- QuantReg façade for statsmodels
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@ -23,6 +23,8 @@ class ARIMA(fts.FTS):
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self.minOrder = 1
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def train(self, data, sets, order=1, parameters=None):
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ndata = np.array(self.doTransformations(data))
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if parameters is not None:
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self.p = parameters[0]
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self.d = parameters[1]
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@ -31,7 +33,7 @@ class ARIMA(fts.FTS):
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self.shortname = "ARIMA(" + str(self.p) + "," + str(self.d) + "," + str(self.q) + ")"
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old_fit = self.model_fit
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self.model = stats_arima(data, order=(self.p, self.d, self.q))
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self.model = stats_arima(ndata, order=(self.p, self.d, self.q))
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#try:
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self.model_fit = self.model.fit(disp=0)
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#except:
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@ -3,6 +3,7 @@
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import numpy as np
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from statsmodels.regression.quantile_regression import QuantReg
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from statsmodels.tsa.tsatools import lagmat
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from pyFTS import fts
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@ -12,13 +13,60 @@ class QuantileRegression(fts.FTS):
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self.name = "QR"
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self.detail = "Quantile Regression"
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self.isHighOrder = True
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self.hasPointForecasting = True
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self.hasIntervalForecasting = True
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self.benchmark_only = True
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self.minOrder = 1
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self.alpha = 0.5
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self.upper_qt = None
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self.mean_qt = None
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self.lower_qt = None
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def train(self, data, sets, order=1, parameters=None):
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pass
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self.order = order
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tmp = np.array(self.doTransformations(data))
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lagdata, ndata = lagmat(tmp, maxlag=order, trim="both", original='sep')
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uqt = QuantReg(ndata, lagdata).fit(1 - self.alpha)
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mqt = QuantReg(ndata, lagdata).fit(0.5)
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lqt = QuantReg(ndata, lagdata).fit(self.alpha)
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self.upper_qt = [uqt.params[k] for k in uqt.params.keys()]
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self.mean_qt = [mqt.params[k] for k in mqt.params.keys()]
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self.lower_qt = [lqt.params[k] for k in lqt.params.keys()]
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def linearmodel(self,data,params):
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return params[0] + sum([ data[k] * params[k+1] for k in np.arange(0, self.order) ])
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def forecast(self, data):
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pass
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ndata = np.array(self.doTransformations(data))
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l = len(ndata)
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ret = []
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for k in np.arange(self.order, l):
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sample = ndata[k - self.order : k]
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ret.append(self.linearmodel(sample, self.mean_qt))
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ret = self.doInverseTransformations(ret, params=[data[self.order - 1:]])
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return ret
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def forecastInterval(self, data):
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ndata = np.array(self.doTransformations(data))
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l = len(ndata)
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ret = []
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for k in np.arange(self.order - 1, l):
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sample = ndata[k - self.order: k]
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up = self.linearmodel(sample, self.upper_qt)
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down = self.linearmodel(sample, self.down_qt)
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ret.append([up, down])
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ret = self.doInverseTransformations(ret, params=[data[self.order - 1:]])
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return ret
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@ -28,38 +28,27 @@ os.chdir("/home/petronio/dados/Dropbox/Doutorado/Codigos/")
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taiexpd = pd.read_csv("DataSets/TAIEX.csv", sep=",")
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taiex = np.array(taiexpd["avg"][:5000])
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from statsmodels.tsa.arima_model import ARIMA as stats_arima
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#from statsmodels.tsa.arima_model import ARIMA as stats_arima
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from statsmodels.tsa.tsatools import lagmat
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model = stats_arima(taiex[:1600], (2,0,1)).fit(disp=0)
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tmp = np.arange(10)
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ar = np.array(taiex[1598:1600]).dot( model.arparams )
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#print(ar)
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res = ar - taiex[1600]
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#print(res)
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ma = np.array([res]).dot(model.maparams)
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#print(ma)
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print(ar + ma)
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print(taiex[1598:1601])
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print(taiex[1600])
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lag, a = lagmat(tmp, maxlag=2, trim="both", original='sep')
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print(lag)
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print(a)
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#from pyFTS.benchmarks import distributed_benchmarks as bchmk
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#from pyFTS.benchmarks import parallel_benchmarks as bchmk
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#from pyFTS.benchmarks import benchmarks as bchmk
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from pyFTS.benchmarks import arima
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#from pyFTS.benchmarks import arima
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tmp = arima.ARIMA("")
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tmp.train(taiex[:1600],None,parameters=(2,0,1))
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teste = tmp.forecast(taiex[1598:1601])
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#tmp = arima.ARIMA("")
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#tmp.train(taiex[:1600],None,parameters=(2,0,1))
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#teste = tmp.forecast(taiex[1598:1601])
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print(teste)
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#print(teste)
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#bchmk.teste(taiex,['192.168.0.109', '192.168.0.101'])
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