3

I have few weeks data with units sold given xs[weeks] = [1,2,3,4] ys['Units Sold'] = [1043,6582,5452,7571]

from the given series, we can see that although there is a drop from xs[2] to xs[3] but overall the trend is increasing. How to detect the trend in small time series dataset.

Is finding a slope for the line is the best way? And how to calculate slope angle of a line in python?

  • 1
    Detecting trends on time series is a whole topic on itself. Since the problem is not strictly defined (there is no hardline definition for what constitutes a trend and what is just a small variation), there is no definitive answer. See possible closed duplicate How to detect significant change / trend in a time series data?, or a related question I answered some time ago How to calculate and plot multiple linear trends for a time series?. – jdehesa Apr 12 '19 at 10:18
  • "Is finding a slope for the line is the best way?" The best way surely depends on the underlying models for the data and the noise. If the noise is large and the data set is small, most of the time you'll want to answer with "I don't know the trend with certainty", which would probably all you can do. – Trilarion Apr 12 '19 at 11:04
6

I have gone through the same issue that you face today. In order to detect the trend, I couldn't find a specific function to handle the situation.

I found a really helpful function ie, numpy.polyfit()

numpy.polyfit(x, y, deg, rcond=None, full=False, w=None, cov=False) 
                                                    

[Check this Official Documentation]

You Can use the function like this

def trenddetector(list_of_index,array_of_data, order=1):
    result = np.polyfit(list_of_index, list(data), order)
    slope = result[-2]
    return float(slope)

this function returns a float value that indicates the trend of your data and also you can anlayse it by something like this

for example,

if the slope is a +ve value --> increasing trend

if the slope is a -ve value --> decreasing trend

if the slope is a zero value --> No trend

play with this function and find out the correct threshold as per your problem and give it as a condition.

Example Code for your Solution

import numpy as np
def trendline(index,data, order=1):
    coeffs = np.polyfit(index, list(data), order)
    slope = coeffs[-2]
    return float(slope)

index=[1,2,3,4]
List=[1043,6582,5452,7571]
resultent=trendline(index,List)
print(resultent)  

RESULT

1845.3999999999999

As per this output, The result is much greater than zero so it shows your data is increasing steadily.

| improve this answer | |
1

One approach could be to use a Moving Average (lots of variations of this, you may see EMA or SMA thrown around) which looks at the current time-step and n number of previous steps, averages these and uses this as a sort of 'smoothed' value. This will give you a better indication of the way the data is actually moving, as one small decrease isnt going to have a dramatic impact on the gradient of the line.

Depending on the domain of your problem, it may also be worth checking out some statistics used in the financial sector, such as DMI (Directional Movement Indicator) or MACD.

Hope this helps

| improve this answer | |

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.