In mathematics, a biased sample refers to a subset of a population that does not accurately represent the entire population. This occurs when certain individuals or groups are overrepresented or underrepresented in the sample, leading to skewed or inaccurate conclusions.
To understand biased samples, it is important to grasp the following concepts:
There is no specific formula or equation for determining whether a sample is biased. Instead, bias is assessed by analyzing the methods used to select the sample and evaluating whether they introduce any systematic errors.
To determine if a sample is biased, one must carefully consider the sampling method employed. Common methods that can introduce bias include:
There is no specific symbol used to represent a biased sample. The term "biased sample" itself is used to describe the phenomenon.
To mitigate bias in sampling, researchers employ various techniques, including:
Example 1: A researcher wants to study the average income of a city's residents. Instead of randomly selecting individuals, the researcher only surveys people in affluent neighborhoods. This biased sample will likely overestimate the average income of the entire population.
Example 2: A political pollster conducts a survey by calling landline phone numbers during the day. This biased sample will likely underrepresent younger individuals who primarily use mobile phones and are not available during the day.
Identify the potential bias in each of the following sampling methods: a) Surveying only university students about their opinions on a particular issue. b) Conducting a survey at a shopping mall during weekdays. c) Selecting participants for a study based on their willingness to participate.
Explain how stratified sampling can help reduce bias in a study examining the prevalence of a disease in a city's population.
Q: What is a biased sample? A: A biased sample is a subset of a population that does not accurately represent the entire population due to overrepresentation or underrepresentation of certain individuals or groups.
Q: How can bias be avoided in sampling? A: Bias can be minimized by using random sampling techniques, such as simple random sampling, stratified sampling, cluster sampling, or systematic sampling.
Q: What are the consequences of using a biased sample? A: Using a biased sample can lead to inaccurate conclusions and generalizations about the entire population, potentially resulting in flawed policies, decisions, or research findings.