What is the probability that z is 0?

We obtain that 71.76% of 10-year-old girls have weight between 60 pounds and 90 pounds.

Find the 60th percentile for the weight of 10-year-old girls given that the weight is normally distributed with a mean 70 pounds and a standard deviation of 13 pounds.

As before, it is helpful to draw a sketch of the normal curve and shade in the region of interest. You can either sketch it by hand or use a graphing tool. You know that 60% will greater than half of the entire curve.

A caption for the above image.

We can use the Standard Normal Cumulative Probability Table to find the z-scores given the probability as we did before.

Area to the left of z-scores = 0.6000.

The closest value in the table is 0.5987.

The z-score corresponding to 0.5987 is 0.25.

Thus, the 60th percentile is z = 0.25.

Now that we found the z-score, we can use the formula to find the value of \(x\). The Z-score formula is \(z=\dfrac{x-\mu}{\sigma}\).

Using algebra, we can solve for \(x\).

\(x=\mu+z(\sigma)\)

\(x=70+(0.25)(13)=73.25\)

Therefore, the 60th percentile of 10-year-old girls' weight is 73.25 pounds.

Use this calculator to compute the z-score of a normal distribution.


Z-score and Probability Converter

Please provide any one value to convert between z-score and probability. This is the equivalent of referencing a z-table.



Probability between Two Z-scores

What is the probability that z is 0?

Use this calculator to find the probability (area P in the diagram) between two z-scores.


RelatedStandard Deviation Calculator


What is z-score?

The z-score, also referred to as standard score, z-value, and normal score, among other things, is a dimensionless quantity that is used to indicate the signed, fractional, number of standard deviations by which an event is above the mean value being measured. Values above the mean have positive z-scores, while values below the mean have negative z-scores.

The z-score can be calculated by subtracting the population mean from the raw score, or data point in question (a test score, height, age, etc.), then dividing the difference by the population standard deviation:

where x is the raw score, μ is the population mean, and σ is the population standard deviation.

The z-score has numerous applications and can be used to perform a z-test, calculate prediction intervals, process control applications, comparison of scores on different scales, and more.

Z-table

A z-table, also known as a standard normal table or unit normal table, is a table that consists of standardized values that are used to determine the probability that a given statistic is below, above, or between the standard normal distribution.

The table below is a right-tail z-table. Although there are a number of types of z-tables, the right-tail z-table is commonly what is meant when a z-table is referenced. It is used to find the area between z = 0 and any positive value, and reference the area to the right-hand side of the standard deviation curve.

Z Table from Mean (0 to Z)

CO-6: Apply basic concepts of probability, random variation, and commonly used statistical probability distributions.

Video: Standard Normal Distribution (4:12)

LO 6.17: Find probabilities associated with a specified normal distribution.

As we saw, the Standard Deviation Rule is very limited in helping us answer probability questions, and basically limited to questions involving values that fall exactly 1, 2, and 3 standard deviations away from the mean. How do we answer probability questions in general? The key is the position of the value relative to the mean, measured in standard deviations.

We can approach the answering of probability questions two possible ways: a table and technology. In the next sections, you will learn how to use the “standard normal table,” and then how the same calculations can be done with technology.

Standardizing Values

The first step to assessing a probability associated with a normal value is to determine the relative value with respect to all the other values taken by that normal variable. This is accomplished by determining how many standard deviations below or above the mean that value is.

How many standard deviations below or above the mean male foot length is 13 inches? Since the mean is 11 inches, 13 inches is 2 inches above the mean.

What is the probability that z is 0?

Since a standard deviation is 1.5 inches, this would be 2 / 1.5 = 1.33 standard deviations above the mean. Combining these two steps, we could write:

(13 in. – 11 in.) / (1.5 inches per standard deviation) = (13 – 11) / 1.5 standard deviations = +1.33 standard deviations.

What is the probability that z is 0?

In the language of statistics, we have just found the z-score for a male foot length of 13 inches to be z = +1.33. Or, to put it another way, we have standardized the value of 13.

In general, the standardized value z tells how many standard deviations below or above the mean the original value is, and is calculated as follows:

z-score = (value – mean)/standard deviation

The convention is to denote a value of our normal random variable X with the letter “x.”

What is the probability that z is 0?

Notice that since the standard deviation (sigma, σ) is always positive, for values of x above the mean (mu, μ), z will be positive; for values of x below the mean (mu, μ), z will be negative.

Let’s go back to our foot length example, and answer some more questions.

(a) What is the standardized value for a male foot length of 8.5 inches? How does this foot length relate to the mean?

z = (8.5 – 11) / 1.5 = -1.67. This foot length is 1.67 standard deviations below the mean.

(b) A man’s standardized foot length is +2.5. What is his actual foot length in inches?

