6

I have a dataframe with a column of weights and one of values. I'd need:

  • to discretise weights and, for each interval of weights, plot the weighted average of values, then
  • to extend the same logic to another variable: discretise z, and for each interval, plot the weighted average of values, weighted by weights

Is there an easy way to achieve this?I have found a way, but it seems a bit cumbersome:

  • I discretise the dataframe with pandas.cut()
  • do a groupby and calculate the weighted average
  • plot the mean of each bin vs the weighted average
  • I have also tried to smooth the curve with a spline, but it doesn't do much

Basically I'm looking for a better way to produce a more smoothed curve.

My output looks like this: enter image description here

and my code, with some random data, is:

import numpy as np
import pandas as pd
import matplotlib.pyplot as plt
import seaborn as sns
from scipy.interpolate import make_interp_spline, BSpline

n=int(1e3)
df=pd.DataFrame()
np.random.seed(10)
df['w']=np.arange(0,n)
df['v']=np.random.randn(n)
df['ranges']=pd.cut(df.w, bins=50)
df['one']=1.
def func(x, df):
    # func() gets called within a lambda function; x is the row, df is the entire table
    b1= x['one'].sum()
    b2 = x['w'].mean()
    b3 = x['v'].mean()       
    b4=( x['w'] * x['v']).sum() / x['w'].sum() if x['w'].sum() >0 else np.nan

    cols=['# items','avg w','avg v','weighted avg v']
    return pd.Series( [b1, b2, b3, b4], index=cols )

summary = df.groupby('ranges').apply(lambda x: func(x,df))

sns.set(style='darkgrid')

fig,ax=plt.subplots(2)
sns.lineplot(summary['avg w'], summary['weighted avg v'], ax=ax[0])
ax[0].set_title('line plot')

xnew = np.linspace(summary['avg w'].min(), summary['avg w'].max(),100)
spl = make_interp_spline(summary['avg w'], summary['weighted avg v'], k=5) #BSpline object
power_smooth = spl(xnew)
sns.lineplot(xnew, power_smooth, ax=ax[1])
ax[1].set_title('not-so-interpolated plot')
8
  • By what are you weighting your average? – Polkaguy6000 Apr 5 '19 at 15:10
  • Imagine a dataframe with 3 columns: w, x, y. I discretise x; for each bucket of the so-discretised x, I want to calculate the weighted average of y, weighted by w. – Pythonista anonymous Apr 5 '19 at 15:12
  • 1
    Note that your comment differs from the question (do you want to discretize the weights or x?) Also, the sentence about smoothing is not clear. Calculating a weighted average will not necessarily smooth anything, depending on the weights, right? So is the purpose smoothing? Or is it calculating the weighted average? – ImportanceOfBeingErnest Apr 5 '19 at 21:40
  • You're right, I was unclear. In reality I will sometimes discretise by the weights, some other times discretise by another variable. The weighted average has nothing to do with the smoothing - smoothing is a separate point. – Pythonista anonymous Apr 5 '19 at 21:49
  • 1
    @Pythonistaanonymous Have you considered using a kernel? To me it looks like that would be the right way to go – Gio Apr 10 '19 at 9:01
1

The first part of your question is rather easy to do.

I'm not sure what you mean with the second part. Do you want a (simplified) reproduction of your code or a new approach that better fits your need?

Anyway i had to look at your code to understand what you mean by weighting the values. I think people would normally expect something different from the term (just as a warning).

Here's the simplified version of your approach:

df['prod_v_w'] = df['v']*df['w']
weighted_avg_v = df.groupby(pd.cut(df.w, bins=50))[['prod_v_w','w']].sum()\
                   .eval('prod_v_w/w')
print(np.allclose(weighted_avg_v, summary['weighted avg v']))
Out[18]: True
1
  • @p-tillmann How would people interpret ;weights', and how would they call what I called weights? – Pythonista anonymous Apr 15 '19 at 13:01
1

I think you're using few values for the interpolation, by changing xnew = np.linspace(summary['avg w'].min(), summary['avg w'].max(),100) to xnew = np.linspace(summary['avg w'].min(), summary['avg w'].max(),500) I get the following:

enter image description here

And changint the spline degree to k=2 i get the following:

enter image description here

I think a good starting point for the interpolation could be n/2 and k=2 as it presents less data deformation. Hope it helps.

0

If I'm understanding correctly, you're trying to recreate a rolling average.

This is already a capability of Pandas dataframes, using the rolling function:

dataframe.rolling(n).mean()

where n is the number of adjacent points used in the 'window' or 'bin' for the average, so you can tweak it for different degrees of smoothness.

You can find examples here:

1
  • I'm not sure it's the same thing. I don't have time series and what I am looking for is weighted averages. Arguably, I should have chosen bar charts rather than line plots, but, basically, I discretise a continuous variable then show the weighted average of something for each of the buckets produced by the discretisation. E.g.imagine a population survey; I bucket by age range, and for each age range I show the weighted average, I don't know, saving rate weighted by income. Something like that. – Pythonista anonymous Apr 5 '19 at 14:46
0

I think this is a solution to what you are seeking. It uses rolling window as others have suggested. a little bit more work was needed to get it working properly.

df["w*v"] = df["w"] * df["v"]

def rolling_smooth(df,N):
    df_roll = df.rolling(N).agg({"w":["sum","mean"],"v":["mean"],"w*v":["sum"]})
    df_roll.columns = [' '.join(col).strip() for col in df_roll.columns.values]
    df_roll['weighted avg v'] = np.nan
    cond = df_roll['w sum'] > 0
    df_roll.loc[cond,'weighted avg v'] = df_roll.loc[cond,'w*v sum'] / df_roll.loc[cond,'w sum']
    return df_roll

df_roll_100 = rolling_smooth(df,100)
df_roll_200 = rolling_smooth(df,200)

plt.plot(summary['avg w'], summary['weighted avg v'],label='original')
plt.plot(df_roll_100["w mean"],df_roll_100["weighted avg v"],label='rolling N=100')
plt.plot(df_roll_200["w mean"],df_roll_200["weighted avg v"],label='rolling N=200')
plt.legend()

enter image description here

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.