Example #1
0
def simulate_mean_sharpe_ratio(portfolio, test_data):
    test_bounds = generate_bounds(0.01,
                                  len(test_data))
    test_data_sets = [simulate_test_data(test_data,
                                         test_bounds,
                                         factor=1.5)
                      for _ in range(0,100)]
    return np.mean([pstats.sharpe_base(simulate_portfolio(portfolio,
                                                          td))
                    for td in test_data_sets])
Example #2
0
def generate_ratios_experiment_20151027(
        portfolios,
        parameters = default_parameters):
    test_data = excess_returns[120:] + parameters.risk_free_rate
    test_bounds = generate_bounds(0.05,
                                  len(test_data))
    msv_results = simulate_portfolio(portfolios['msv'],
                                     test_data)
    pu_results = [(s, simulate_portfolio(u, test_data))
                  for (s,u) in portfolios['pu']]
    naive_results = simulate_portfolio(portfolios['naive'],
                                       test_data)
    return {'Sharpe': {'msv': pstats.sharpe_base(msv_results),
                       'pu': [[s, pstats.sharpe_base(v)]
                              for (s, v) in pu_results],
                       'naive': pstats.sharpe_base(naive_results)},
            'Sortino':
            {'msv': pstats.sortino_base(msv_results,
                                        parameters.target_rate),
             'pu': [[s, pstats.sortino_base(v, parameters.target_rate)]
                    for (s, v) in pu_results],
             'naive': pstats.sortino_base(naive_results,
                                          parameters.target_rate)}}