1.6.3: Introduction to the z table (2024)

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    To introduce the table of critical z-scores, we'll first refresh and add to what you learned last chapter about distributions

    Probability Distributions and Normal Distributions

    Recall that the normal distribution has an area under its curve that is equal to 1 and that it can be split into sections by drawing a line through it that corresponds to standard deviations from the mean. These lines marked specific z-scores. These sections between the marked lines have specific probabilities of scores falling in these areas under the normal curve.

    First, let’s look back at the area between \(z\) = -1.00 and \(z\) = 1.00 presented in Figure \(\PageIndex{1}\). We were told earlier that this region contains 68% of the area under the curve. Thus, if we randomly chose a \(z\)-score from all possible z-scores, there is a 68% chance that it will be between \(z = -1.00\) and \(z = 1.00\) (within one standard deviation below and one standard deviation above the mean) because those are the \(z\)-scores that satisfy our criteria.

    1.6.3: Introduction to the z table (2)

    Take a look at the normal distribution in Figure \(\PageIndex{2}\) which has a line drawn through it as \(z\) = 1.25. This line creates two sections of the distribution: the smaller section called the tail and the larger section called the body. Differentiating between the body and the tail does not depend on which side of the distribution the line is drawn. All that matters is the relative size of the pieces: bigger is always body.

    1.6.3: Introduction to the z table (3)

    We can then find the proportion of the area in the body and tail based on where the line was drawn (i.e. at what \(z\)-score). Mathematically this is done using calculus, but we don't need to know how to do all that! The exact proportions for are given you to you in the Standard Normal Distribution Table, also known at the \(z\)-table. Using the values in this table, we can find the area under the normal curve in any body, tail, or combination of tails no matter which \(z\)-scores are used to define them.

    Let’s look at an example: let’s find the area in the tails of the distribution for values less than \(z\) = -1.96 (farther negative and therefore more extreme) and greater than \(z\) = 1.96 (farther positive and therefore more extreme). Dr. Foster didn't just pick this z-score out of nowhere, but we'll get to that later. Let’s find the area corresponding to the region illustrated in Figure \(\PageIndex{3}\), which corresponds to the area more extreme than \(z\) = -1.96 and \(z\) = 1.96.

    1.6.3: Introduction to the z table (4)

    If we go to the \(z\)-table shown in the Critical Values of z Table page (which can also be found from the Common Critical Value Tables at the end of this book in the Back Matter with the glossary and index), we will see one column header that has a \(z\), bidirectional arrows, and then \(p\). This means that, for the entire table (all 14ish columns), there are really two columns (or sub-columns. The numbers on the left (starting with -3.00 and ending with 3.00) are z-scores. The numbers on the right (starting with .00135 and ending with .99865) are probabilities (p-values). So, if you multiply the p-values by 100, you get a percentage.

    Let’s start with the tail for \(z\) = 1.96. What p-value corresponds to 1.96 from the z-table in Table \(\PageIndex{1}\)?

    Example \(\PageIndex{1}\)

    What p-value corresponds to 1.96 from the z-table in Table \(\PageIndex{1}\)?

    Solution

    For z = 1.96, p = .97500

    If we multiply that by 100, that means that 97.50% of the scores in this distribution will be below this score. Look at Figure \(\PageIndex{3}\) again. This is saying that 97.5 % of scores are outside of the shaded area on the right. That means that 2.5% of scores in a normal distribution will be higher than this score (100% - 97.50% = 2.50%). In other words, the probability of a raw score being higher than a z-score is p=.025.

    If do the same thing with |(z = -1.96|), we find that the p-value for \(z = -1.96\) is .025. That means that \(2.5\%\) of raw scores should be below a z-score of \(-1.96\); according to Figure \(\PageIndex{3}\), that is the shaded area on the left side. What did we just learn? That the shaded areas for the same z-score (negative or positive) are the same p-value, the same probability. We can also find the total probabilities of a score being in the two shaded regions by simply adding the areas together to get 0.0500. Thus, there is a 5% chance of randomly getting a value more extreme than \(z = -1.96\) or \(z = 1.96\) (this particular value and region will become incredibly important later). And, because we know that z-scores are really just standard deviations, this means that it is very unlikely (probability of \(5\%\)) to get a score that is almost two standard deviations away from the mean (\(-1.96\) below the mean or 1.96 above the mean).

