0, .4, -0.2], dtype=float)
tf2 = TimeFunction([t_values, y_values],
                   inter_mode=TimeFunction.InterLinear,
                   dt=0.1)
kernel_2 = HawkesKernelTimeFunc(tf2)

hawkes = SimuHawkes(kernels=[[kernel_1, kernel_1],
                             [HawkesKernelExp(.07, 4), kernel_2]],
                    baseline=[1.5, 1.5],
                    verbose=False,
                    seed=23983)

run_time = 40
dt = 0.01
hawkes.track_intensity(dt)
hawkes.end_time = run_time
hawkes.simulate()

fig, ax = plt.subplots(hawkes.n_nodes, 1, figsize=(14, 8))
plot_point_process(hawkes, t_max=20, ax=ax)

plt.show()
Ejemplo n.º 13
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def test_HawkesEM():

    print('\n##############################')
    print('\nstarting: test_HawkesEM()\n')

    run_time = 30000

    t_values1 = np.array([0, 1, 1.5, 2., 3.5], dtype=float)
    y_values1 = np.array([0, 0.2, 0, 0.1, 0.], dtype=float)
    tf1 = TimeFunction(
        [t_values1, y_values1],
        inter_mode = TimeFunction.InterConstRight,
        dt = 0.1)
    kernel1 = HawkesKernelTimeFunc(tf1)

    t_values2 = np.linspace(0, 4, 20)
    y_values2 = np.maximum(0., np.sin(t_values2) / 4)
    tf2       = TimeFunction([t_values2, y_values2])
    kernel2   = HawkesKernelTimeFunc(tf2)

    baseline = np.array([0.1, 0.3])

    ### ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ ###
    realizations = list()
    for i in range(0,1000):

        print( '' )

        temp_seed = int(1000 + 1000 * random.random())
        print('i = ' + str(i) + ', temp_seed = ' + str(temp_seed));

        hawkes = SimuHawkes(
            baseline = baseline,
            end_time = run_time,
            verbose  = False,
            seed     = temp_seed
            )
        hawkes.set_kernel(0, 0, kernel1)
        hawkes.set_kernel(0, 1, HawkesKernelExp(.5, .7))
        hawkes.set_kernel(1, 1, kernel2)
        hawkes.simulate()

        temp_realization = hawkes.timestamps;
        print(
            'i = ' + str(i) + ', ' +
            'event counts = ('
                + str(len(temp_realization[0])) + ','
                + str(len(temp_realization[1])) +
                ')'
            );
        print( temp_realization )

        realizations.append( temp_realization );

    ### ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ ###
    em = HawkesEM(4, kernel_size=16, n_threads=8, verbose=False, tol=1e-3)
    em.fit(events = realizations)

    fig = plot_hawkes_kernels(em, hawkes=hawkes, show=False)

    outputFILE = 'test-HawkesEM.png'
    for ax in fig.axes:
        ax.set_ylim([0, 1])
    plt.savefig(fname = outputFILE, bbox_inches='tight', pad_inches=0.2)

    ### ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ ###
    print('\nexitng: test_HawkesEM()')
    print('\n##############################')

    return( None )
Ejemplo n.º 14
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def test_HawkesEM():

    print('\n##############################')
    print('\nstarting: test_HawkesEM()\n')

    run_time = 30000

    t_values1 = np.array([0, 1, 1.5, 2., 3.5], dtype=float)
    y_values1 = np.array([0, 0.2, 0, 0.1, 0.], dtype=float)
    tf1 = TimeFunction([t_values1, y_values1],
                       inter_mode=TimeFunction.InterConstRight,
                       dt=0.1)
    kernel1 = HawkesKernelTimeFunc(tf1)

    t_values2 = np.linspace(0, 4, 20)
    y_values2 = np.maximum(0., np.sin(t_values2) / 4)
    tf2 = TimeFunction([t_values2, y_values2])
    kernel2 = HawkesKernelTimeFunc(tf2)

    baseline = np.array([0.1, 0.3])

    ### ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ ###
    realizations = list()
    for i in range(0, 1000):

        print('')

        temp_seed = int(1000 + 1000 * random.random())
        print('i = ' + str(i) + ', temp_seed = ' + str(temp_seed))

        hawkes = SimuHawkes(baseline=baseline,
                            end_time=run_time,
                            verbose=False,
                            seed=temp_seed)
        hawkes.set_kernel(0, 0, kernel1)
        hawkes.set_kernel(0, 1, HawkesKernelExp(.5, .7))
        hawkes.set_kernel(1, 1, kernel2)
        hawkes.simulate()

        temp_realization = hawkes.timestamps
        print('i = ' + str(i) + ', ' + 'event counts = (' +
              str(len(temp_realization[0])) + ',' +
              str(len(temp_realization[1])) + ')')
        print(temp_realization)

        realizations.append(temp_realization)

    ### ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ ###
    em = HawkesEM(4, kernel_size=16, n_threads=8, verbose=False, tol=1e-3)
    em.fit(events=realizations)

    fig = plot_hawkes_kernels(em, hawkes=hawkes, show=False)

    outputFILE = 'test-HawkesEM.png'
    for ax in fig.axes:
        ax.set_ylim([0, 1])
    plt.savefig(fname=outputFILE, bbox_inches='tight', pad_inches=0.2)

    ### ~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~~ ###
    print('\nexitng: test_HawkesEM()')
    print('\n##############################')

    return (None)