Images as Data

study guides for every class

that actually explain what's on your next test

Stratified sampling

from class:

Images as Data

Definition

Stratified sampling is a method of sampling that involves dividing a population into distinct subgroups, or strata, that share similar characteristics before selecting a sample from each stratum. This approach ensures that each subgroup is adequately represented, which helps improve the accuracy and reliability of statistical analysis in scenarios like multi-class classification.

congrats on reading the definition of stratified sampling. now let's actually learn it.

ok, let's learn stuff

5 Must Know Facts For Your Next Test

  1. Stratified sampling is particularly useful when the population has distinct subgroups that may behave differently, ensuring better representation in each category.
  2. The process begins by identifying relevant strata based on specific characteristics such as age, gender, or education level.
  3. Samples from each stratum can be selected using random sampling methods, which enhances the overall robustness of the findings.
  4. This technique can reduce sampling error and variance, leading to more precise estimates of population parameters.
  5. In multi-class classification, stratified sampling helps balance class representation in training datasets, improving model performance across all classes.

Review Questions

  • How does stratified sampling enhance the representation of subgroups within a population?
    • Stratified sampling enhances representation by ensuring that each subgroup within the population is specifically accounted for in the sample selection. By dividing the population into strata based on shared characteristics, researchers can deliberately choose samples from each stratum. This targeted approach allows for a more balanced dataset, which is particularly important in multi-class classification where different classes may have varying sizes and distributions.
  • Discuss the advantages of using stratified sampling over simple random sampling in multi-class classification scenarios.
    • The advantages of stratified sampling over simple random sampling in multi-class classification include improved accuracy and reduced bias. Stratified sampling ensures that all relevant subgroups are represented according to their proportion in the population, which mitigates the risk of under-representing smaller classes. This leads to better model training and evaluation since each class contributes equally to the learning process, resulting in a more effective classification outcome.
  • Evaluate the implications of improperly executed stratified sampling on model performance and decision-making in data analysis.
    • Improperly executed stratified sampling can lead to skewed data representation and biased results, ultimately impacting model performance negatively. If certain strata are over-represented or under-represented, the classifier may become biased towards dominant classes and fail to generalize well across all categories. Consequently, this could lead to flawed decision-making based on inaccurate predictions and an inability to effectively address diverse outcomes within the data analysis.

"Stratified sampling" also found in:

Subjects (106)

© 2024 Fiveable Inc. All rights reserved.
AP® and SAT® are trademarks registered by the College Board, which is not affiliated with, and does not endorse this website.
Glossary
Guides