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28-1 Any characteristic of a population distribution may properly be
36-2 which the tools of inferential statistics can be used
721-3 A factor that is varied by an experimenter in order to
729-1 "Characteristics of a population are called ________, while"
729-3 A population is:
733-1 The set of test scores for Miss Grady's class comprise
743-2 Populations are always infinite.
744-1 Statistical interpretation depends not only upon statistical ideas
746-2 The smallest unit used in the selection process of the samp
777-2 FACTOR
1131-2 "In this experiment, IQ serves as:"
1132-1 "In this experiment, anxiety serves as:"
1132-2 "In this experiment, the drug serves as:"
1134-2 "In this experiment, the achievement test serves as:"
1136-2 Which of the following names a variable and not a level of a variable?
1141-2 Which of the following groups would serve best in this study?
1142-1 The control group in an experiment should be designed to receive
1144-1 This study would be classified as:
1148-1 An independent variable is:
1422-1 A 95% confidnece interval for a population mean will be ______ a
1425-2 A confidence interval estimate for a parameter is used to
1426-2 Confidence intervals can be shortened by increasing the sample size.
1460-1 "If the size of the sample being used is increased, "
1461-1 Which set of circumstances is most likely to result in a narrow
1511-1 "For a given situation, the longer your confidence interval"
1513-1 "Generally, a larger sample size implies a shorter confidence interval."
1513-2 Generally a larger sample size implies a larger level of confidence
1548-1 The larger the sample size the wider the confidence interval.
1563-1 Is it a simple random sample?
1564-2 An important objective of statistics is to draw conclusions about
1565-1 Target Population.
1573-1 if the samples had been of size 100?
1727-2 Do you agree or disagree with the stated conclusion?
1789-1 Do you regard 27% as a trustworthy estimate
1832-1 Draw all possible samples of size 2 from population 1
1870-1 How will you select brands?
1893-3 Create a simple data set and explain how it would be used
1908-4 The variance of the population is:
1911-2 The variance (SIGMA**2) for this population of data is:
1952-1 If a random sample is sufficiently large its variance will be
1961-1 the range of the middle fifty percent of
2629-1 What is the importance of randomization in experimental investigation?
2726-2 What is a placebo?
2748-1 A treatment effect is the increase or decrease in the size of the
2749-1 Random assignment of experimental units to treatments is necessary for
2752-1 FACTOR
2752-2 ILLUSTRATION OF FACTORS HELD CONSTANT IN AN INVESTIGATION
2753-1 ILLUSTRATION OF FACTORS NOT HELD CONSTANT BUT REGARDED AS NEGLIGIBLE
2760-1 CONTROL OR CHECK TREATMENT
2766-1 CONTROLLED INVESTIGATION
2813-1 What are the reasons for sampling?
2814-2 The smallest unit used in the selection process in a sample survey
2814-3 The smallest unit on which a measurement or record in a sample survey
2814-4 The method of choosing individuals from one or more populations is
2820-1 The major advantage of a probability sample compared with a non-
2822-1 and why is randomization so important in statistics?
2822-3 since we have used randomization at some level
2823-3 A random sample is a representative sample.
2824-3 in most applied situations sampling with replacement is used.
2825-1 Randomness is less important in a large sample than in a small
2825-3 A simple random sample is one where
2826-1 Which of the following is a necessary condition for a sample to be
2826-2 A (simple) random sample is defined by
2827-1 Which of the following is NOT true of simple random sampling?
2829-1 Is his sample random? Why or why not?
2830-2 Outline a method for obtaining a random sample in such a situation.
2831-1 Which houses would you visit to obtain the interviews?
2833-2 replace individuals chosen before drawing another.
2891-2 Your statistics class
2902-1 A list or a description of every sampling unit in the universe is
2904-1 Sampling error occurs because
2904-3 "Sampling error, which can be attributed to the fact that only a sample"
2921-1 which one of the following errors would be most likely to occur:
2922-1 Explain why the Digest was so wrong.
