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1.4: Levels of Measurement

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    Once you have a set of data, you will need to organize it so that you can analyze how frequently each datum occurs in the set. However, when calculating the frequency, you may need to round your answers so that they are as precise as possible.

    Levels of Measurement

    The way a set of data is measured is called its level of measurement. Correct statistical procedures depend on a researcher being familiar with levels of measurement. Not every statistical operation can be used with every set of data. Data can be classified into four levels of measurement. They are (from lowest to highest level):

    • Nominal scale level
    • Ordinal scale level
    • Interval scale level
    • Ratio scale level

    Data that is measured using a nominal scale is qualitative (categorical). Categories, colors, names, labels and favorite foods along with yes or no responses are examples of nominal level data. Nominal scale data are not ordered. For example, trying to classify people according to their favorite food does not make any sense. Putting pizza first and sushi second is not meaningful.

    Smartphone companies are another example of nominal scale data. The data are the names of the companies that make smartphones, but there is no agreed upon order of these brands, even though people may have personal preferences. Nominal scale data cannot be used in calculations.

    Data that is measured using an ordinal scale is similar to nominal scale data but there is a big difference. The ordinal scale data can be ordered. An example of ordinal scale data is a list of the top five national parks in the United States. The top five national parks in the United States can be ranked from one to five but we cannot measure differences between the data.

    Another example of using the ordinal scale is a cruise survey where the responses to questions about the cruise are “excellent,” “good,” “satisfactory,” and “unsatisfactory.” These responses are ordered from the most desired response to the least desired. But the differences between two pieces of data cannot be measured. Like the nominal scale data, ordinal scale data cannot be used in calculations.

    Data that is measured using the interval scale is similar to ordinal level data because it has a definite ordering but there is a difference between data. The differences between interval scale data can be measured though the data does not have a starting point.

    Temperature scales like Celsius (C) and Fahrenheit (F) are measured by using the interval scale. In both temperature measurements, 40° is equal to 100° minus 60°. Differences make sense. But 0 degrees does not because, in both scales, 0 is not the absolute lowest temperature. Temperatures like -10° F and -15° C exist and are colder than 0.

    Interval level data can be used in calculations, but one type of comparison cannot be done. 80° C is not four times as hot as 20° C (nor is 80° F four times as hot as 20° F). There is no meaning to the ratio of 80 to 20 (or four to one).

    Data that is measured using the ratio scale takes care of the ratio problem and gives you the most information. Ratio scale data is like interval scale data, but it has a 0 point and ratios can be calculated. For example, four multiple choice statistics final exam scores are 80, 68, 20 and 92 (out of a possible 100 points). The exams are machine-graded.

    The data can be put in order from lowest to highest: 20, 68, 80, 92.

    The differences between the data have meaning. The score 92 is more than the score 68 by 24 points. Ratios can be calculated. The smallest score is 0. So 80 is four times 20. The score of 80 is four times better than the score of 20.

    Frequency

    Twenty students were asked how many hours they worked per day. Their responses, in hours, are as follows: 5; 6; 3; 3; 2; 4; 7; 5; 2; 3; 5; 6; 5; 4; 4; 3; 5; 2; 5; 3.

    Table \(\PageIndex{1}\) lists the different data values in ascending order and their frequencies.

    Data value Frequency
    2 3
    3 5
    4 3
    5 6
    6 2
    7 1

    Table \(\PageIndex{1}\) Frequency Table of Student Work Hours

    A frequency is the number of times a value of the data occurs. According to Table \(\PageIndex{1}\), there are three students who work two hours, five students who work three hours, and so on. The sum of the values in the frequency column, 20, represents the total number of students included in the sample.

    A relative frequency is the ratio (fraction or proportion) of the number of times a value of the data occurs in the set of all outcomes to the total number of outcomes. To find the relative frequencies, divide each frequency by the total number of students in the sample–in this case, 20. Relative frequencies can be written as fractions, percents, or decimals.

    Data value Frequency Relative frequency
    2 3 320320 or 0.15
    3 5 520520 or 0.25
    4 3 320320 or 0.15
    5 6 620620 or 0.30
    6 2 220220 or 0.10
    7 1 120120 or 0.05

    Table \(\PageIndex{2}\) Frequency Table of Student Work Hours with Relative Frequencies

    The sum of the values in the relative frequency column of Table \(\PageIndex{2}\) is 20202020 , or 1.

