Let’s say you might be in a buyer care heart, and also you wish to know the chance distribution of the variety of calls per minute, or in different phrases, you wish to reply the query: what’s the chance of receiving zero, one, two, … and so on., calls per minute? You want this distribution so as to predict the chance of receiving completely different variety of calls based mostly on which you’ll be able to plan what number of staff are wanted, whether or not or not an growth is required, and so on.
In an effort to let our resolution ‘knowledge knowledgeable’ we begin by gathering knowledge from which we attempt to infer this distribution, or in different phrases, we wish to generalize from the pattern knowledge to the unseen knowledge which is often known as the inhabitants in statistical phrases. That is the essence of statistical inference.
From the collected knowledge we will compute the relative frequency of every worth of calls per minute. For instance, if the collected knowledge over time seems one thing like this: 2, 2, 3, 5, 4, 5, 5, 3, 6, 3, 4, … and so on. This knowledge is obtained by counting the variety of calls obtained each minute. In an effort to compute the relative frequency of every worth you may depend the variety of occurrences of every worth divided by the overall variety of occurrences. This manner you’ll find yourself with one thing just like the gray curve within the beneath determine, which is equal to the histogram of the info on this instance.

Another choice is to imagine that every knowledge level from our knowledge is a realization of a random variable (X) that follows a sure chance distribution. This chance distribution represents all of the attainable values which can be generated if we had been to gather this knowledge lengthy into the longer term, or in different phrases, we will say that it represents the inhabitants from which our pattern knowledge was collected. Moreover, we will assume that every one the info factors come from the identical chance distribution, i.e., the info factors are identically distributed. Furthermore, we assume that the info factors are unbiased, i.e., the worth of 1 knowledge level within the pattern is just not affected by the values of the opposite knowledge factors. The independence and an identical distribution (iid) assumption of the pattern knowledge factors permits us to proceed mathematically with our statistical inference drawback in a scientific and easy method. In additional formal phrases, we assume {that a} generative probabilistic mannequin is accountable for producing the iid knowledge as proven beneath.

On this specific instance, a Poisson distribution with imply worth λ = 5 is assumed to have generated the info as proven within the blue curve within the beneath determine. In different phrases, we assume right here that we all know the true worth of λ which is usually not recognized and must be estimated from the info.

Versus the earlier technique wherein we needed to compute the relative frequency of every worth of calls per minute (e.g., 12 values to be estimated on this instance as proven within the gray determine above), now we solely have one parameter that we purpose at discovering which is λ. One other benefit of this generative mannequin strategy is that it’s higher when it comes to generalization from pattern to inhabitants. The assumed chance distribution will be mentioned to have summarized the info in a sublime method that follows the Occam’s razor precept.
Earlier than continuing additional into how we purpose at discovering this parameter λ, let’s present some Python code first that was used to generate the above determine.
# Import the Python libraries that we'll want on this article
import pandas as pd
import matplotlib.pyplot as plt
import numpy as np
import seaborn as sns
import math
from scipy import stats
# Poisson distribution instance
lambda_ = 5
sample_size = 1000
data_poisson = stats.poisson.rvs(lambda_,measurement= sample_size) # generate knowledge
# Plot the info histogram vs the PMF
x1 = np.arange(data_poisson.min(), data_poisson.max(), 1)
fig1, ax = plt.subplots()
plt.bar(x1, stats.poisson.pmf(x1,lambda_),
label="Possion distribution (PMF)",coloration = BLUE2,linewidth=3.0,width=0.3,zorder=2)
ax.hist(data_poisson, bins=x1.measurement, density=True, label="Knowledge histogram",coloration = GRAY9, width=1,zorder=1,align='left')
ax.set_title("Knowledge histogram vs. Poisson true distribution", fontsize=14, loc="left")
ax.set_xlabel('Knowledge worth')
ax.set_ylabel('Chance')
ax.legend()
plt.savefig("Possion_hist_PMF.png", format="png", dpi=800)
Our drawback now’s about estimating the worth of the unknown parameter λ utilizing the info we collected. That is the place we’ll use the technique of moments (MoM) strategy that seems within the title of this text.
First, we have to outline what is supposed by the second of a random variable. Mathematically, the kth second of a discrete random variable (X) is outlined as follows:

Take the primary second E(X) for example, which can also be the imply μ of the random variable, and assuming that we gather our knowledge which is modeled as N iid realizations of the random variable X. An affordable estimate of μ is the pattern imply which is outlined as follows:

Thus, so as to acquire a MoM estimate of a mannequin parameter that parametrizes the chance distribution of the random variable X, we first write the unknown parameter as a operate of a number of of the kth moments of the random variable, then we exchange the kth second with its pattern estimate. The extra unknown parameters we now have in our fashions, the extra moments we want.
In our Poisson mannequin instance, that is quite simple as proven beneath.