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Q: Any characteristic of a population distribution may properly be referred to as a a. standard deviation. b. raw score. c. standard score. d. standard error. e. parameter.
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Q: A researcher studying consumer buying habits questions every twentieth person entering Publix Supermarket. He asks, "How many times per week do you go grocery shopping?" He then records the answer as T. i) Then [T = 3] is a) a sample space b) a random variable c) an event of interest d) b and c e) none of these Suppose the researcher questions 427 shoppers during the survey. ii) Give an example relating to this survey of the kind of question which the tools of descriptive statistics can be used to answer. iii) Give an example relating to this survey of the kind of question which the tools of inferential statistics can be used to answer.
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Q: A factor that is varied by an experimenter in order to assess its effect is known as a(n): a. dependent variable b. independent variable c. control variable d. none of the above
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Q: Characteristics of a population are called ________, while those of a sample are termed _________. a. statistics; measures d. statistics; parameters b. parameters; statistics e. none of these c. statistics; variables
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Q: A population is: a. a number or measurement collected as a result of observation b. a subset of a population c. a characteristic of a population which is measurable d. a complete set of individuals, objects, or measurements having some common observable characteristics e. none of these
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Q: Suppose we are interested in the average reading achievement test score of the currently enrolled students in Edison Elementary School. i. The set of test scores for Miss Grady's class comprise a. an element. b. a sample. c. a statistic. d. a population. ii. The average score of all students in Edison School is a a. sample. b. statistic. c. parameter. d. variable.
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Q: True or False? Populations are always infinite.
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Q: True or False? If False, correct it. Statistical interpretation depends not only upon statistical ideas but also upon "ordinary" clear thinking regarding ideas of cause and effect.
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Q: True or False? The smallest unit used in the selection process of the sample is called a sampling unit.
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Q: Define the following term and give an example of its use. Your example should not be one given in class or in a handout. FACTOR
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Q: An experiment is conducted to determine if the use of certain specified amounts of a drug will increase the IQ scores differentially for high and low anxious students in the fifth grade. In this experiment, IQ serves as: a) a primary independent variable b) a moderator variable c) a dependent variable d) a control variable e) an intervening variable.
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Q: An experiment is conducted to determine if the use of certain specified amounts of a drug will increase the IQ scores differentially for high and low anxious students in the fifth grade. In this experiment, anxiety serves as: a) a primary independent variable b) a moderator variable c) a dependent variable d) a control variable e) an intervening variable.
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Q: An experiment is conducted to determine if the use of certain specified amounts of a drug will increase the IQ scores differentially for high and low anxious students in the fifth grade. In this experiment, the drug serves as: a) a primary independent variable b) a moderator variable c) a dependent variable d) a control variable e) an intervening variable.
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Q: Male students are assigned randomly to either a rote learning (memori- zation) treatment or to a discovery learning treatment. At the end of the experiment, students are tested for their ability to answer ques- tions on an achievement test. The results indicate that fast learners in the discovery treatment do better than the slow learners in this treatment, but there is no difference in performance between the two types of learners in the rote treatment. In this experiment, the achievement test serves as: a. a primary independent variable b. a moderator variable c. a dependent variable d. a control variable e. an intervening variable
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Q: Male students are assigned randomly to either a rote learning (memori- zation) treatment or to a discovery learning treatment. At the end of the experiment, students are tested for their ability to answer ques- tions on an achievement test. The results indicate that fast learners in the discovery treatment do better than the slow learners in this treatment, but there is no difference in performance between the two types of learners in the rote treatment. Which of the following names a variable and not a level of a variable? a. Male sophomores b. High anxious students c. Grade point average d. Treatment A e. All of the above
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Q: In a study on the effect of reinforcement on learning from pro- grammed text, two experimental treatments are planned: reinforce- ment given after every frame of programmed text or reinforcement given after every three frames. Which one of the following control groups would serve best in this study? a. A group which does not read the programmed text material. b. A group which reads the programmed material in prose format. c. A group which reads the programmed material but does not re- ceive reinforcement. d. A group which reads the programmed text material and rein- forcement is given at random.
