12

I have a pandas dataframe which contains date and some values something like below

Original data:

list = [('2018-10-29', 6.1925), ('2018-10-29', 6.195), ('2018-10-29', 1.95833333333333), 
        ('2018-10-29', 1.785), ('2018-10-29', 3.05), ('2018-10-29', 1.30666666666667), 
        ('2018-10-29', 1.6325), ('2018-10-30', 1.765), ('2018-10-30', 1.265), 
        ('2018-10-30', 2.1125), ('2018-10-30', 2.16714285714286), ('2018-10-30', 1.485), 
        ('2018-10-30', 1.72), ('2018-10-30', 2.754), ('2018-10-30', 1.79666666666667), 
        ('2018-10-30', 1.27833333333333), ('2018-10-30', 3.48), ('2018-10-30', 6.19), 
        ('2018-10-30', 6.235), ('2018-10-30', 6.11857142857143), ('2018-10-30', 6.088), 
        ('2018-10-30', 4.3), ('2018-10-30', 7.80666666666667), 
        ('2018-10-30', 7.78333333333333), ('2018-10-30', 10.9766666666667), 
        ('2018-10-30', 2.19), ('2018-10-30', 1.88)]

After loading into pandas

df = pd.DataFrame(list)


             0          1
0   2018-10-29   6.192500
1   2018-10-29   6.195000
2   2018-10-29   1.958333
3   2018-10-29   1.785000
4   2018-10-29   3.050000
5   2018-10-29   1.306667
6   2018-10-29   1.632500
7   2018-10-30   1.765000
8   2018-10-30   1.265000
9   2018-10-30   2.112500
10  2018-10-30   2.167143
11  2018-10-30   1.485000
12  2018-10-30   1.720000
13  2018-10-30   2.754000
14  2018-10-30   1.796667
15  2018-10-30   1.278333
16  2018-10-30   3.480000
17  2018-10-30   6.190000
18  2018-10-30   6.235000
19  2018-10-30   6.118571
20  2018-10-30   6.088000
21  2018-10-30   4.300000
22  2018-10-30   7.806667
23  2018-10-30   7.783333
24  2018-10-30  10.976667
25  2018-10-30   2.190000
26  2018-10-30   1.880000

This is how I load up the dataframe

df = pd.DataFrame(list)
df[0] = pd.to_datetime(df[0], errors='coerce')
df.set_index(0, inplace=True)

Now I want to find the slope. Upon research in the internet, I found this is what is needed to be done to get the slope

trend_coord = list(map(list, zip(df.index.strftime('%Y-%m-%d'), sm.tsa.seasonal_decompose(df.iloc[:,0].values).trend.interpolate(method='linear',axis=0).fillna(0).values)))

results = sm.OLS(np.asarray(sm.tsa.seasonal_decompose(df.iloc[:,0].values).trend.interpolate(method='linear', axis=0).fillna(0).values), sm.add_constant(np.array([i for i in range(len(trend_coord))])), missing='drop').fit()

slope = results.params[1]
print(slope)

But I get the below error

Traceback (most recent call last):
  File "/home/souvik/Music/UI_Server2/test35.py", line 11, in <module>
    trend_coord = list(map(list, zip(df.index.strftime('%Y-%m-%d'), sm.tsa.seasonal_decompose(df.iloc[:,0].values).trend.interpolate(method='linear',axis=0).fillna(0).values)))
  File "/home/souvik/django_test/webdev/lib/python3.5/site-packages/statsmodels/tsa/seasonal.py", line 127, in seasonal_decompose
    raise ValueError("You must specify a freq or x must be a "
ValueError: You must specify a freq or x must be a pandas object with a timeseries index with a freq not set to None

Now if I add a freq parameter to the seasonal_decompose method such as

trend_coord = list(map(list, zip(df.index.strftime('%Y-%m-%d'), sm.tsa.seasonal_decompose(df.iloc[:,0].values, freq=1).trend.interpolate(method='linear',axis=0).fillna(0).values)))

Then I get an error like

Traceback (most recent call last):
  File "/home/souvik/Music/UI_Server2/test35.py", line 11, in <module>
    trend_coord = list(map(list, zip(df.index.strftime('%Y-%m-%d'), sm.tsa.seasonal_decompose(df.iloc[:,0].values, freq=1).trend.interpolate(method='linear',axis=0).fillna(0).values)))
AttributeError: 'numpy.ndarray' object has no attribute 'interpolate'

However if I get rid of any fine graining of data such as interpolate etc and do something like below

trend_coord = sm.tsa.seasonal_decompose(df.iloc[:,0].values, freq=1, model='additive').trend

results = sm.OLS(np.asarray(trend_coord),
                 sm.add_constant(np.array([i for i in range(len(trend_coord))])), missing='drop').fit()
slope = results.params[1]
print(">>>>>>>>>>>>>>>> slope", slope)

Then I get a slope value of 0.13668559218559242.