Within the subsequent half, we take a look at our MoM estimator on the simulated knowledge we had earlier. The Python code for acquiring the estimator and plotting the corresponding chance distribution utilizing the estimated parameter is proven beneath.
# Technique of moments estimator utilizing the info (Poisson Dist)
lambda_hat = sum(data_poisson) / len(data_poisson)
# Plot the MoM estimated PMF vs the true PMF
x1 = np.arange(data_poisson.min(), data_poisson.max(), 1)
fig2, ax = plt.subplots()
plt.bar(x1, stats.poisson.pmf(x1,lambda_hat),
label="Estimated PMF",coloration = ORANGE1,linewidth=3.0,width=0.3)
plt.bar(x1+0.3, stats.poisson.pmf(x1,lambda_),
label="True PMF",coloration = BLUE2,linewidth=3.0,width=0.3)
ax.set_title("Estimated Poisson distribution vs. true distribution", fontsize=14, loc="left")
ax.set_xlabel('Knowledge worth')
ax.set_ylabel('Chance')
ax.legend()
#ax.grid()
plt.savefig("Possion_true_vs_est.png", format="png", dpi=800)
The beneath determine exhibits the estimated distribution versus the true distribution. The distributions are fairly shut indicating that the MoM estimator is an affordable estimator for our drawback. In reality, changing expectations with averages within the MoM estimator implies that the estimator is a constant estimator by the legislation of enormous numbers, which is an efficient justification for utilizing such estimator.

One other MoM estimation instance is proven beneath assuming the iid knowledge is generated by a standard distribution with imply μ and variance σ² as proven beneath.

On this specific instance, a Gaussian (regular) distribution with imply worth μ = 10 and σ = 2 is assumed to have generated the info. The histogram of the generated knowledge pattern (pattern measurement = 1000) is proven in gray within the beneath determine, whereas the true distribution is proven within the blue curve.

The Python code that was used to generate the above determine is proven beneath.
# Regular distribution instance
mu = 10
sigma = 2
sample_size = 1000
data_normal = stats.norm.rvs(loc=mu, scale=sigma ,measurement= sample_size) # generate knowledge
# Plot the info histogram vs the PDF
x2 = np.linspace(data_normal.min(), data_normal.max(), sample_size)
fig3, ax = plt.subplots()
ax.hist(data_normal, bins=50, density=True, label="Knowledge histogram",coloration = GRAY9)
ax.plot(x2, stats.norm(loc=mu, scale=sigma).pdf(x2),
label="Regular distribution (PDF)",coloration = BLUE2,linewidth=3.0)
ax.set_title("Knowledge histogram vs. true distribution", fontsize=14, loc="left")
ax.set_xlabel('Knowledge worth')
ax.set_ylabel('Chance')
ax.legend()
ax.grid()
plt.savefig("Normal_hist_PMF.png", format="png", dpi=800)
Now, we wish to use the MoM estimator to search out an estimate of the mannequin parameters, i.e., μ and σ² as proven beneath.

In an effort to take a look at this estimator utilizing our pattern knowledge, we plot the distribution with the estimated parameters (orange) within the beneath determine, versus the true distribution (blue). Once more, it may be proven that the distributions are fairly shut. After all, so as to quantify this estimator, we have to take a look at it on a number of realizations of the info and observe properties similar to bias, variance, and so on. Such essential elements have been mentioned in an earlier article.