If z = +2.5, then his foot length is 2.5 standard deviations above the mean. Since the mean is 11, and each standard deviation is 1.5, we get that the man’s foot length is: 11 + 2.5(1.5) = 14.75 inches.

Note that z-scores also allow us to compare values of different normal random variables. Here is an example:

(c) In general, women’s foot length is shorter than men’s. Assume that women’s foot length follows a normal distribution with a mean of 9.5 inches and standard deviation of 1.2. Ross’ foot length is 13.25 inches, and Candace’s foot length is only 11.6 inches. Which of the two has a longer foot relative to his or her gender group?

To answer this question, let’s find the z-score of each of these two normal values, bearing in mind that each of the values comes from a different normal distribution.

Ross: z-score = (13.25 – 11) / 1.5 = 1.5 (Ross’ foot length is 1.5 standard deviations above the mean foot length for men).

Candace: z-score = (11.6 – 9.5) / 1.2 = 1.75 (Candace’s foot length is 1.75 standard deviations above the mean foot length for women).

Note that even though Ross’ foot is longer than Candace’s, Candace’s foot is longer relative to their respective genders.

Comment:

  • Part (c) above illustrates how z-scores become crucial when you want to compare distributions. 

Did I Get This?: Standardized Scores (z-scores)

Finding Probabilities with the Normal Calculator and Table

Now that you have learned to assess the relative value of any normal value by standardizing, the next step is to evaluate probabilities. In other contexts, as mentioned before, we will first take the conventional approach of referring to a normal table, which tells the probability of a normal variable taking a value less than any standardized score z.

Since normal curves are symmetric about their mean, it follows that the curve of z scores must be symmetric about 0. Since the total area under any normal curve is 1, it follows that the areas on either side of z = 0 are both 0.5. Also, according to the Standard Deviation Rule, most of the area under the standardized curve falls between z = -3 and z = +3.

What is the probability that z is 0?

The normal table outlines the precise behavior of the standard normal random variable Z, the number of standard deviations a normal value x is below or above its mean. The normal table provides probabilities that a standardized normal random variable Z would take a value less than or equal to a particular value z*.

These particular values are listed in the form *.* in rows along the left margins of the table, specifying the ones and tenths. The columns fine-tune these values to hundredths, allowing us to look up the probability of being below any standardized value z of the form *.**.

For example, in the part of the table shown below, we can see that for a z-score of -2.81, we would find P(Z < -2.81) = 0.0025.

What is the probability that z is 0?

By construction, the probability P(Z < z*) equals the area under the z curve to the left of that particular value z*.

What is the probability that z is 0?

A quick sketch is often the key to solving normal problems easily and correctly.

Although normal tables are the traditional way to solve these problems, you can also use the normal calculator.

Normal Distribution Calculator: Non-JAVA Version

The image below illustrates the results of using the online calculator to find P(Z < -2.81) and P(Z < 1.15). Notice that the calculator behaves exactly as the table.

What is the probability that z is 0?

It is your choice to use the table or the online calculator but we will usually illustrate with the online calculator.

(a) What is the probability of a normal random variable taking a value less than 2.8 standard deviations above its mean?

P(Z < 2.8) = 0.9974 or 99.74%.

What is the probability that z is 0?

(b) What is the probability of a normal random variable taking a value lower than 1.47 standard deviations below its mean?

P(Z < -1.47) = 0.0708, or 7.08%.

What is the probability that z is 0?

(c) What is the probability of a normal random variable taking a value more than 0.75 standard deviations above its mean?

The fact that the problem involves the word “more” rather than “less” should not be overlooked! Our normal calculator provides left-tail probabilities, and adjustments must be made for any other type of problem.

Method 1:

By symmetry of the z curve centered on 0,

P(Z > +0.75) = P(Z < -0.75) = 0.2266.

What is the probability that z is 0?

Method 2:

Because the total area under the normal curve is 1,

P(Z > +0.75) = 1 – P(Z < +0.75) = 1 – 0.7734 = 0.2266.

What is the probability that z is 0?

[Note: most students prefer to use Method 1, which does not require subtracting 4-digit probabilities from 1.]

(d) What is the probability of a normal random variable taking a value between 1 standard deviation below and 1 standard deviation above its mean?

To find probabilities in between two standard deviations, we must put them in terms of the probabilities below. A sketch is especially helpful here:

P(-1 < Z < +1) = P(Z < +1) – P(Z < -1) = 0.8413 – 0.1587 = 0.6826.

What is the probability that z is 0?

Here are the normal calculator results which would be needed.

What is the probability that z is 0?