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Q: The control group in an experiment should be designed to receive: a. the opposite of the experiences afforded the experimental group. b. the experiences afforded the experimental group except for the treatment under examination. c. the experiences afforded the experimental group except for receiving the treatment at random. d. the experiences which constitute an absence of the experiences received by the experimental group.
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Q: A coach in a large high school thinks that ballet training will im- prove the batting performance of his baseball team. He decides to have a randomly selected half of the team take six weeks of ballet training before the baseball season begins while the other half does not take such training. He will then compare the season batting aver- ages of group A (those with ballet training) and group B (those with- out ballet training) by comparing the mean of group A with the mean of group B. This study would be classified as: a. a survey study b. an ex post facto study c. a correlational study d. a trend study e. an experimental study
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Q: A coach in a large high school thinks that ballet training will improve the batting performance of his baseball team. He decides to have a ran- domly selected half of the team take six weeks of ballet training before the baseball season begins, while the other half does not take such training. He will then compare the season batting averages of group A (those with ballet training) and group B (those without ballet training) by comparing the mean of group A with the mean of group B. An independent variable is: a. ballet training b. batting average c. runs batted in d. the size of the school e. the grades the players make in the ballet school
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Q: A 95% confidnece interval for a population mean will be ______ a 99% confidence interval for the same population mean. (Both cal- culations based on the same set of data.) a. longer than b. shorter than c. the same length as d. it depends on the particular set of data e. none of these
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Q: True or False? If False, correct it. A confidence interval estimate for a parameter is used to eliminate the element of chance from estimation.
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Q: True or False? If False, correct it. Confidence intervals can be shortened by increasing the sample size.
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Q: If the size of the sample being used is increased, then the width of a 0.95 confidence interval estimate for a population mean will: a) Become narrower. b) Become wider. c) Not be changed. d) The effect on the width cannot be determined from the given information.
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Q: Which set of circumstances is most likely to result in a narrow confidence interval? a. large n and a confidence coefficient of .95. b. large n and a confidence coefficient of .99. c. small n and a confidence coefficient of .95. d. small n and a confidence coefficient of .99.
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Q: True or False? If false, correct it. For a given situation, the longer your confidence interval is, the lower your confidence in it is.
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Q: True or False? If False, explain why. Generally, a larger sample size implies a shorter confidence interval.
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Q: True or false? If false, explain why. Generally a larger sample size implies a larger level of confidence in estimating a parameter.
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Q: True or False? If False, correct it. The larger the sample size the wider the confidence interval.
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Q: A sample is chosen by numbering all the red books in the library and then choosing the ones that correspond to random digits in a table. Is the sample independent? Is it a simple random sample? Of what population? (Explain your answers reasonably.)
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Q: True or False? An important objective of statistics is to draw conclusions about the population from information obtained from a sample.
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Q: Define the following term and give an example of its use: Target Population.
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Q: All possible samples of size 10 were taken from a particular population. The mean of all the sample means was found to be 12.7 and the variance of the sample means was 0.32. a. What are the mean and variance of the population? b. What would the mean and variance of sample means have been if the samples had been of size 100?
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Q: Of a sample of 63 deaths of people aged 12 to 21 in a large metro- politan area, 52 or 83% were caused by accidents. The stated con- clusion is that "teenagers" are accident prone in the sense that they are more likely to die of accidents than older people or in- fants. Do you agree or disagree with the stated conclusion? Support your answer.
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Q: Around 1970 a research organization sent questionnaires to all of the 15,000 or so high school systems in the United States. These questionnaires asked about computer useage in the school system. As many as 3,600 schools systems returned answers. Of these 3,600, 27% indicated that some of their students used computers. In a recent speech, an authority on the use of computers in high school education cited this study as evidence that "students in 27% of the high school systems in the United States use computers during their high school careers." Do you regard 27% as a trustworthy estimate of the proportion of school systems providing computer access in 1970? Explain your answer.
