【问题标题】:How to calculate and plot multiple linear trends for a time series?如何计算和绘制时间序列的多个线性趋势?
【发布时间】:2017-06-13 21:14:31
【问题描述】:

将线性趋势拟合到一组数据是直截了当的。但是如何将多条趋势线拟合到一个时间序列中呢?我将上涨和下跌趋势定义为高于或低于指数移动平均线的价格。当价格高于 EMA 时,我需要适应积极趋势,而当趋势变为消极时,我需要适应新的消极趋势线,依此类推。在我的熊猫数据框中market_data['Signal']下方的代码中,告诉我趋势是向上+1还是向下-1。

我猜我需要某种循环,但我无法弄清楚逻辑......

import pandas as pd
import pandas_datareader.data as web
import datetime as dt
import numpy as np
import matplotlib.pyplot as plt
import matplotlib.patches as mpatches
import matplotlib.dates as mdates

#Colecting data
market = '^DJI'
end = dt.datetime(2016, 12, 31)
start = dt.date(end.year-10, end.month, end.day)
market_data = web.DataReader(market, 'yahoo', start, end)

#Calculating EMA and difference
market_data['ema'] = market_data['Close'].ewm(200).mean()
market_data['diff_pc'] = (market_data['Close'] / market_data['ema']) - 1

#Defining bull/bear signal
TH = 0
market_data['Signal'] = np.where(market_data['diff_pc'] > TH, 1, 0)
market_data['Signal'] = np.where(market_data['diff_pc'] < -TH, -1, market_data['Signal'])

为了适应趋势线,我想使用 numpy polyfit

x = np.array(mdates.date2num(market_data.index.to_pydatetime()))
fit = np.polyfit(x, market_data['Close'], 1)

理想情况下,我只想绘制信号持续时间超过 n 个周期的趋势。

结果应该是这样的:

【问题讨论】:

  • 我不确定我是否完全理解...所以您想为数据段创建多个线性拟合,每个数据段在@987654326 中由 +1 或 -1 分隔@,对吗?
  • 是的,没错。理想情况下,只有当我连续有超过 n +1 ot -1 时..

标签: python numpy for-loop time-series trend


【解决方案1】:

这里有一个解决方案。 min_signal 是改变趋势所需的连续信号的数量。我导入了Seaborn 以获得更好看的情节,但如果没有那条线,它的工作原理都是一样的:

import pandas as pd
import pandas_datareader.data as web
import datetime as dt
import numpy as np
import matplotlib.pyplot as plt
import matplotlib.patches as mpatches
import matplotlib.dates as mdates

#Colecting data
market = '^DJI'
end = dt.datetime(2016, 12, 31)
start = dt.date(end.year-10, end.month, end.day)
market_data = web.DataReader(market, 'yahoo', start, end)

#Calculating EMA and difference
market_data['ema'] = market_data['Close'].ewm(200).mean()
market_data['diff_pc'] = (market_data['Close'] / market_data['ema']) - 1

#Defining bull/bear signal
TH = 0
market_data['Signal'] = np.where(market_data['diff_pc'] > TH, 1, 0)
market_data['Signal'] = np.where(market_data['diff_pc'] < -TH, -1, market_data['Signal'])


# Plot data and fits

import seaborn as sns  # This is just to get nicer plots

signal = market_data['Signal']

# How many consecutive signals are needed to change trend
min_signal = 2

# Find segments bounds
bounds = (np.diff(signal) != 0) & (signal[1:] != 0)
bounds = np.concatenate(([signal[0] != 0], bounds))
bounds_idx = np.where(bounds)[0]
# Keep only significant bounds
relevant_bounds_idx = np.array([idx for idx in bounds_idx if np.all(signal[idx] == signal[idx:idx + min_signal])])
# Make sure start and end are included
if relevant_bounds_idx[0] != 0:
    relevant_bounds_idx = np.concatenate(([0], relevant_bounds_idx))
if relevant_bounds_idx[-1] != len(signal) - 1:
    relevant_bounds_idx = np.concatenate((relevant_bounds_idx, [len(signal) - 1]))

# Iterate segments
for start_idx, end_idx in zip(relevant_bounds_idx[:-1], relevant_bounds_idx[1:]):
    # Slice segment
    segment = market_data.iloc[start_idx:end_idx + 1, :]
    x = np.array(mdates.date2num(segment.index.to_pydatetime()))
    # Plot data
    data_color = 'green' if signal[start_idx] > 0 else 'red'
    plt.plot(segment.index, segment['Close'], color=data_color)
    # Plot fit
    coef, intercept = np.polyfit(x, segment['Close'], 1)
    fit_val = coef * x + intercept
    fit_color = 'yellow' if coef > 0 else 'blue'
    plt.plot(segment.index, fit_val, color=fit_color)

这是结果:

【讨论】:

  • 感谢您的努力。两个问题请。 1) 图表中是否包含 market_data['Close'] 的所有值或仅满足连续信号条件的数据。我需要图表中的整个时间序列,尽管拟合仅适用于段。 2) 如何在 x 轴上获取日期?
  • @cJc 就像现在一样,所有market_data['Close'] 都被绘制(绿色和红色),拟合(黄色和蓝色)也覆盖了整个 X 轴;也就是说,每个数据点都在某个段内(每个段在找到min_signal 连续的非零相等值时开始)。如果您需要不同的东西,请尝试准确指定数据的分段方式。每个段的日期仍在segment.index 上。我使用 mdates.date2numto_pydatetime 来转换日期,因为这是您最初在代码中使用的。
  • 1) 太好了。 2)我知道,因为 numpy(和 polyfit)不处理 pandas 日期格式。如何更改代码以在 x 轴上绘制日期?
  • @cJc 您可以将plot 调用中的x 替换为segment.index。我已经更改了答案中的代码和图片。如果您想要更高级的日期格式,可以查看some of the Matplotlib examples
  • 好东西,tnx vm 为您提供所有帮助!
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