m0_74420115 2024-05-01 18:02 采纳率: 71.9%
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python怎么画出预测和实际的图

下面是我的代码,我找到了最优的预测股票的数据,怎么将他和实际的股票数据用不同颜色来画到一张图上

import pandas as pd
file_path = r"D:\\findata.csv"  
df = pd.read_csv(file_path)
def Stock_Price_LSTM_Data_Precesing(df,mem_his_days,pre_days):
    df.dropna(inplace=True)
    df.sort_index(inplace=True)
    df['label']= df['Close'].shift(-pre_days)
    from sklearn.preprocessing import StandardScaler
    scaler = StandardScaler()
    sca_X=scaler.fit_transform(df.iloc[:,:-1])   
    mem_his_days = 10
    
    from collections import deque
    deq = deque(maxlen=mem_his_days)
    
    X = []
    for i in sca_X:
        deq.append(list(i))
        if len(deq)==mem_his_days:
            X.append(list(deq))
    X_lately = X[-pre_days:]
    X = X[:-pre_days]
    y = df['label'].values[mem_his_days-1:-pre_days]
    
    
    import numpy as np
    X = np.array(X)
    y = np.array(y)
    return X,y,X_lately
 
X,y,X_lately = Stock_Price_LSTM_Data_Precesing(df,5,10)
pre_days = 10
# mem_days=[5,10,15]
# lstm_layers=[1,2,3]
# dense_layers=[1,2,3]
# units = [16,32]
mem_days=[15]
lstm_layers=[3]
dense_layers=[2]
units =[32]
from tensorflow.keras.callbacks import ModelCheckpoint
 
for the_mem_days in mem_days:
    for the_lstm_layers in lstm_layers:
        for the_dense_layers in dense_layers:
            for the_units in units:
                filepath=f"./thebestmodel/{{val_mape:.2f}}{{epoch:02d}}men{the_mem_days}lstm{the_lstm_layers}dense{the_dense_layers}unit{the_units}.keras"
                checkpoint = ModelCheckpoint(
                    filepath=filepath,
                    save_weights_only=False,
                    monitor='val_mape',
                    mode='min',
                    save_best_only=True)
                X,y,X_lately = Stock_Price_LSTM_Data_Precesing(df,the_mem_days,pre_days)
                from sklearn.model_selection import train_test_split
                X_train,X_test,y_train,y_test = train_test_split(X,y,shuffle=False,test_size=0.1)
                import tensorflow as tf
                from tensorflow.keras.models import Sequential
                from tensorflow.keras.layers import LSTM,Dense,Dropout
                model = Sequential()
                model.add(LSTM(the_units,input_shape=X.shape[1:],activation='relu',return_sequences=True))
                model.add(Dropout(0.1))
                for i in range(the_lstm_layers):
                    model.add(LSTM(the_units,activation='relu',return_sequences=True))
                    model.add(Dropout(0.1))
                
                model.add(LSTM(the_units,activation='relu'))
                model.add(Dropout(0.1))
                for i in range(the_dense_layers):
                    model.add(Dense(the_units,activation='relu'))
                    model.add(Dropout(0.1))
                
                model.add(Dense(1))
                model.compile(optimizer='adam',
                             loss='mse',
                             metrics=['mape'])
                model.fit(X_train,y_train,batch_size=32,epochs=50,validation_data=(X_test,y_test),callbacks=[checkpoint])

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  • 百锦再@新空间创想科技 优质创作者: 编程框架技术领域 2024-05-01 18:02
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    抱歉,我无法理解您的问题。 您能否提供更多详细信息,以便我能更好地帮助您回答问题?感谢您的理解。


    有问题你别着急,评论留言都可以,看到马上就回复,尽量及时补充齐
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问题事件

  • 系统已结题 5月12日
  • 已采纳回答 5月4日
  • 创建了问题 5月1日