    Cumulative relative frequency is the accumulation of the previous relative frequencies. To find the cumulative relative frequencies, add all the previous relative frequencies to the relative frequency for the current row, as shown in Table \(\PageIndex{3}\).

    Data value Frequency Relative frequency Cumulative relative frequency
    2 3 320320 or 0.15 0.15
    3 5 520520 or 0.25 0.15 + 0.25 = 0.40
    4 3 320320 or 0.15 0.40 + 0.15 = 0.55
    5 6 620620 or 0.30 0.55 + 0.30 = 0.85
    6 2 220220 or 0.10 0.85 + 0.10 = 0.95
    7 1 120120 or 0.05 0.95 + 0.05 = 1.00

    Table \(\PageIndex{3}\) Frequency Table of Student Work Hours with Relative and Cumulative Relative Frequencies

    The last entry of the cumulative relative frequency column is one, indicating that one hundred percent of the data has been accumulated.

    NOTE

    Because of rounding, the relative frequency column may not always sum to one, and the last entry in the cumulative relative frequency column may not be one. However, they each should be close to one.

    Table \(\PageIndex{4}\) represents the heights, in inches, of a sample of 100 male semiprofessional soccer players.

    Heights (inches) Frequency Relative frequency Cumulative relative frequency
    59.95–61.95 5 51005100 = 0.05 0.05
    61.95–63.95 3 31003100 = 0.03 0.05 + 0.03 = 0.08
    63.95–65.95 15 1510015100 = 0.15 0.08 + 0.15 = 0.23
    65.95–67.95 40 4010040100 = 0.40 0.23 + 0.40 = 0.63
    67.95–69.95 17 1710017100 = 0.17 0.63 + 0.17 = 0.80
    69.95–71.95 12 1210012100 = 0.12 0.80 + 0.12 = 0.92
    71.95–73.95 7 71007100 = 0.07 0.92 + 0.07 = 0.99
    73.95–75.95 1 11001100 = 0.01 0.99 + 0.01 = 1.00
    Total = 100 Total = 1.00

    Table \(\PageIndex{4}\) Frequency Table of Soccer Player Height

    The data in this table have been grouped into the following intervals:

    • 59.95 to 61.95 inches
    • 61.95 to 63.95 inches
    • 63.95 to 65.95 inches
    • 65.95 to 67.95 inches
    • 67.95 to 69.95 inches
    • 69.95 to 71.95 inches
    • 71.95 to 73.95 inches
    • 73.95 to 75.95 inches

    In this sample, there are five players whose heights fall within the interval 59.95–61.95 inches, three players whose heights fall within the interval 61.95–63.95 inches, 15 players whose heights fall within the interval 63.95–65.95 inches, 40 players whose heights fall within the interval 65.95–67.95 inches, 17 players whose heights fall within the interval 67.95–69.95 inches, 12 players whose heights fall within the interval 69.95–71.95, seven players whose heights fall within the interval 71.95–73.95, and one player whose heights fall within the interval 73.95–75.95. All heights fall between the endpoints of an interval and not at the endpoints.

    EXAMPLE 1.14

    Problem

    From Table \(\PageIndex{4}\), find the percentage of heights that are less than 65.95 inches.

    TRY IT 1.14

    Table \(\PageIndex{5}\) shows the amount, in inches, of annual rainfall in a sample of towns.

    Rainfall (inches) Frequency Relative frequency Cumulative relative frequency
    2.95–4.97 6 650650 = 0.12 0.12
    4.97–6.99 7 750750 = 0.14 0.12 + 0.14 = 0.26
    6.99–9.01 15 15501550 = 0.30 0.26 + 0.30 = 0.56
    9.01–11.03 8 850850 = 0.16 0.56 + 0.16 = 0.72
    11.03–13.05 9 950950 = 0.18 0.72 + 0.18 = 0.90
    13.05–15.07 5 550550 = 0.10 0.90 + 0.10 = 1.00
    Total = 50 Total = 1.00

    Table \(\PageIndex{5}\)

    From Table 1.9, find the percentage of rainfall that is less than 9.01 inches.

    EXAMPLE 1.15

    Problem

    From Table \(\PageIndex{4}\), find the percentage of heights that fall between 61.95 and 65.95 inches.

    TRY IT 1.15

    From Table \(\PageIndex{5}\), find the percentage of rainfall that is between 6.99 and 13.05 inches.

