python 随机生成基金数据
作者:互联网
随机生成基金数据, 涨幅服从的分布和中欧基金的分布一致
import numpy as np from sklearn.neighbors import KernelDensity import pandas as pd import seaborn as sns import matplotlib.pyplot as plt 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data = np.array(data) kde = KernelDensity(kernel='gaussian', bandwidth=0.2).fit(data.reshape(-1, 1)) data2 = kde.sample(n_samples=1158) # print(data2) def showZhangFu(data): data = data[-250:] data = np.array(data).cumsum() df = pd.DataFrame(dict(time=np.arange(len(data)), value=data)) g = sns.relplot(x="time", y="value", kind="line", data=df) g.figure.autofmt_xdate() plt.show() showZhangFu(data2)
标签:1.3,python,0.03,生成,0.7035,随机,np,import,data 来源: https://www.cnblogs.com/dzqdzq/p/15159582.html