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Q: Given: Population 1: 3, 4, 5 Population 2: 0, 3 Draw all possible samples of size 2 from population 1 with replacement, and all possible samples of size 3 from population 2 with replacement.
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Q: Suppose that you have been assigned to study the impact of a new appliance on the energy demands in a region. You find that there are very many brands of this appliance and that there are no obvious characteristics that suggest differences in energy requirements. Your resources will permit an experiment with adequate replication of six treatments. a. How will you select brands? b. What parameter(s) associated with treatments will you estimate?
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Q: Create a simple data set and explain how it would be used to verify whether a computer program or calculator computes a population standard deviation or an estimate of the population standard deviation.
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Q: A population consists of the numbers [2003, 1999, 2001, 1997, 2000, 2005, 1995]. The variance of the population is: 1) 11.6 2) the mean deviation 3) 10 4) 2010 5) none of the above
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Q: Consider the following data: -4, 3, 8, -2, 7, 7, 6, 11, 4, 10 The variance (SIGMA**2) for this population of data is: A. 10.3 D. 21.4 B. 16 E. none of these. C. 18.3
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Q: True or False? If False, correct it. If a random sample is sufficiently large its variance will be very close to SIGMA**2/n.
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Q: For random samples of size 100 from a normal distribution with mean 92 and standard deviation 25, the range of the middle fifty percent of sample means is approximately: (1) 80 to 100 (2) 88 to 96 (3) 90 to 94 (4) 91.7 to 92.3 (5) 90.3 to 93.7
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Q: What is the importance of randomization in experimental investigation?
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Q: What is a placebo? a. an experimental treatment b. a control treatment c. a parameter d. a statistic
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Q: True or False? A treatment effect is the increase or decrease in the size of the response over what would have been observed had the treatment not been applied.
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Q: True or False? Random assignment of experimental units to treatments is necessary for the application of most tests involving comparisons among a set of treatments.
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Q: Define the following term and give an example of its use. Your example should not be one given in class or in a handout. FACTOR
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Q: Give an example that could be described by the following phrase. Your example should not be one given in class or in a handout. ILLUSTRATION OF FACTORS HELD CONSTANT IN AN INVESTIGATION
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Q: Give an example that could be described by the following phrase. Your example should not be one given in class or in a handout. ILLUSTRATION OF FACTORS NOT HELD CONSTANT BUT REGARDED AS NEGLIGIBLE
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Q: Define the following term and give an example of its use. Your example should not be one given in class or in a handout. CONTROL OR CHECK TREATMENT
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Q: Define the following term and give an example of its use. Your example should not be one given in class or in a handout. CONTROLLED INVESTIGATION
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Q: What are the reasons for sampling?
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Q: The smallest unit used in the selection process in a sample survey design is known as the ____________________________ unit.
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Q: The smallest unit on which a measurement or record in a sample survey is obtained is known as ___________________________________ unit.
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Q: The method of choosing individuals from one or more populations is called the ____________________.
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Q: The major advantage of a probability sample compared with a non- probability sample is that a. it saves time c. it prevents destructive sampling b. it costs less d. sampling error can be estimated
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Q: In statistics we speak often of a random sample. What is a random sample, and why is randomization so important in statistics?
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Q: True or False? If False, correct it. Consider an experiment to test the effectiveness of the Salk Vaccine. If we intend to use probability theory to guide us in our judgement about the results, we should be doubtful about the accuracy of our conclusions since we have used randomization at some level in the experimental design.
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Q: True or False? If False, correct it. A random sample is a representative sample.
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Q: True or false? If false, explain why. Generally, in most applied situations sampling with replacement is used.
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Q: True or False? Explain your answer. Randomness is less important in a large sample than in a small sample.
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Q: A simple random sample is one where a) you decide on a sample size and sample proportionately from the population. b) you choose each item with no regard to previous choices. c) each item in the population has an equal chance of being chosen. d) all of the above are true. e) none of the above are true.