    EXAMPLE 1.16

    Problem

    Use the heights of the 100 male semiprofessional soccer players in Table \(\PageIndex{4}\). Fill in the blanks and check your answers.

    1. The percentage of heights that are from 67.95 to 71.95 inches is: ____.
    2. The percentage of heights that are from 67.95 to 73.95 inches is: ____.
    3. The percentage of heights that are more than 65.95 inches is: ____.
    4. The number of players in the sample who are between 61.95 and 71.95 inches tall is: ____.
    5. What kind of data are the heights?
    6. Describe how you could gather this data (the heights) so that the data are characteristic of all male semiprofessional soccer players.

    Remember, you count frequencies. To find the relative frequency, divide the frequency by the total number of data values. To find the cumulative relative frequency, add all of the previous relative frequencies to the relative frequency for the current row.

    EXAMPLE 1.17

    Nineteen people were asked how many miles, to the nearest mile, they commute to work each day. The data are as follows: 2; 5; 7; 3; 2; 10; 18; 15; 20; 7; 10; 18; 5; 12; 13; 12; 4; 5; 10. Table 1.10 was produced:

    Data Frequency Relative frequency Cumulative relative frequency
    3 3 319319 0.1579
    4 1 119119 0.2105
    5 3 319319 0.1579
    7 2 219219 0.2632
    10 3 419419 0.4737
    12 2 219219 0.7895
    13 1 119119 0.8421
    15 1 119119 0.8948
    18 1 119119 0.9474
    20 1 119119 1.0000

    Table \(\PageIndex{6}\) Frequency of Commuting Distances

    Problem

    1. Is the table correct? If it is not correct, what is wrong?
    2. True or False: Three percent of the people surveyed commute three miles. If the statement is not correct, what should it be? If the table is incorrect, make the corrections.
    3. What fraction of the people surveyed commute five or seven miles?
    4. What fraction of the people surveyed commute 12 miles or more? Less than 12 miles? Between five and 13 miles (not including five and 13 miles)?

    TRY IT 1.17

    Table \(\PageIndex{5}\) represents the amount, in inches, of annual rainfall in a sample of towns. What fraction of towns surveyed get between 11.03 and 13.05 inches of rainfall each year?

    EXAMPLE 1.18

    Table \(\PageIndex{7}\) contains the total number of deaths worldwide as a result of earthquakes for the period from 2000 to 2012.

    Year Total number of deaths
    2000 231
    2001 21,357
    2002 11,685
    2003 33,819
    2004 228,802
    2005 88,003
    2006 6,605
    2007 712
    2008 88,011
    2009 1,790
    2010 320,120
    2011 21,953
    2012 768
    Total 823,856

    Table \(\PageIndex{7}\)

    Problem

    Answer the following questions.

    1. What is the frequency of deaths measured from 2006 through 2009?
    2. What percentage of deaths occurred after 2009?
    3. What is the relative frequency of deaths that occurred in 2003 or earlier?
    4. What is the percentage of deaths that occurred in 2004?
    5. What kind of data are the numbers of deaths?
    6. The Richter scale is used to quantify the energy produced by an earthquake. Examples of Richter scale numbers are 2.3, 4.0, 6.1, and 7.0. What kind of data are these numbers?

    TRY IT 1.18

    Table \(\PageIndex{8}\) contains the total number of fatal motor vehicle traffic crashes in the United States for the period from 1994 to 2011.

    Year Total number of crashes Year Total number of crashes
    1994 36,254 2004 38,444
    1995 37,241 2005 39,252
    1996 37,494 2006 38,648
    1997 37,324 2007 37,435
    1998 37,107 2008 34,172
    1999 37,140 2009 30,862
    2000 37,526 2010 30,296
    2001 37,862 2011 29,757
    2002 38,491 Total 653,782
    2003 38,477

    Table \(\PageIndex{8}\)

    Answer the following questions.

    1. What is the frequency of deaths measured from 2000 through 2004?
    2. What percentage of deaths occurred after 2006?
    3. What is the relative frequency of deaths that occurred in 2000 or before?
    4. What is the percentage of deaths that occurred in 2011?
    5. What is the cumulative relative frequency for 2006? Explain what this number tells you about the data.

    1.4: Levels of Measurement is shared under a not declared license and was authored, remixed, and/or curated by LibreTexts.

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