Bias of an estimator

From WikiMD's Wellness Encyclopedia

Bias of an Estimator refers to the difference between the expected value of an estimator's estimates and the true value of the parameter being estimated. In statistics, an estimator is a rule or a formula that is used to make estimates about a population parameter based on sample data. The concept of bias is central to the field of statistical inference, where the goal is often to select estimators that are both unbiased (having no bias) and efficient (having the lowest possible variance among all unbiased estimators).

Definition[edit]

Formally, the bias of an estimator \\( \hat{\theta} \\) for a parameter \\( \theta \\) is defined as: \[ \text{Bias}(\hat{\theta}) = E(\hat{\theta}) - \theta \] where \\( E(\hat{\theta}) \\) is the expected value of the estimator. If \\( \text{Bias}(\hat{\theta}) = 0 \\), the estimator is said to be unbiased. Otherwise, it is biased.

Types of Bias[edit]

Bias can be categorized into several types, including but not limited to:

  • Sampling Bias: Occurs when the sample is not representative of the population.
  • Measurement Bias: Arises from errors in data collection or measurement.
  • Selection Bias: Happens when the selection of participants or data points is not random.
  • Publication Bias: A type of bias in which the results of studies are more likely to be published if they show significant or positive outcomes.

Bias vs. Variance[edit]

In the context of the Bias-Variance Tradeoff, bias is one component that, along with variance, affects the overall error of an estimator. A high bias can cause an estimator to miss the target value systematically, while high variance can cause the estimator to be spread out over a wide range of values. The tradeoff is a fundamental aspect of statistical learning and model selection, where the goal is to find a balance that minimizes the total error.

Reducing Bias[edit]

Several strategies can be employed to reduce bias in statistical estimates, including:

  • Increasing the sample size to make the sample more representative of the population.
  • Ensuring random selection and assignment in experimental designs to minimize selection bias.
  • Using multiple methods of data collection to mitigate measurement bias.
  • Applying statistical techniques such as bootstrapping or cross-validation to assess and adjust for bias.

Unbiased Estimators[edit]

An unbiased estimator is an important concept in statistics, as it means that the estimator's expected value equals the true value of the parameter being estimated. Common examples of unbiased estimators include the sample mean for estimating the population mean and the sample variance (with \\( n-1 \\) in the denominator) for estimating the population variance.

Conclusion[edit]

Understanding and minimizing bias is crucial for accurate statistical analysis and reliable inference. While it is often challenging to achieve completely unbiased estimates, awareness of the sources and types of bias can help researchers and statisticians to design studies and analyses that are more robust and valid.

This article is a medical stub. You can help WikiMD by expanding it!
PubMed
Wikipedia
Navigation: Wellness - Encyclopedia - Health topics - Disease Index‏‎ - Drugs - World Directory - Gray's Anatomy - Keto diet - Recipes

Ad. Transform your life with W8MD's Budget GLP-1 injections from $75


W8MD weight loss doctors team
W8MD weight loss doctors team

W8MD offers a medical weight loss program to lose weight in Philadelphia. Our physician-supervised medical weight loss provides:

NYC weight loss doctor appointmentsNYC weight loss doctor appointments

Start your NYC weight loss journey today at our NYC medical weight loss and Philadelphia medical weight loss clinics.

Linkedin_Shiny_Icon Facebook_Shiny_Icon YouTube_icon_(2011-2013) Google plus


Advertise on WikiMD

WikiMD's Wellness Encyclopedia

Let Food Be Thy Medicine
Medicine Thy Food - Hippocrates

Medical Disclaimer: WikiMD is not a substitute for professional medical advice. The information on WikiMD is provided as an information resource only, may be incorrect, outdated or misleading, and is not to be used or relied on for any diagnostic or treatment purposes. Please consult your health care provider before making any healthcare decisions or for guidance about a specific medical condition. WikiMD expressly disclaims responsibility, and shall have no liability, for any damages, loss, injury, or liability whatsoever suffered as a result of your reliance on the information contained in this site. By visiting this site you agree to the foregoing terms and conditions, which may from time to time be changed or supplemented by WikiMD. If you do not agree to the foregoing terms and conditions, you should not enter or use this site. See full disclaimer.
Credits:Most images are courtesy of Wikimedia commons, and templates, categories Wikipedia, licensed under CC BY SA or similar.