Exemple #1
0
    def test_famafrench_test(self):
        self.load_data(start_date="2000-01-01")
        try:
            quandl.ApiConfig.api_key = 'Z2WYzGME3qmxnqQgBcdX'
            ust = quandl.get("USTREASURY/YIELD", start_date="2000-01-01")
            f = open('../writeup/tables/FFRegressionTables.tex', 'a')
            for co in TestGenericFuture.co_tickers.keys(
            ):  #["Corn", "Brent", "Lumber", "Copper", "Gold", "Wheat"]:
                try:
                    commodity = co
                    expiries = pd.read_excel("../data/" + commodity +
                                             "ContractExpiries.xlsx")
                    root_ticker = TestGenericFuture.co_tickers[commodity]
                    generic_futures = [1, 2]
                    tickers = [root_ticker + str(i) for i in generic_futures]
                    near_future_data = self.data.loc[:, tickers[0]]
                    far_future_data = self.data.loc[:, tickers[1]]
                    near_future_ticker = tickers[0]
                    far_future_ticker = tickers[1]
                    near_future = generic_futures[0]
                    far_future = generic_futures[1]

                    near_future_expiries = expiries[[
                        "Date", str(near_future) + "C_Expiry"
                    ]].set_index("Date")
                    far_future_expiries = expiries[[
                        "Date", str(far_future) + "C_Expiry"
                    ]].set_index("Date")

                    near_future = GenericFuture(ticker=near_future_ticker,
                                                number=near_future,
                                                data=near_future_data)
                    far_future = GenericFuture(ticker=far_future_ticker,
                                               number=far_future,
                                               data=far_future_data)

                    near_future.clean_data()
                    far_future.clean_data()

                    near_future.set_expiries(near_future_expiries)
                    far_future.set_expiries(far_future_expiries)

                    fit = near_future.famafrench_test(far_future,
                                                      ust["3 MO"] / 100,
                                                      log=False,
                                                      frequency='M')
                    print(commodity)
                    print(fit.summary())

                    f.write(fit.summary().as_latex())
                    f.write('''\newline''')
                except KeyError:
                    print("Error in " + co)
                    pass
            f.close()

        except Exception as e:
            self.fail(e)
def main(**kwargs):
    data = load_data(start_date="2000-01-01")

    quandl.ApiConfig.api_key = 'Z2WYzGME3qmxnqQgBcdX'
    ust = quandl.get("USTREASURY/YIELD", start_date="2000-01-01")
    all_basis = list()
    f = open('../tex/FFRegressionTables.tex', 'a')
    for co in co_tickers.keys():
        try:
            commodity = co
            expiries = pd.read_excel("../data/" + commodity +
                                     "ContractExpiries.xlsx")
            root_ticker = co_tickers[commodity]
            generic_futures = [1, 2]
            tickers = [root_ticker + str(i) for i in generic_futures]
            near_future_data = data.loc[:, tickers[0]]
            far_future_data = data.loc[:, tickers[1]]
            near_future_ticker = tickers[0]
            far_future_ticker = tickers[1]
            near_future = generic_futures[0]
            far_future = generic_futures[1]

            near_future_expiries = expiries[[
                "Date", str(near_future) + "C_Expiry"
            ]].set_index("Date")
            far_future_expiries = expiries[[
                "Date", str(far_future) + "C_Expiry"
            ]].set_index("Date")

            near_future = GenericFuture(ticker=near_future_ticker,
                                        number=near_future,
                                        data=near_future_data)
            far_future = GenericFuture(ticker=far_future_ticker,
                                       number=far_future,
                                       data=far_future_data)

            near_future.clean_data()
            far_future.clean_data()

            near_future.set_expiries(near_future_expiries)
            far_future.set_expiries(far_future_expiries)

            basis = near_future.calculate_basis(far_future)
            all_basis.append(basis)

            fit = near_future.famafrench_test(far_future,
                                              ust["3 MO"] / 100,
                                              log=False,
                                              frequency='M')
            print(commodity)
            print(fit.summary())

            f.write(fit.summary().as_latex())
            f.write(co)
        except KeyError:
            print("Error in " + co)
            pass

    f.close()

    all_basis = pd.concat(all_basis, axis=1)
    all_basis = all_basis.resample('M', convention='end').last()
    all_basis.describe().round(2).drop(
        index="count").to_latex("../tex/SummaryStatistics.tex")
    ax = sns.boxplot(data=all_basis.drop(columns=["CME_RB1", "CME_PL1"]))
    ax.get_figure().savefig("../tex/CYDistribution.png")

    return