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  1. 30 Νοε 2021 · Your outliers are any values greater than your upper fence or less than your lower fence. Example: Using the interquartile range to find outliers. We’ll walk you through the popular IQR method for identifying outliers using a step-by-step example. Your dataset has 11 values.

  2. An outlier is defined as being any point of data that lies over 1.5 IQRs below the first quartile (Q 1) or above the third quartile (Q 3)in a data set. High = (Q 3) + 1.5 IQR Low = (Q 1) – 1.5 IQR. Example Question: Find the outliers for the following data set: 3, 10, 14, 22, 19, 29, 70, 49, 36, 32.

  3. 4 Οκτ 2022 · Your outliers are any values greater than your upper fence or less than your lower fence. Example: Using the interquartile range to find outliers. We’ll walk you through the popular IQR method for identifying outliers using a step-by-step example. Your dataset has 11 values.

  4. The Outliers Worksheet with Answer Key is a document that provides practice exercises and their solutions related to the concept of outliers in data analysis. These worksheets help students understand how to identify and analyze outlier values in a data set.

  5. This week we will identify outliers by making a relatively subjective judgement from a given a list of data points, a dotplot, or a histogram. Example: Dotplot of Hours Watching TV. A sample of STAT 200 students was surveyed and asked how many hours per week they watch television. A dotplot was constructed using these data.

  6. 24 Αυγ 2021 · There are a few different ways to find outliers in statistics. This article will explain how to detect numeric outliers by calculating the interquartile range. I give an example of a very simple dataset and how to calculate the interquartile range, so you can follow along if you want.

  7. 26 Αυγ 2019 · An outlier is a value or point that differs substantially from the rest of the data. Outliers can look like this: This: Or this: Sometimes outliers might be errors that we want to exclude or an anomaly that we don’t want to include in our analysis.