But I am not sure if this is the correct way to find out the slope and if even the value is right.

Is there a better way to find out slope?

1
  • 1
    dont call variables after built ins - you are shadowing them. It is a bad habit to use list,dict,tuple,set,max,min,abs,sum,... as variable names. Commented Nov 1, 2018 at 15:22

3 Answers 3

25

I will take part of Franco answer, but you don't need sklearn. You can easily do it with scipy.

import datetime as dt
from scipy import stats

df = pd.DataFrame(list, columns=['date', 'value'])
df.date =pd.to_datetime(df.date)
df['date_ordinal'] = pd.to_datetime(df['date']).map(dt.datetime.toordinal)
slope, intercept, r_value, p_value, std_err = stats.linregress(df['date_ordinal'], df['value'])

slope
Out[114]: 0.80959404761905
1
  • 2
    Welcome to SO! When you give an answer, eve if it is right, try to explain it a little bit. Commented Oct 22, 2019 at 12:02
3

To get the slope and intercept of a linear regression line (y = intercept + slope * x) for a simple case like this, you need to use numpy polyfit() method. My explanation is inline with code below.

# You should only need numpy and pandas
import numpy as np
import pandas as pd

# Now your list 
list = [('2018-10-29', 6.1925), ('2018-10-29', 6.195), ('2018-10-29', 1.95833333333333), 
        ('2018-10-29', 1.785), ('2018-10-29', 3.05), ('2018-10-29', 1.30666666666667), 
        ('2018-10-29', 1.6325), ('2018-10-30', 1.765), ('2018-10-30', 1.265), 
        ('2018-10-30', 2.1125), ('2018-10-30', 2.16714285714286), ('2018-10-30', 1.485), 
        ('2018-10-30', 1.72), ('2018-10-30', 2.754), ('2018-10-30', 1.79666666666667), 
        ('2018-10-30', 1.27833333333333), ('2018-10-30', 3.48), ('2018-10-30', 6.19), 
        ('2018-10-30', 6.235), ('2018-10-30', 6.11857142857143), ('2018-10-30', 6.088), 
        ('2018-10-30', 4.3), ('2018-10-30', 7.80666666666667), 
        ('2018-10-30', 7.78333333333333), ('2018-10-30', 10.9766666666667), 
        ('2018-10-30', 2.19), ('2018-10-30', 1.88)]

# Create a single pandas DataFrame
df = pd.DataFrame(list)

# Make it into a Time Series with 'date' and 'value' columns
ts = pd.DataFrame(list, columns=['date', 'value'])

#print it to check it
ts.head(10)

# Now separate it into x and y lists

x = ts['date']
y = ts['value'].astype(float)

# Create a sequance of integers from 0 to x.size to use in np.polyfit() call
x_seq = np.arange(x.size) # should give you [ 0  1  2  3  4 ... 26]

# call numpy polyfit() method with x_seq, y 
fit = np.polyfit(x_seq, y, 1)
fit_fn = np.poly1d(fit)
print('Slope = ', fit[0], ", ","Intercept = ", fit[1])
print(fit_fn)

Slope = 0.1366855921855925 , Intercept = 1.9827865961199274

0.1367 x + 1.983

1
  • BTW, the above answer is for python 3 only
    – seedhom
    Commented Feb 5, 2020 at 17:47
2

You can use datetime.toordinal to map each date to an integer and sklearn.linear_model to fit a linear regression model on your data to obtain the slope like:

import datetime as dt
from sklearn import linear_model

df = pd.DataFrame(list, columns=['date', 'value'])
df['date_ordinal'] = pd.to_datetime(df['date']).map(dt.datetime.toordinal)
reg = linear_model.LinearRegression()
reg.fit(df['date_ordinal'].values.reshape(-1, 1), df['value'].values)

reg.coef_

array([0.80959405])

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