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Q: Which of the following is a necessary condition for a sample to be random? a. Every person in the population has the same likelihood of being included in the sample. b. The choice of the method of selecting individuals from the popu- lation is governed entirely by chance. c. Proportions of various grooups selected are equal to correspond- ing proportions in the population. d. The characteristics of the sample are the same as the characteris- tics of the population. e. None of the above is necessary.
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Q: A (simple) random sample is defined by a. the method of selection. b. outcome of selection. c. both of the above. d. its degree of resemblance to the population.
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Q: Which of the following is NOT true of simple random sampling? a. Whether or not a sample is random cannot be told from inspection of the sample. b. Characteristics of a random sample may differ widely from characteristics of its population. c. A sample must be reasonably large to be considered a random sample. d. Every element in the population must be given an equal chance for inclusion in the sample.
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Q: Samuel Student wanted a random sample of 50 students. He decided to choose the first fifty students entering one of the dining halls at a randomly selected time during the dinner hour. a. Is his sample random? Why or why not? b. Is his sample representative? Why or why not?
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Q: Suppose that you have been assigned to estimate the height of a group of corn plants arranged in 4 rows with 50 plants in each row. You may take measurements of 10 plants. a. Outline a method for obtaining a random sample in such a situation. b. What advantages or disadvantages are in such a procedure?
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Q: Street Street | | | | | | | | | | +---+ +---+ +---+ +---+ +---+ +---+ | | | | | 1 | | 2 | | 3 | | 4 | | 5 | | 6 | | | | | +---+ +---+ +---+ +---+ +---+ +---+ | | ----+ +------------------------------------------------------+ +---- Street ---------------------------------------------------------------------- You have been instructed to obtain interviews from 2 randomly selected households in the above set of 6 houses. Each house contains one household. a) Which houses would you visit to obtain the interviews? Indicate how you would choose these houses. b) Suppose that you plan to visit this neighborhood between 1:00 pm and 4:00 pm on a particular day. How will you provide for the possi- bility that no one will be available to interview in one or both of the houses that you have chosen? c) Would you expect any differences among these 6 units on the basis of the above sketch?
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Q: True or False? If False, correct it. If you are to take a random sample of n = 10 people from a certain area, you must be careful to replace individuals chosen before drawing another.
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Q: Your statistics class a. is a representative sample of your college student body b. is not a representative sample of your college student body c. is not a sample of your college student body d. none of the above
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Q: A list or a description of every sampling unit in the universe is known as the _______________________________.
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Q: Sampling error occurs because a. most interviewers are not accurate in their reports b. a sample is used instead of a population c. the statistician uses judgement in choosing the sample d. all of the above
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Q: Sampling error, which can be attributed to the fact that only a sample of values is observed, is a. the expected value of a sample statistic. b. the difference between a population value and an estimate of that value. c. the variance of a random sample. d. the standard error of the mean of random samples.
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Q: For a daytime house-to-house survey to study women's attitudes about their role in society, which one of the following errors would be most likely to occur: a.) reporting and processing errors b.) interviewer contamination c.) non-response d.) false information by the respondents
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Q: In the 1936 Presidential Election Franklin D. Roosevelt defeated Alfred E. Landon in a landslide vote. A Landon victory had been predicted by the Literary Digest, a magazine which ran the oldest, largest, and most widely publicized of the polls at the time. The Digest's final predic- tion was based on ten million sample ballots mailed to prospective vo- ters and 2.3 million were returned. The sample of voters was drawn from lists of automobile and telephone owners. Despite the massive size of this sample, it failed to predict a Roosevelt victory, being off the mark by 19 percentage points. Explain why the Digest was so wrong.
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A: e. parameter. The parameter can be the mean of a population or the standard devi- ation of a population. Both mean and standard deviation are charac- teristics of a population distribution.
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A: i) c) an event of interest (T = 3) is one event in a sample space. T is a random variable. ii) What is the average number of times people in this sample go grocery shopping per week? iii) What is the average number of times per week people who shop at Publix Supermarket go grocery shopping?
