Review Identify the population and the sample 38 nurses working in the San Francisco area were surveyed concerning their opinions of managed health care.

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Review Identify the population and the sample 38 nurses working in the San Francisco area were surveyed concerning their opinions of managed health care. A survey of 898 U.S. adult VCR owners found that 16% had VCR clocks that were currently blinking “12:00”. Determine whether the numerical value describes a parameter or a statistic. The 2003 team payroll of the Baltimore orioles was $69,452,275. In a survey of a sample of U.S. adults 62% owned a portable cellular phone.

Unit 1-2 Data Classification

Types of Data When doing a study, it is important to know the kind of data involved. The nature of the data you are working determines the amount of information contained in the data and indicates the most appropriate data summarization and statistical analysis. In this section, you will learn how to classify data by type and by level of measurement. Data sets can consist of two types of data: Qualitative Data: consists of attributes, labels or nonnumerical entries. (statistical analysis is fairly limited) Quantitative Data: consists of numerical measurements or counts.

Example1 ModelBase Price ZX2$13,750 Focus LX$13,800 Ranger XL$14,720 Taurus LX$20,490 Explorer Sport-Trac$23,840 Crown Victoria$24,515 Windstar LX$27,000 Expedition XLT$34,710 The base prices of several vehicles are shown in the Table to the left. Which data are qualitative and which are quantitative? Explain your reasoning.

Example 2 CityPopulation Baltimore, MD638,614 Boston, MA589,281 Dallas, TX1,211,467 Las Vegas NV508,604 Lincoln, NE232,362 Seattle, WA570,426 The population of several U.S. cities are shown in the table. Which data are qualitative and which are quantitative? Explain your reasoning.

Levels of Measurement Another characteristic of data is it’s level of measurement. The level of measurement determines which statistical calculations are meaningful. The four levels of measurement, in order from lowest to highest, are nominal, ordinal, interval, and ratio. Data at the nominal level of measurement are qualitative only. Data at this level are categorized using names, labels or qualities. No mathematical computations can be made at this level. Data at the ordinal level of measurement are qualitative or quantitative. Data at this level can be arranged in order, but differences between data entries are not meaningful. Data at the interval level of measurement are quantitative. The data can be ordered, and you can calculate meaningful differences between data entries. At the interval level, a zero entry simply represents a position on a scale; the entry is not an inherent zero. (implies “none”) Data at the ratio level of measurement are similar to data at the interval level, with the added property that a zero entry is an inherent zero. A ratio of two data values can be formed so one data value can be expressed as a multiple of another.

Inherent Zero An inherent zero is a zero that implies “none”. For instance, the amount of money you have in a savings account could be zero dollars. In this case, the zero represents no money; it is an inherent zero. On the other hand, a temperature of 0˚ C does not represent a condition in which no heat is present. The 0˚ C temperature is simply a position on the Celsius scale. It is NOT an inherent zero. An easy way to distinguish between the interval and ratio level is to determine whether the expression ”twice as much” has any meaning in the context of the data. For example $2 is twice as much as $1, so these data are at the ratio level. On the other hand, 2˚ C is not twice as warm as 1˚ C, so these data are at the interval level.

Nominal Level of Measurement Network Affiliates in Portland Oregon KATU – ABC KGW - NBC KOIN - CBS KPTV - FOX This data set consists of the call letters of each network affiliate in Portland. The call letters are simply names of the network affiliates, so these data are at the nominal level.

Ordinal Level of Measurement Top 5 TV Programs (from 3/08/04 to 3/14/04) 1.CSI 2.American Idol – Tuesday 3.American Idol - Wednesday 4.Without a Trace 5.Survivor This data set lists the rank of 5 TV programs. The data consist of the ranks 1,2, 3, 4, and 5. Because the rankings can be listed in order, these data are at the ordinal level. Note: The difference between the rank of 1 and 5 has no mathematical meaning.

Interval Level of Measurement New York Yankees’ World Series Victories (Years) This data set quantitative data. Consider the dates the Yankees’ World Series victories. It makes to find the differences between specific dates. For instance, the time between the Yankees’ first and last World Series is 86 years. Note: it does not make sense to write a ratio using these dates. So, these data are at the interval level.

Ratio Level of Measurement 2003 National League Home Run Totals (by Team) Atlanta235 Arizona152 Chicago172 Cincinnati182 Colorado198 Florida157 Houston191 Los Angeles124 Milwaukee196 Montreal144 New York124 Philadelphia166 Pittsburgh163 San Diego128 San Francisco180 St. Louis196 Using the home run totals data, you can find differences and write ratios. From the data, you can see that Milwaukee hit 52 more homeruns than Montreal hit and that Atlanta hit twice as many home runs as Los Angeles hit. So, these data are at the ratio level.

Summarization Level of Measurement Put Data in Categories Arrange data in order Subtract data values Determine if one data value is a multiple of another NominalYesNo OrdinalYes No IntervalYes No RatioYes

Practice Consider the following data sets. For each data set, decide whether the data are at the nominal level or at the ordinal level. 1. The final standings for the Northeast Division of the National Hockey league. 2. A collection of phone numbers.

Practice Consider the following data sets. For each data set, decide whether the data are at the interval level or at the ratio level. 1. The body temperature (in degree’s Fahrenheit) of an athlete during an exercise session. 2. The heart rates ( in beats per minute) of an athlete during an exercise session.

Examples of Data SetMeaningful Calculations Nominal Level (Qualitative data) Types of Music played by a radio station Pop Modern Rock Contemporary jazz Hip hop Put in a category For instance a song played by the radio station could be put into one of the four categories shown. Ordinal Level (Qualitative or Quantitative data) Modern Picture Association of America ratings description G – General Audiences PG – Parental Guidance Suggested PG -13 – Parents Strongly Cautioned R – Restricted NC- 17 – No one under 17 Admitted. Put in a category and put in order. For instance, a PG rating has a stronger restriction than a G rating Interval Level (Quantitative data) Average Monthly Temperature (in degrees Fahrenheit) for Sacramento, CA Jan – 46 Jul – 75 Feb – 51 Aug – 74 Mar – 55 Sep – 72 Apr – 59 Oct – 64 May – 65 Nov – 53 Jun – 71 Dec - 46 Put in a category, put in order, and find differenced between values. For instance, 71 – 65 = 6 degrees, So June is 6 degrees warmer than May. Ratio Level (Quantitative data) Average Monthly Rainfall in inches for Sacramento Jan – 3.8 Jul – 0.1 Feb – 3.5 Aug – 0.1 Mar – 2.8 Sep – 0.4 Apr – 1.0 Oct – 0.9 May – 0.5 Nov – 2.2 Jun – 0.2 Dec – 2.5 Put in a category, put in order, find differences between values, and find ratios of values. For instance, 1.0/0.5= 2. So there is twice as much as rain in April as in May.