我正在运行这段代码。使用Prophet对多个时间序列进行预测,但不知道如何评估模型。
import pandas as pd
from fbprophet import Prophet
data = pd.read_csv(r'C:\Users\XXX.csv')
ids = data['id'].unique()
series = []
for id in ids:
f = data[data['id'] == id]
series.append(f)
def run_prophet(timeserie):
model = Prophet(yearly_seasonality=False,daily_seasonality=False)
model.fit(timeserie)
forecast = model.make_future_dataframe(periods=90, include_history=False)
forecast = model.predict(forecast)
return forecast
results = list(map(lambda timeserie: run_prophet(timeserie), series))
results[0]
results[1]数据的结构如下所示:
id ds y
id1 2017-01-01 12
id2 2017-01-01 15
id3 2017-01-01 16发布于 2020-07-13 13:16:22
你可以这样做:导入这个:from sklearn.metrics import mean_squared_error, r2_score, mean_absolute_error,然后导入r2_score(original price,predicted price),其余的都是一样的,注意:两个数组应该有相同长度的样本。
https://stackoverflow.com/questions/58803505
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