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A: b. independent variable
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A: b. parameters; statistics
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A: d. a complete set of individuals, objects, or measurements having some common observable characteristics
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A: i. b. a sample. ii. c. a parameter.
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A: False.
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A: True.
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A: True
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A: Definition: The name of a condition, characteristic, quality or property suspected of being able to affect a response. Example: If we write a list of factors suspected of affecting the productivity of say, tomato plants, we can compile quite a long list including such things as amount of sunlight, moisture supply, supply of various nutrient (Nitrogen, Phosphorus, Potassium, etc.), variety, night temperature, etc.
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A: c) a dependent variable. (IQ is the response measure in the study.)
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A: b) a moderator variable. (Anxiety may moderate the effect of the drug on children's IQ.)
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A: a) a primary independent variable. (The drug is being manipulated to exert an effect on IQ.)
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A: c. a dependent variable The achievement test serves as a dependent variable because achievement is the response measure.
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A: c. Grade point average All other alternatives are levels or values of variables.
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A: c. A group which reads the programmed material but does not receive reinforcement. Control group is identical to experimental groups except that reinforcement, the independent variable, is withheld.
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A: b. the experiences afforded the experimental group except for the treatment under examination.
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A: e. an experimental study This is an experimental study because an independent variable was manipulated.
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A: a. ballet training
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A: b. shorter than When the data set is the same, the length of the confidence interval depends on the Z or t value used. This value is smaller for 95% confidence than for 99% confidence, so it will result in a smaller interval.
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A: False, the confidence interval is used to acknowledge the element of chance in estimation.
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A: True, other things being equal, the confidence interval will decrease as sample size increases.
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A: a) Become narrower.
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A: a. large n and a confidence coefficient of .95.
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A: False. For a given situation, the longer your confidence interval is, the higher your confidence in it is.
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A: True
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A: False, the level of confidence (1 - ALPHA) is not influenced by sample size. However, the interval estimate will be made more precise (narrower) by the larger sample size for the same level of confidence.
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A: False - The larger the sample size the narrower the confidence interval.
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A: Population: Red books in the library. Sample: Simple random, because every one of the distinct samples has an equal chance of being drawn, where M = sample size, N = number of red books. Every sample of size M is independent of any other sample of size M.
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A: True
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A: Target Population is the totality of elementary units relevant to a given study. The working population (frame) and the gap constitute the target population Example: In a study to find out average daily consumption of beer per person in a given restaurant, the target population will be all the people vis- iting the restaurant on the day of the survey.
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A: a. MU = MU(XBAR) = 12.7 SIGMA(XBAR)**2 = (SIGMA**2)/n SIGMA**2 = 10 * .32 = 3.2 b. n = 10 MU(XBAR) = 12.7 SIGMA(XBAR)**2 = .32 If n = 100: MU(XBAR) = 12.7 SIGMA(XBAR)**2 = 10 * .32/100 = .032
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A: Teenagers may, in fact, be accident prone, but the data don't support this conclusion. If a teenager dies he is likely to die of an acci- dent, because he is less susceptible to disease and "natural" causes to which older people and infants are more susceptible. The sample is not of sufficient size to conclude that teenagers as a group are accident prone. The sample may be biased because it is a large metropolitan area, thus excluding suburban and rural teen- agers. It may be that there are more accidents in a metropolitan area to everyone, not just teenagers, simply because it is a metro- politan area. The 83% figure seems high, but no corresponding accident rates are given for infants and older people.
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A: No. Only about one-quarter of the high school systems responded to the questionnaire. Since having a computer then was probably regarded as a good thing, I would expect that schools having computers would be more likely to respond to the questionnaire than those that didn't. I don't think that a check on non-respondents would reveal a percentage mean of 27% that used a computer. (If the overall percentage is 27% and that is the percentage among the respondents, then it must also be the percentage using computers among the three- quarters that didn't respond. The above reasoning indicates this is not the case.)