      Attributions & Contributors

      1.6.3: Introduction to the z table (2024)

      FAQs

      What is 2.5 in Z-table? ›

      Standard Normal (Z) Table
      Z0.000.03
      2.40.99180.9925
      2.50.99380.9943
      2.60.99530.9957
      2.70.99650.9968
      27 more rows

      How do you explain the z-score table? ›

      A z-table, also known as the standard normal table, provides the area under the curve to the left of a z-score. This area represents the probability that z-values will fall within a region of the standard normal distribution.

      How do you use the Z-table step by step? ›

      How to Use a Z-Table. To use a z-table, first turn your data into a normal distribution and calculate the z-score for a given value. Then, find the matching z-score on the left side of the z-table and align it with the z-score at the top of the z-table. The result gives you the probability.

      What is a 1.25 z-score? ›

      Since a normal distribution is symmetrical, that means that 50% lies on both sides of the distribution. So, if we have a Z score of 1.25, that means that it is at the 89.44th percentile (39.44+50).

      How to find z value? ›

      The formula for calculating a z-score is z = (x-μ)/σ, where x is the raw score, μ is the population mean, and σ is the population standard deviation. As the formula shows, the z-score is simply the raw score minus the population mean, divided by the population standard deviation. Figure 2.

      How do you interpret the z-score? ›

      Essentially, the Z-score can be interpreted as the number of standard deviations that a raw score x lies from the mean. So for example, if the z score is equal to a positive 0.5, then that's 4x is half a standard deviation above the mean. If a Z-score is equal to 0, that means that the score is equal to the mean.

      When to add 0.5 to z-score? ›

      If we want to know the percentages below (to the left) for the whole area of the normal distribution we need to add 0.5 to the z-score.

      How do you explain Z-test results? ›

      Example 1: Z-Test Equation with a Single Population Mean. The positive value of the Z-score indicates that the sample mean lies above the population mean. If it were negative, it would be below the population mean. If it were 0, then it would be equal to the population mean.

      What is 1.645 in Z table? ›

      The value 1.645 is the z-score from a standard normal probability distribution that puts an area of 0.90 in the center, an area of 0.05 in the far left tail, and an area of 0.05 in the far right tail.

      What is the p hat? ›

      The sample proportion, often denoted by "p-hat," is the ratio of the number of successes in a sample to the size of that sample.

      Can z scores be negative? ›

      Z-scores may be positive or negative, with a positive value indicating the score is above the mean and a negative score indicating it is below the mean.

      What is the z-score for dummies? ›

      Z-score is a result of standardizing an individual data point. Simply put, a z-score gives us an idea of how far the data point is from the mean measured in terms of standard deviation(σ). For instance, a z-score of 2.5 indicates that the value is between 2 to 3 standard deviations from the mean and is not so common.

      Are all z tables the same? ›

      There are two Z tables to make things less complicated. Sure it can be combined into one single larger Z-table but that can be a bit overwhelming for a lot of beginners and it also increases the chance of human errors during calculations.

      How to find p value from z-score? ›

      How do I find p-value from z-score?
      1. Left-tailed z-test: p-value = Φ(Zscore)
      2. Right-tailed z-test: p-value = 1 - Φ(Zscore)
      3. Two-tailed z-test: p-value = 2 × Φ(−|Zscore|) or. p-value = 2 - 2 × Φ(|Zscore|)
      Jan 18, 2024

      What is the z-score that has 2.5% of the distributions area to its left? ›

      Answer: Z = -1.96 Here, we have to find the z sc…

      What is the z-score boundary for the bottom 2.5% of the distribution? ›

      Question: Question 5 10 pts For a normal distribution, the Z-score boundary that separates the lowest 2.5% of the scores from the rest is z=-1.96.

      What is the top 2.5 percent of the normal distribution? ›

      For the given normal distribution, the top 2.5% would be scores above 12.87 (1.96 standard deviations above the mean).

      Is az score of 2.5 good? ›

      Some may say that a z-score beyond ± 2 ‍ is unusual, while beyond ± 3 ‍ is highly unusual. Some may use ± 2.5 ‍ as the cutoff.

      References

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