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Ch. 01: Data and Statistics
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1.Different methods of developing useful information from large data bases are dealt with under
- data manipulation.
- data warehousing.
- big data.
- data mining.
- data manipulation.
- data mining.
- data warehousing.
- big data.
- methods for developing useful decision-making information from large data bases.
- keeping data secure so that unauthorized individuals cannot access the data.
- computational procedure for data analysis.
- computing the average for data.
- ordinal
- nominal
- ratio
- interval
- ratio
- ordinal
- nominal
- interval
- ordinal
- ratio
- nominal
- interval
- ratio scale.
2.The process of capturing, storing, and maintaining data is known as
3.The subject of data mining deals with
4.In a questionnaire, respondents are asked to mark their gender as male or female. The scale of measurement for gender is _____ scale.
5.The scale of measurement that is used to rank order the observation for a variable is called the _____ scale.
6.A restaurant asks their customers to fill out a questionnaire indicating whether their service was excellent, very good, good, or poor. The rating scale used is an example of the _____ scale.
7.The data measured on ordinal scale exhibits all the properties of data measured on
Essentials of Statistics for Business & Economics, 10e Jeffrey, Cochran, Fry, Ohlmann, Anderson, Sweeney, Williams (Test Bank All Chapters, 100% Original Verified, A+ Grade) 1 / 4
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Ch. 01: Data and Statistics
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- interval scale.
- nominal scale.
- nominal and interval scales.
- Measurement of body temperature is an example of a variable that uses
- the ratio scale.
- the interval scale.
- the ordinal scale.
- either the ratio or the ordinal scale.
- Arithmetic operations provide meaningful results for variables that
- use any scale of measurement except nominal and ordinal.
- appear as non-numerical values.
- are quantitative.
- have non-negative values.
- Height is an example of a variable that uses the _____ scale.
- ratio
- interval
- nominal
- ordinal
- Data measured in a nominal scale
- must be alphabetic.
- can be either numeric or nonnumeric.
- must be numeric.
- must rank order the data.
- The scale of measurement that has an inherent zero value defined is the _____ scale.
- ratio
- nominal
- ordinal
- interval
- The measurement scale suitable for quantitative data is _____ scale.
- the ordinal
- the nominal
- either the interval or ratio
- only the interval
- Data are
- always numeric.
- always non-numeric. 2 / 4
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Ch. 01: Data and Statistics
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- the raw material of statistics.
- always categorical.
- The entities on which data are collected are
- elements.
- populations.
- samples.
- observations.
- The set of measurements collected for a particular element are called
- variables.
- observations.
- samples.
- populations.
- A characteristic of interest for the elements is called a
- sample.
- data set.
- variable.
- quality.
- All the data collected in a particular study are referred to as the
- sample.
- variable.
- data set.
- population.
- Quantitative data
- are always non-numeric.
- may be either numeric or non-numeric.
- are always numeric.
- are never numeric.
- In a questionnaire, respondents are asked to mark their marital status as single, married, divorced, or widowed. Marital
- categorical
- quantitative
- interval-scale
- ordinal-scale
status is an example of a(n) _____ variable.
- The number of observations will always be the same as the
- number of variables.
- number of elements.
- population size. 3 / 4
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Ch. 01: Data and Statistics
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- sample size.
- Categorical data
- must be numeric.
- must be nonnumeric.
- cannot be numeric.
- may be either numeric or nonnumeric.
- Categorical data
- indicate either how much or how many.
- cannot be numeric
- are labels used to identify attributes of elements.
- must be nonnumeric.
- Ordinary arithmetic operations are meaningful
- only with categorical data.
- only with quantitative data.
- either with quantitative or categorical data.
- with neither quantitative nor categorical data.
- A student’s dormitory room number is an example of
- a quantitative variable.
- either a quantitative or a categorical variable.
- an exchange variable.
- a categorical variable.
- Goals scored in a soccer game is an example of
- a categorical variable.
- a quantitative variable.
- either a quantitative or categorical variable.
- neither a quantitative nor categorical variable.
- For ease of data entry into a university database, 1 denotes that the student is a freshman, 2 indicates a sophomore, 3
- categorical.
- quantitative.
- either categorical or quantitative.
- neither categorical nor quantitative.
indicates a junior, and 4 indicates that the student is a senior. In this case, data are
- Arithmetic operations are inappropriate for
- categorical data.
- quantitative data.
- both categorical and quantitative data.
- large data sets.
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