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A: All possible samples of size 2 from population 1 with replacement: (3, 3) (3, 4) (3, 5) (4, 3) (4, 4) (4, 5) (5, 3) (5, 4) (5, 5) All possible samples of size 3 from population 2 with replacement: (0, 0, 0) (0, 0, 3) (0, 3, 0) (0, 3, 3) (3, 0, 0) (3, 0, 3) (3, 3, 0) (3, 3, 3)
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A: a. Randomly select six brands from those available. b. Since treatments have been randomly selected, the treatment effects calculated in this trial can be used to estimate the variance component due to brands. This variance indicates the spread of a population of brand effects having a mean of zero.
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A: Data set: 1, 1, 3, 5, 5 MU = 3 SIGMA = SQRT (((1-3)**2 + (1-3)**2 + (3-3)**2 + (5=3)**2 + (5-3)**2)/5) = SQRT ((4+4+0+4+4)/5) = SQRT (16/5) = SQRT (3.2) = 1.79 S = SQRT(16/4) = 2 Using the above data set, if the standard deviation is given as two, then it has been calculated as an estimate of the population standard deviation, if it is given as 1.79, then it has been calculated as a population standard deviation, and if neither of these two values result, something is going wrong.
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A: (3) 10 Coding (X - 2000): 3, -1, 1, -3, 0, 5, -5 Mean = 0 X**2 = 9, 1, 1, 9, 0, 25, 25 SIGMA**2 = (SUM(X**2))/n = 70/7 = 10
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A: D. 21.4
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A: False. If a random sample is sufficiently large its variance will be very close to SIGMA**2.
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A: (5) 90.3 to 93.7 XBAR +/- Z*SIGMA/SQRT(n) 92 +/- .675*(25/10) 92 +/- 1.69 (90.3, 93.7)
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A: Randomization makes the assumption of independent errors appropriate, and helps to eliminate systematic bias.
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A: b. a control treatment
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A: True
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A: True
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A: Definition: A condition or state that is thought to influence response. Example: Suppose that the response measured is miles per gallon for a car. Factors that may influence that response include: brand and model of car, driving speed, type of transmission, driving conditions (city vs. open highway), driver, etc. Any condition that can vary and has some potential of affecting miles per gallon when it varies may be regarded as a factor with respect to that response.
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A: Example: Suppose we were investigating the relationship between kind of pot used for boiling water and time required to bring one quart of water to a boil. Factors held con- stant for each experimental unit might include size of pot, initial temperature of water and pot, amount of water, source of heat and rate of delivery, person making a judgement about when boiling begins, atmospheric pres- sure, and device used to measure elapsed time. These factors would be held constant or nearly constant so that differences in time needed to bring water to a boil would in fact reflect differences among pots rather than dif- ferences in other factors.
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A: Example: Suppose we were investigating the relationship between kind of pot used for boiling water and time required to bring one quart of water to a boil. If one person con- ducts the trial, each occasion of starting with cold water and ending with boiling water will occur at a different time and the observer will almost certainly vary in attentiveness or fatigue. Usually this varia- tion in the person conducting the trial would be regarded as negligible.
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A: Definition: A condition or state that is included in a treatment set because it is regarded as standard or a reasonable reference state. Often a control or check treatment corresponds to what is regarded as current practice. Example: Suppose that a chemical company wishes to test 5 compounds that are thought to provide protection against diseases that interfere with seed germination or early seedling development. In such a case at least two dif- ferent kinds of check or control treatments might be considered for inclusion in the treatment set. One check might be a treatment in which seed was not treated with any chemical so that comparisons could be made be- tween untreated seed and seed treated with one of the 5 test chemicals. Another check might be a treatment in which seed was treated with a compound currently in wide- spread use. In either case, the reason for using the check treatments is to provide for comparison of the test compounds with what are regarded as common practice (or common practices) where the test compounds and the check treatments are subjected to the same experimental condi- tions. (There are few groans louder than those that come from someone who momentarily believes that a test material has completely prevented disease only to find that the un- treated check or standard also is disease free.)
