T.Test

2018-12-20  本文已影响0人  不连续小姐

Data Science Day 20:

When we are watching Soccer games, at the beginning of the match, the screen will show the basic info for each team. Suppose we want to know is there any difference between the average age between Real Madrid and Barcelona pl****ayers, What statistical test should we use?

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RonnyK / Pixabay

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kappilrinesh / Pixabay[/caption]

Answer:

We can use T-test to determine whether there is a significant difference between the means of two groups.

T-test assumptions:

Example: Kaggle FIFA 2018 dataset

Null Hypothesis H0: There is NO significant difference between the age of Real Madrid and Barcelona's players.

  1. We choose the variable Age and Club (Real Madrid, Barcelona).


    image

import packages

import numpy as np
from scipy import stats
import pandas as pd
import matplotlib.pyplot as plt
import statistics as st
import seaborn as sns

data1= data[["club","age"]]
data2=data1.loc[data1["club"].isin(["Real Madrid CF", "FC Barcelona"])
  1. **Histogram Graph for Age **

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data3=data1.loc[data1["club"].isin(["Real Madrid CF"])]
data4=data1.loc[data1["club"].isin(["FC Barcelona"])]

plt.hist(data3.age, bins="auto", color="c" ,edgecolor="k",alpha=0.5)
plt.hist(data4.age, bins="auto", color="r", alpha=0.5)
plt.xlabel('Age')
plt.ylabel('Frequency')
plt.title('Age Distribution in Barcelona vs MFC')

plt.show()

3. Density Plot of Age

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#kde plot
df=pd.DataFrame({"mfc": data3.age, "barcelona":data4.age,})
ax=df.plot.kde()
plt.title("Density Plot for Players' Age in Barcelona vs MFC")
plt.show()

** 4. Statistical T-test **

stats.ttest_ind(data3.age,data4.age, equal_var=False)
Ttest_indResult(statistic=-1.9061510499479299, pvalue=0.062416380021536121)

Conclusion:

Although the Histogram graph does not show a normal distribution, the Density Plot represents some feature of the Normality for Age Distribution. Since the P-value= 0.06, we will Accept the Null Hypothesis:
There is No significant difference in players age between Real Madrid and Barcelona.

Additional Info:

We used Non-direction (two sided) Ttest to generate the results, but one question we can ask ourselves is how sure are we about the results?

  1. Type 1 error, Reject a null hypothesis that is True
    Predict there is a difference while in reality there's no.
    p=0.05, there is a 5% chance we are making type 1 error
  2. Type 2 error, Accept a null hypothesis that is false
    Predict there is no difference when the reality has one

In the previous example, we have a 2-level independent variable Club (Barcelona, Real Madrid), and one dependent variable age.

What if we have an independent variable more than 2 levels?
AC Milan, Barcelona, and Real Madrid ?

That will be ANOVA's show!

Happy Studying! 🍉

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