【问题标题】:Logistic Regression SKLEARN could not convert string to float: 'DailyReturns'逻辑回归 SKLEARN 无法将字符串转换为浮点数:“DailyReturns”
【发布时间】:2019-10-22 10:31:09
【问题描述】:

尝试运行逻辑回归,但我收到此错误could not convert string to float: 'DailyReturns' 我检查了我的数据DailyReturns 是列名。

另外:apple['DailyReturns'].dtype 提供 dtype('float64')apple['_lortrain'].dtype 提供 dtype('float64')

错误:

ValueError: could not convert string to float: 'DailyReturns'

代码:

_lortrain = np.sign(apple['DailyReturns'])
apple['_lortrain'] = _lortrain
_data_train, _data_test,  = train_test_split(apple,test_size = 0.2)
X_train = _data_train.columns[4:9].values.reshape(-1,1)
y_train = _data_train['_lortrain'].values.reshape(-1,1)
#X_train = X_train.apply(pd.to_numeric, errors='coerce')
#y_train = y_train.apply(pd.to_numeric, errors='coerce')
X_test = _data_test.columns[4:9].values.reshape(-1,1)
y_test = _data_test['_lortrain'].values.reshape(-1,1)
_LogR = lor(C = 1e6, penalty='l2', tol=0.01, solver='saga')
_LogR.fit(X_train,y_train)
_logr = _LogR.predict(X_test)

数据:

apple.columns[4:9]

Index(['DailyReturns', 'Lag_Returns_1', 'Lag_Returns_2', 'Lag_Returns_3',
       'Lag_Returns_4'],
      dtype='object')

Close   DailyReturns    Lag_Returns_1   Lag_Returns_2   Lag_Returns_3   Lag_Returns_4   Lag_Returns_5
Date                            
1980-12-22  0.53    0.058269    0.040822    0.042560    0.021979    -0.085158   -0.040005
1980-12-23  0.55    0.037041    0.058269    0.040822    0.042560    0.021979    -0.085158
1980-12-24  0.58    0.053110    0.037041    0.058269    0.040822    0.042560    0.021979
1980-12-26  0.63    0.082692    0.053110    0.037041    0.058269    0.040822    0.042560
1980-12-29  0.64    0.015748    0.082692    0.053110    0.037041    0.058269    0.040822

【问题讨论】:

  • 始终发布完整的错误消息。

标签: python-3.x scikit-learn logistic-regression sklearn-pandas


【解决方案1】:

_data_train.columns[4:9].values 是列名(字符串)列表,而不是列数据。你应该使用_data_train.iloc[:,4:9].values。或者,更好的是:

X_train = _data_train.iloc[:,4:9] # No values or reshape

【讨论】:

    猜你喜欢
    • 1970-01-01
    • 2018-11-19
    • 2020-10-16
    • 2018-02-15
    • 2020-05-25
    • 2018-09-20
    • 2019-02-06
    • 2019-02-08
    • 2018-09-14
    相关资源
    最近更新 更多