Did I Get This?: Standard Normal Probabilities

Comments:

  • So far, we have used the normal calculator or table to find a probability, given the number (z) of standard deviations below or above the mean. The solution process when using the table involved first locating the given z value of the form *.** in the margins, then finding the corresponding probability of the form 0.**** inside the table as our answer.
  • Now, in Example 2, a probability will be given and we will be asked to find a z value. The solution process using the table involves first locating the given probability of the form 0.**** inside the table, then finding the corresponding z value of the form *.** as our answer. For the online calculator, the solution is as simply typing in the correct probability and having the calculator solve, in reverse, for the z-score. 

Finding Standard Normal Scores

LO 6.18: Given a probability, find scores associated with a specified normal distribution.

It is often good to think about this process as the reverse of finding probabilities. In these problems, we will be given some information about the area in a range and asked to provide the z-score(s) associated with that range. Common types of questions are

  • Find the standard normal z-score corresponding to the top (or bottom) 8%.
  • Find the standard normal z-score associated with the 25th percentile. 
  • Find the standard normal z-scores which contain the middle 40%.

(a) What standard normal z-score is associated with the bottom (or lowest) 1%? The probability is 0.01 that a standardized normal variable takes a value below what particular value of z?

The closest we can come to a probability of 0.01 inside the table is 0.0099, in the z = -2.3 row and 0.03 column: z = -2.33. In other words, the probability is 0.01 that the value of a normal variable is lower than 2.33 standard deviations below its mean.

What is the probability that z is 0?

Using the online calculator, we simply use the calculator in reverse by typing in 0.01 in the “area” box (outlined in blue) and then click “compute” to see the associated z-score. Remember that, like the table, we always need to provide this calculator with the area to the left of the z-score we are currently trying to find.

What is the probability that z is 0?

(b) What standard normal z-score corresponds to the top (or upper) 15%? The probability is 0.15 that a standardized normal variable takes a value above what particular value of z?

Remember that the calculator and table only provide probabilities of being below a certain value, not above. Once again, we must rely on one of the properties of the normal curve to make an adjustment.

Method 1: According to the table, 0.15 (actually 0.1492) is the probability of being below -1.04. By symmetry, 0.15 must also be the probability of being above +1.04. Using the calculator, we can enter 0.15 exactly and find that the corresponding z-score is actually -1.036 giving a final answer of z = +1.036 or +1.04 if we round to two decimal places which is our preference (this results in no differences for students who use the table or the online calculator).

What is the probability that z is 0?

Method 2: If 0.15 is the probability of being above the value we seek, then 1 – 0.15 = 0.85 must be the probability of being below the value we seek. According to the table, 0.85 (actually 0.8508) is the probability of being below +1.04.

What is the probability that z is 0?

In other words, we have found 0.15 to be the probability that a normal variable takes a value more than 1.04 standard deviations above its mean.

(c) What standard normal z-scores contain the middle 95%? The probability is 0.95 that a normal variable takes a value within how many standard deviations of its mean?

A symmetric area of 0.95 centered at 0 extends to values -z* and +z* such that the remaining (1 – 0.95) / 2 = 0.025 is below -z* and also 0.025 above +z*. The probability is 0.025 that a standardized normal variable is below -1.96. Thus, the probability is 0.95 that a normal variable takes a value within 1.96 standard deviations of its mean. Once again, the Standard Deviation Rule is shown to be just roughly accurate, since it states that the probability is 0.95 that a normal variable takes a value within 2 standard deviations of its mean.

What is the probability that z is 0?

What is the probability that z is 0?

Did I Get This?: Finding Standard Normal Scores

Although the online calculator can provide results for any probability or z-score, our standard normal table, like most, only provides probabilities for z values between -3.49 and +3.49. The following example demonstrates how to handle cases where z exceeds 3.49 in absolute value.

(a) What is the probability of a normal variable being lower than 5.2 standard deviations below its mean?

There is no need to panic about going “off the edge” of the normal table. We already know from the Standard Deviation Rule that the probability is only about (1 -0 .997) / 2 = 0.0015 that a normal value would be more than 3 standard deviations away from its mean in one direction or the other. The table provides information for z values as extreme as plus or minus 3.49: the probability is only 0.0002 that a normal variable would be lower than 3.49 standard deviations below its mean. Any more standard deviations than that, and we generally say the probability is approximately zero.

In this case, we would say the probability of being lower than 5.2 standard deviations below the mean is approximately zero:

P(Z < -5.2) = 0 (approx.)

(b) What is the probability of the value of a normal variable being higher than 6 standard deviations below its mean?

Since the probability of being lower than 6 standard deviations below the mean is approximately zero, the probability of being higher than 6 standard deviations below the mean must be approximately 1.

P(Z > -6) = 1 (approx.)

(c) What is the probability of a normal variable being less than 8 standard deviations above the mean?

Approximately 1. P(Z < +8) = 1 (approx.)

(d) What is the probability of a normal variable being greater than 3.5 standard deviations above the mean?

Approximately 0. P(Z > +3.5) = 0 (approx.)