Examples of Estimation in Statistics
Some examples of estimation in statistics:
- Population Mean Estimation: To estimate the average height of all adults in a country, take a random sample of adults and calculate the sample mean as an estimate of the population mean height.
- Population Proportion Estimation: To estimate the percentage of supporters for a candidate in a city, survey a random sample of voters and use the sample proportion as an estimate for the population proportion.
- Interval Estimation for Mean: Estimate average transaction time in a store by calculating confidence interval using sample mean and standard deviation to determine likely range of population mean event time.
- Regression Analysis: Regression analysis estimates the relationship between variables, such as income and education level. By fitting a model to data, coefficients describing the population relationship can be estimated.
- Bayesian Estimation: Bayesian estimation integrates prior knowledge with current data to update beliefs on parameters of interest, such as evaluating drug treatment effectiveness.
Estimation in Statistics
Estimation is a technique for calculating information about a bigger group from a smaller sample, and statistics are crucial to analyzing data. For instance, the average age of a city’s population may be obtained by taking the age of a sample of 1,000 residents. While estimates aren’t perfect, they are typically trustworthy enough to be of value.
In this article, we examine the significance of statistics, their function in the interpretation of data, and how efficient data analysis leads to the making of decisions based on accurate information.
Table of Content
- What is Estimation?
- Purpose of Estimation in Statistics
- Types of Estimation
- Point Estimation
- Interval Estimation
- Examples of Estimation in Statistics
- Estimation Methods
- 1. Method of Moments
- 2. Maximum Likelihood Estimation (MLE)
- Estimators as Random Variables
- Factors Affecting Estimation
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