Bootstrapping (statistics)



|MedianHists|thumb|left]]|thumb|left]] Bootstrapping (statistics) is a resampling method used in statistics to estimate the distribution of a sample statistic. It involves repeatedly drawing samples, with replacement, from an observed dataset and calculating the statistic of interest for each sample. This method allows for the estimation of the sampling distribution of almost any statistic using random sampling methods. Bootstrapping is a powerful tool because it does not rely on the assumption of normality and can be applied in situations where the theoretical distribution of the statistic is unknown or difficult to derive.
Overview[edit]
Bootstrapping was introduced by Bradley Efron in 1979 and has since become a fundamental technique in statistical inference. The basic idea is to create a "bootstrap" sample by randomly selecting observations from the original dataset with replacement. This process is repeated a large number of times (typically thousands or more), and for each bootstrap sample, the desired statistic is computed. The collection of these statistics forms an empirical distribution, which can then be used to estimate properties such as the mean, variance, confidence intervals, and hypothesis testing.
Procedure[edit]
The general procedure for bootstrapping involves several steps:
- From the original dataset of size n, draw a sample of size n with replacement. This sample is known as a bootstrap sample.
- Calculate the statistic of interest for the bootstrap sample.
- Repeat steps 1 and 2 a large number of times (e.g., 1000 or 10000 times) to create a distribution of the bootstrap statistics.
- Use the distribution of bootstrap statistics to estimate the desired characteristics of the sampling distribution of the statistic (e.g., its variance, bias, confidence intervals).
Types of Bootstrapping[edit]
There are several types of bootstrapping methods, including but not limited to:
- Non-parametric bootstrapping: The most straightforward form, which does not assume any specific parametric form for the data distribution.
- Parametric bootstrapping: Assumes that the data follow a certain distribution and samples are drawn from that distribution instead of the original dataset.
- Block bootstrapping: Used for data that are correlated over time, such as time series data, where blocks of data are resampled instead of individual observations.
Applications[edit]
Bootstrapping is used in various statistical applications, including:
- Estimating the distribution of a sample mean or median
- Constructing confidence intervals for a population parameter
- Hypothesis testing
- Model selection and validation in machine learning
Advantages and Limitations[edit]
Advantages:
- Does not require the assumption of normality or other specific distributional assumptions.
- Can be applied to complex estimators or those with no closed-form distribution.
- Useful in situations with small sample sizes.
Limitations:
- Bootstrap methods can be computationally intensive, especially with large datasets and a high number of resampling iterations.
- Not always appropriate for data with strong dependencies, such as time series, without modifications (e.g., block bootstrapping).
- The accuracy of bootstrap confidence intervals can depend on the choice of the method (e.g., percentile method, BCa method).
Conclusion[edit]
Bootstrapping is a versatile and powerful statistical tool that has broad applications in statistical inference. Its ability to estimate the distribution of a statistic without relying on strict assumptions about the population from which the sample is drawn makes it invaluable in practical statistical analysis and research.

This article is a statistics-related stub. You can help WikiMD by expanding it!
Ad. Transform your life with W8MD's Budget GLP-1 injections from $75


W8MD offers a medical weight loss program to lose weight in Philadelphia. Our physician-supervised medical weight loss provides:
- Weight loss injections in NYC (generic and brand names):
- Zepbound / Mounjaro, Wegovy / Ozempic, Saxenda
- Most insurances accepted or discounted self-pay rates. We will obtain insurance prior authorizations if needed.
- Generic GLP1 weight loss injections from $75 for the starting dose.
- Also offer prescription weight loss medications including Phentermine, Qsymia, Diethylpropion, Contrave etc.
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.
- Call 718-946-5500 to lose weight in NYC or for medical weight loss in Philadelphia 215-676-2334.
- Tags:NYC medical weight loss, Philadelphia lose weight Zepbound NYC, Budget GLP1 weight loss injections, Wegovy Philadelphia, Wegovy NYC, Philadelphia medical weight loss, Brookly weight loss and Wegovy NYC
|
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.
Translate this page: - East Asian
中文,
日本,
한국어,
South Asian
हिन्दी,
தமிழ்,
తెలుగు,
Urdu,
ಕನ್ನಡ,
Southeast Asian
Indonesian,
Vietnamese,
Thai,
မြန်မာဘာသာ,
বাংলা
European
español,
Deutsch,
français,
Greek,
português do Brasil,
polski,
română,
русский,
Nederlands,
norsk,
svenska,
suomi,
Italian
Middle Eastern & African
عربى,
Turkish,
Persian,
Hebrew,
Afrikaans,
isiZulu,
Kiswahili,
Other
Bulgarian,
Hungarian,
Czech,
Swedish,
മലയാളം,
मराठी,
ਪੰਜਾਬੀ,
ગુજરાતી,
Portuguese,
Ukrainian