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4.7: Skewed Distribution- The Opposite of Normal Distribution

  • Page ID
    57558
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    The term of a distribution that is not normal is a skewed distribution. In a skewed distribution, the majority of scores are clumped at one end of the distribution, and there is an elongated tail on one side of the distribution. The term “skew” refers to debris, leftovers, extraneous scatter. The skew refers to the tail of the distribution.

    There are only two types of skewed distributions. Positive skew: the tail end is on the right, where there are higher scores. Negative skew: the tail end is on the left, where there are lower scores.

    An example of a positively skewed distribution would be student discipline data for an elementary grade. Most students in the elementary grades are good kids, but alas, there will always be a few kids who are troublemakers. If we plot the number of students with, e.g., Discipline data, more infractions on the right, positive or more, end of the scale. An example of a negatively skewed distribution could be self-esteem. The positive right end is usually high self-esteem, and the low end is low self-esteem. Generally, in a sample of elementary-grade students, there will be more students with high self-esteem and very few with low self-esteem. These distributions can happen, and we have to decide if we should proceed with that distribution.

    Recall that normal distributions are as common as The Cubs winning the World Series. In other words, it never happens. So, if we rarely, if ever, get normal distributions, we always get skewed distributions. So, what do we do? The question is this – “if all distributions are not normal, and if this distribution is not normal, how not normal is this distribution?”


    This page titled 4.7: Skewed Distribution- The Opposite of Normal Distribution is shared under a CC BY 4.0 license and was authored, remixed, and/or curated by Peter Ji.