Examples of outlier in the following topics:
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- Estimators capable of coping with outliers are said to be robust.
- Outliers can have many anomalous causes.
- Outliers that cannot be readily explained demand special attention.
- There is no rigid mathematical definition of what constitutes an outlier.
- The application should use a classification algorithm that is robust to outliers to model data with naturally occurring outlier points.
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- Outliers need to be examined closely.
- It is possible that an outlier is a result of erroneous data.
- Note: There is no rigid mathematical definition of what constitutes an outlier; determining whether or not an observation is an outlier is ultimately a subjective exercise.
- Outliers can have many anomalous causes.
- Outliers that cannot be readily explained demand special attention.
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- Outliers in regression are observations that fall far from the "cloud" of points.
- In these cases, the outliers influenced the slope of the least squares lines.
- It is tempting to remove outliers.
- Don't ignore outliers when fitting a final model.
- All data sets have at least one outlier.
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- Identify the outliers in the scatterplots shown below, and determine what type of outliers they are.
- Identify the outliers in the scatterplots shown below and determine what type of outliers they are.
- What type of outlier is this observation?
- 7.25 (a) The outlier is in the upper-left corner.
- (c) The outlier is in the upper-middle of the plot.
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- Outliers need to be examined closely.
- It is possible that an outlier is a result of erroneous data.
- Any points that are outside these two lines are outliers.
- We call that point a potential outlier.
- (Remember, we do not always delete an outlier. )
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- The uniform distribution is symmetric, the exponential distribution may be considered as having moderate skew since its right tail is relatively short (few outliers), and the log-normal distribution is strongly skewed and will tend to produce more apparent outliers.
- There are two outliers, one very extreme, which suggests the data are very strongly skewed or very distant outliers may be common for this type of data.
- Strong skew is often identified by the presence of clear outliers.
- These data include some very clear outliers.
- For example, outliers are often an indicator of very strong skew.
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- Are there any potential outliers?
- Use a formula to check the end values to determine if they are potential outliers.
- Using the box plot, how can you determine if there are potential outliers?
- How does the standard deviation help you to determine concentration of the data and whether or not there are potential outliers?
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- Are there any outliers?
- If so, which point(s) is an outlier?
- Should the outlier, if it exists, be removed?
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- For example, ask: would I expect this distribution to be symmetric, and am I confident that outliers are rare?
- Data with strong skew or outliers require a more cautious analysis.