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Python - Statsmodels.tsa.seasonal_decompose - 数据帧头部和尾部缺失值

转载 作者:太空狗 更新时间:2023-10-30 02:58:15 26 4
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我有以下数据框,我称之为“sales_df”:

            Value
Date
2004-01-01 0
2004-02-01 173
2004-03-01 225
2004-04-01 230
2004-05-01 349
2004-06-01 258
2004-07-01 270
2004-08-01 223
... ...
2015-06-01 218
2015-07-01 215
2015-08-01 233
2015-09-01 258
2015-10-01 252
2015-11-01 256
2015-12-01 188
2016-01-01 70

我想将其趋势与其季节性成分分开,为此我通过以下代码使用 statsmodels.tsa.seasonal_decompose:

decomp=sm.tsa.seasonal_decompose(sales_df.Value)
df=pd.concat([sales_df,decomp.trend],axis=1)
df.columns=['sales','trend']

这让我明白了:

            sales       trend
Date
2004-01-01 0 NaN
2004-02-01 173 NaN
2004-03-01 225 NaN
2004-04-01 230 NaN
2004-05-01 349 NaN
2004-06-01 258 NaN
2004-07-01 270 236.708333
2004-08-01 223 248.208333
2004-09-01 243 251.250000
... ... ...
2015-05-01 270 214.416667
2015-06-01 218 215.583333
2015-07-01 215 212.791667
2015-08-01 233 NaN
2015-09-01 258 NaN
2015-10-01 252 NaN
2015-11-01 256 NaN
2015-12-01 188 NaN
2016-01-01 70 NaN

请注意,趋势系列的开头和结尾有 6 个 NaN。所以我问,这样对吗?为什么会这样?

最佳答案

这是预期的,因为如果未指定 filt 参数(如您所做),seasonal_decompose 默认使用对称移动平均线。频率是从时间序列中推断出来的。 https://searchcode.com/codesearch/view/86129185/

关于Python - Statsmodels.tsa.seasonal_decompose - 数据帧头部和尾部缺失值,我们在Stack Overflow上找到一个类似的问题: https://stackoverflow.com/questions/34646033/

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