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Learn Calculating Confidence Interval with Python | Section
Statistics for Data Analysis

bookCalculating Confidence Interval with Python

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What Values Can We Estimate Using a Confidence Interval?

In this course, we will estimate mean values, but you can also estimate other statistics such as variances, mathematical expectations, and more.

Explore the function used to calculate confidence intervals.

st.norm.interval(confidence=0.95, loc=np.mean(dist), scale=st.sem(dist))

The st.norm.interval() function is used to compute a confidence interval with the following parameters:

  • The confidence parameter represents the confidence level;
  • The loc parameter signifies the mean value of the distribution;
  • The scale is the standard error of the mean.

What Is Standard Error of the Mean?

The standard error of the mean, often called standard error, measures how likely the population mean is to deviate from a sample mean.

Try to change the confidence parameter and observe the changes.

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# Importing libraries import scipy.stats as st import numpy as np # Creating random normal distribution dist = st.norm.rvs(size=1000, loc=50, scale=2) # Finding confidence interval confidence = st.norm.interval(confidence=0.95, loc=np.mean(dist), scale=st.sem(dist)) print(confidence)
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Which of the following statements about the st.norm.interval() function and standard error of the mean are correct?

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SectionΒ 1. ChapterΒ 26

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SectionΒ 1. ChapterΒ 26
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