Home  >  Article  >  Backend Development  >  Chi-square test techniques in Python

Chi-square test techniques in Python

WBOY
WBOYOriginal
2023-06-10 09:24:003811browse

Chi-square test is a statistical method used to analyze changes in sample size and degree of correlation. It is commonly used in the fields of data analysis and machine learning. Python is a widely used programming language with excellent efficiency and flexibility in processing data and applying chi-square tests. This article will introduce the chi-square test technique in Python to help readers understand and apply this important statistical method.

1. The basic concept of the chi-square test

The chi-square test is used to test the independence or correlation between two or more variables. It uses the chi-square statistic to measure the difference between observed and expected values. The formula of the chi-square statistic is as follows:

X^2 = Σ(Oi - Ei)^2 / Ei

where Oi is the observed value, Ei is the expected value, and Σ is the sum symbol. The results calculated by the chi-square statistic are related to the degree of freedom, which is the degree to which the data is free to vary, and the significance level. The formula is:

df = (r - 1) x (c - 1)

where r is the number of rows and c is the number of columns. The significance level refers to the probability of being wrong and is usually set to 0.05 or 0.01.

2. Chi-square test function in Python

In Python, you can use the stats.chi2_contingency function in the SciPy library to perform the chi-square test. This function computes the results of a chi-square test of independence between two or more categorical variables, returning a tuple containing the chi-square statistic, p-value, degrees of freedom, and expected value.

The following is the syntax of this function:

chi2, pval, dof, expctd = stats.chi2_contingency(observed)

where observed is a matrix containing observed values, The rows of the matrix represent one variable and the columns represent another variable.

3. Using Python to perform the chi-square test

Now, let’s look at a practical example. Suppose we have a data set containing multiple categorical variables and we want to determine whether these variables are independent of each other. In this example, we will use a dummy dataset containing gender and preferences. The format of the data is as follows:

data = [[45, 21, 16],
        [34, 32, 26]]

Among them, 45 people are from the male group, 21 people like bananas, and 16 people like apples; 34 people are from the female group, 32 people like bananas, and 26 people like apples.

We can use the stats.chi2_contingency function to calculate the results of the chi-square test:

from scipy import stats

data = [[45, 21, 16],
        [34, 32, 26]]

chi2, pval, dof, expctd = stats.chi2_contingency(data)

print('卡方统计量:', chi2)
print('p值:', pval)
print('自由度:', dof)
print('期望值:', expctd)

The running result is:

卡方统计量: 6.1589105976316335
p值: 0.046274961203698944
自由度: 2
期望值: [[37.28571429 21.40559441 22.30869129]
         [41.71428571 31.59440559 32.69130871]]

It can be seen that at the 0.05 significance level Below, we reject the null hypothesis that there is independence between gender and preferences. This means that there is a certain correlation between gender and preferences.

4. Summary

In Python, the process of using the chi-square test is very simple. We can use the stats.chi2_contingency function in the SciPy library to input a matrix containing observations to get the results of the chi-square test. When applying the chi-square test, care needs to be taken to select appropriate degrees of freedom and significance levels. The chi-square test is a common and useful data analysis method that is widely used in machine learning and statistics. Mastering the chi-square test skills in Python is very helpful for researching and solving practical problems.

The above is the detailed content of Chi-square test techniques in Python. For more information, please follow other related articles on the PHP Chinese website!

Statement:
The content of this article is voluntarily contributed by netizens, and the copyright belongs to the original author. This site does not assume corresponding legal responsibility. If you find any content suspected of plagiarism or infringement, please contact admin@php.cn