The Python code that was used to estimate the mannequin parameters utilizing MoM, and to plot the above determine is proven beneath.
# Technique of moments estimator utilizing the info (Regular Dist)
mu_hat = sum(data_normal) / len(data_normal) # MoM imply estimator
var_hat = sum(pow(x-mu_hat,2) for x in data_normal) / len(data_normal) # variance
sigma_hat = math.sqrt(var_hat) # MoM commonplace deviation estimator
# Plot the MoM estimated PDF vs the true PDF
x2 = np.linspace(data_normal.min(), data_normal.max(), sample_size)
fig4, ax = plt.subplots()
ax.plot(x2, stats.norm(loc=mu_hat, scale=sigma_hat).pdf(x2),
label="Estimated PDF",coloration = ORANGE1,linewidth=3.0)
ax.plot(x2, stats.norm(loc=mu, scale=sigma).pdf(x2),
label="True PDF",coloration = BLUE2,linewidth=3.0)
ax.set_title("Estimated Regular distribution vs. true distribution", fontsize=14, loc="left")
ax.set_xlabel('Knowledge worth')
ax.set_ylabel('Chance')
ax.legend()
ax.grid()
plt.savefig("Normal_true_vs_est.png", format="png", dpi=800)
One other helpful chance distribution is the Gamma distribution. An instance for the appliance of this distribution in actual life was mentioned in a earlier article. Nonetheless, on this article, we derive the MoM estimator of the Gamma distribution parameters α and β as proven beneath, assuming the info is iid.

On this specific instance, a Gamma distribution with α = 6 and β = 0.5 is assumed to have generated the info. The histogram of the generated knowledge pattern (pattern measurement = 1000) is proven in gray within the beneath determine, whereas the true distribution is proven within the blue curve.

The Python code that was used to generate the above determine is proven beneath.
# Gamma distribution instance
alpha_ = 6 # form parameter
scale_ = 2 # scale paramter (lamda) = 1/beta in gamma dist.
sample_size = 1000
data_gamma = stats.gamma.rvs(alpha_,loc=0, scale=scale_ ,measurement= sample_size) # generate knowledge
# Plot the info histogram vs the PDF
x3 = np.linspace(data_gamma.min(), data_gamma.max(), sample_size)
fig5, ax = plt.subplots()
ax.hist(data_gamma, bins=50, density=True, label="Knowledge histogram",coloration = GRAY9)
ax.plot(x3, stats.gamma(alpha_,loc=0, scale=scale_).pdf(x3),
label="Gamma distribution (PDF)",coloration = BLUE2,linewidth=3.0)
ax.set_title("Knowledge histogram vs. true distribution", fontsize=14, loc="left")
ax.set_xlabel('Knowledge worth')
ax.set_ylabel('Chance')
ax.legend()
ax.grid()
plt.savefig("Gamma_hist_PMF.png", format="png", dpi=800)
Now, we wish to use the MoM estimator to search out an estimate of the mannequin parameters, i.e., α and β, as proven beneath.

In an effort to take a look at this estimator utilizing our pattern knowledge, we plot the distribution with the estimated parameters (orange) within the beneath determine, versus the true distribution (blue). Once more, it may be proven that the distributions are fairly shut.

The Python code that was used to estimate the mannequin parameters utilizing MoM, and to plot the above determine is proven beneath.
# Technique of moments estimator utilizing the info (Gamma Dist)
sample_mean = data_gamma.imply()
sample_var = data_gamma.var()
scale_hat = sample_var/sample_mean #scale is the same as 1/beta in gamma dist.
alpha_hat = sample_mean**2/sample_var
# Plot the MoM estimated PDF vs the true PDF
x4 = np.linspace(data_gamma.min(), data_gamma.max(), sample_size)
fig6, ax = plt.subplots()
ax.plot(x4, stats.gamma(alpha_hat,loc=0, scale=scale_hat).pdf(x4),
label="Estimated PDF",coloration = ORANGE1,linewidth=3.0)
ax.plot(x4, stats.gamma(alpha_,loc=0, scale=scale_).pdf(x4),
label="True PDF",coloration = BLUE2,linewidth=3.0)
ax.set_title("Estimated Gamma distribution vs. true distribution", fontsize=14, loc="left")
ax.set_xlabel('Knowledge worth')
ax.set_ylabel('Chance')
ax.legend()
ax.grid()
plt.savefig("Gamma_true_vs_est.png", format="png", dpi=800)
Notice that we used the next equal methods of writing the variance when deriving the estimators within the instances of Gaussian and Gamma distributions.

Conclusion
On this article, we explored numerous examples of the tactic of moments estimator and its functions in several issues in knowledge science. Furthermore, detailed Python code that was used to implement the estimators from scratch in addition to to plot the completely different figures can also be proven. I hope that you will see that this text useful.