Interval estimate meaning

Interval estimate is a range of values within which a parameter is believed to lie with a certain level of confidence.


Interval estimate definitions

Word backwards lavretni etamitse
Part of speech The part of speech of the word "interval estimate" is a noun phrase.
Syllabic division in-ter-val es-ti-mate
Plural The plural of "interval estimate" is "interval estimates."
Total letters 16
Vogais (3) i,e,a
Consonants (7) n,t,r,v,l,s,m

When conducting statistical analysis, researchers often want to estimate a population parameter based on a sample of data. This is where interval estimation comes into play. Interval estimate is a range of values that likely contains the true value of the population parameter. It provides a level of certainty about where the parameter lies based on the sample data.

Importance of Interval Estimate

Interval estimates are valuable because they give researchers a more comprehensive understanding of the uncertainty associated with their findings. Instead of providing a single point estimate, which may be misleading, interval estimates offer a range of values that are likely to contain the true parameter, along with a measure of confidence. This allows researchers to make more informed decisions based on the variability inherent in sampling.

Confidence Level and Margin of Error

Two key components of interval estimation are the confidence level and the margin of error. The confidence level indicates the probability that the true parameter falls within the interval. Commonly used confidence levels are 90%, 95%, and 99%. The margin of error is the range of values above and below the sample estimate within which the true parameter is likely to fall. It quantifies the precision of the interval estimate.

Calculating Interval Estimates

To calculate an interval estimate, researchers typically use statistical formulas that take into account the sample size, variability of the data, and the chosen confidence level. Common methods for constructing interval estimates include the use of t-distributions for small samples and z-distributions for large samples. By plugging in the relevant values, researchers can determine the range of values that constitute the interval estimate.

It is important to note that wider intervals are associated with higher levels of confidence but come at the cost of reduced precision. Conversely, narrower intervals offer greater precision but may sacrifice some level of confidence. Striking a balance between these factors is crucial in generating meaningful interval estimates.

Overall, interval estimation is a powerful tool in statistics that allows researchers to convey the uncertainty inherent in their findings. By providing a range of values rather than a single point estimate, interval estimates offer a more nuanced and realistic perspective on the population parameter being studied.


Interval estimate Examples

  1. The interval estimate for the population mean is between 45 and 55.
  2. The researchers provided a 95% confidence interval estimate for the survey results.
  3. The sales team calculated an interval estimate for the upcoming quarter's revenue.
  4. The weather forecasters gave an interval estimate of 2 to 4 inches of rain for tomorrow.
  5. The doctor provided an interval estimate for the recovery time after surgery.
  6. The data analyst presented an interval estimate for the market growth rate.
  7. The auditor calculated an interval estimate for the company's financial losses.
  8. The teacher explained how to construct an interval estimate from a sample data set.
  9. The project manager requested an interval estimate for the completion date of the construction project.
  10. The economist published an interval estimate for the unemployment rate in the country.


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  • Updated 26/04/2024 - 03:03:06