This document discusses applying statistics to business decision making. It covers descriptive and inferential statistics, qualitative attributes like ordinal and nominal data, quantitative attributes that can be measured, and concepts like population, sample, and bias. Ordinal data involves ranking with a rating scale, while nominal data uses categorical responses. Quantitative data includes measurable values like moisture content and calorie levels. The document also distinguishes between interval and ratio levels of measurement and defines population and sample sizes for statistical analysis.
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Mgmt600 1002 A 03 P1 T1 Ip Carl Wills
1. Applying Statistics to Business Decision MakingCarl WillsMGMT600-1002A-03Phase 1 Task 1 Individual ProjectProfessor Claude SupervilleColorado Technical University OnlineApril 9, 2010
3. Snack Food Qualitative AttributesQualitative VariablesOrdinal specific order or ranking such asPastry cake consumer satisfaction using a rating scale of one to five. Where five represents the highest level of satisfaction.Ranking consumer confidence in which snack food brands are most desirable and Nominal measuring categorized responses such as Gender, where consumers live, and favorite color etc. (Levels of Measurement, n.d.)
5. The Relationship between Nominal and Ordinal Data Using a Rating ScaleNominal Data:Data is nominal if the values / observations can be assigned a code (numbers) where the numbers are merely labels. For example, the code (number) of zero could indicate males and the code one could indicate females so on and so forth. You can count nominal data but you can not place data in order or measure nominal data.Ordinal Data:Data is ordinal if the values / observations can be ranked (put in order) or by attaching a rating scale to it. Ordinal data can be counted and placed in order as illustrated on the previous slide example of consumer satisfaction, but ordinal data cannot be measured.
6. Quantitative AttributesQuantitative data is numerical.Using quantitative data scientifically (i.e., Company W might want to consider):Measuring snack food moisture content.Caloric value such as sugar, fat, trans fat, and vitamin content etc.
7. Interval and Ratio DataThe difference between:Interval:Numerical.Intervals have the same interpretation throughout.Not perfect and have no true zero point.Ratio:Numerical and most informative.Has a true zero point where the zero position indicates the absence of the quantity being measured.
8. Population, Sample, Avoiding BiasPopulation: The upper case N represents the total population.Nationally N=6 million.State N=500,000City N=50,000Sample: The lower case n represents the sample of the population.Nationally n=5000State n=500City n= 50BiasEvil intent.Unintentional (i.e., miss representation of information, errors, etc.).Possible populations for statistical analysis:Mothers and children (ages between 12-16).
9. ReferencesBowerman, B. OConnell, R. Orris, J. Murphree, E. (2010). Essentials of business statistics (3rd ed.). McGraw-Hill Irvin.Colorado Technical University Online. (2010). Applied managerial decision-making: Task list. Retrieved April 2, 2010, from https://campus.ctuonline.edu/classroom/...Croucher, J. (2001). Statistics: Making business decisions. McGraw-HillLevels of Measurements. (n.d.). Types of scales. Retrieved April 7, 2010, from http://onlinestatbook.com/chapter1/levels_of_measurement.htmlTriola, M. (2008, p. 8). Elementary statistics (10th ed.). Pearson. Addison Wesley