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A: Definition: An inquiry in which it is possible to assign treatments to test units and to arrange matters so that mean differences in response to treatment provide an indication of the in- fluence of treatments only. Example: Suppose that the treatments to be assessed were 4 asking prices for a type of house, that the response was time to sell, and that we could control the assignment of asking prices to a large number of houses. Then we should be able to conduct a controlled investigation that will allow us to estimate differences in selling time due to asking price in a manner where other complicating factors are constant or balanced out. This would be in contrast to the usual situation where asking price and time to sell can be ob- served only in circumstances where other complicating factors are not balanced out but often are closely linked to asking price. (Then it's often not possible to say whether a difference in selling time is due to price, location, style, salesman, etc.).
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A: Sampling is used when: 1. it will yield more accurate results than a census 2. the population is infinite 3. there is a limited amount of time available 4. the nature of the test is destructive 5. the cost of gathering the data is a factor.
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A: The smallest unit used in the selection process in a sample survey design is known as the sampling unit.
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A: The smallest unit on which a measurement or record in a sample survey is obtained is known as the observational or experimental unit.
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A: The method of choosing individuals from one or more populations is called the sampling procedure.
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A: d. sampling error can be estimated
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A: A random sample occurs when every observation in the population has a known (usually equal) chance of becoming part of the sample. Randomization is important because the probability associated with the statistics computed from the sample are measurable, thus enabling one to make valid inferences about the population from which the sample was drawn.
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A: False, you would be doubtful only if you had "not used randomization".
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A: False - A random sample does not guarantee a representative sample.
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A: False, in most applied situations the population is large enough that sampling is performed without replacement.
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A: False. No matter what the size of the sample, in order for the theory of probability to apply it is necessary that a probability sampling technique be used.
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A: c) each item in the population has an equal chance of being chosen.
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A: a. Every person in the population has the same likelihood of being included in the sample.
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A: a. the method of selection.
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A: c. A sample must be reasonably large to be considered a random sample.
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A: a. His sample is not random. Those who eat elsewhere, i.e. those who live off campus, have no chance of being selected. Thus, not every student has the same chance of being selected as every other and this makes the sample non-random. b. There is no way of knowing whether the sample accurately represents or mirrors the population of students. For some purposes it may, for others, maybe not.
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A: a. Assign numbers to plants (1 - 200). Draw a random sample of size 10 using a random numbers table. Simplest procedure is to use sampling with replacement. b. Advantage is that common formulas for mean and variance apply, but it's a nuisance to have to number plants and use random selection.
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A: a) I would roll a die or use a random numbers table or some other means of selecting 2 numbers between 1 and 6 so that each possible pair of values were equally likely. b) Ordinarily the possibility of no one being present in the selected units should be covered by allowing time for repeat visits at other times of day. If a procedure is adopted that allows substitution of other houses because the selected houses were empty between 1:00 pm and 4:00 pm, the frame sampled is apt to be quite different - a frame consisting of households in which at least one member remains at home between 1 and 4. Among others this would exclude households in which all members worked. c) Sometimes income levels are higher for households living in corner houses. If that were the case and samples were drawn over many sets of households like the above, it would be especially important to use random selection so that the complete collection of samples included a proper representation of corner households.
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A: False, depending upon the situation, a random sample can be taken with or without replacement.
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A: b. is not a representative sample of your college student body
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A: A list or a description of every sampling unit in the universe is known as the sampling frame.
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A: b. a sample is used instead of a population
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A: b. the difference between a population value and an estimate of that value.
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A: c.) non-response, because responses would be collected during the daytime, women who work outside their homes during the daytime would not be represented in the sample.
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A: The problem developed because the Digest relied on voluntary response and such samples are practically always biased. The respondents repre- sented a subset of the population owning cars and telephones. In 1936 this was a limited group and represented a biased sample. In addition those returning ballots represent a group with special interest and so would be more biased. This was in no way a random or representative sample.
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