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22. Uses and Abuses of Statistics. Case Study. 22.1 Statistical Surveys. 22.2 Sampling Methods. 22.3 Statistical Investigations. Chapter Summary. The sales of this car are almost a double of Sonic’s! Isn’t it good?.
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22 Uses and Abuses of Statistics Case Study 22.1Statistical Surveys 22.2 Sampling Methods 22.3 Statistical Investigations Chapter Summary
The sales of this car are almost a double of Sonic’s! Isn’t it good? Let’s see the graph here. The sales of our car are much better than Sonic’s… Wait, it seems there’s something wrong with the graph… Case Study Mr. and Mrs. Chan want to buy a car. The salesman claims that the number of Alpha cars sold is much higher than that of Sonic’s. As shown in the bar chart, the height of the bar representing the sales of Alpha is almost a double of Sonic’s. However, the vertical axis does not start from zero. The figure gives a wrong impression that there is a big difference between the sales of the two brands.
22.1 Statistical Surveys People conduct different kinds of surveys to collect useful data for statistical investigations. An effective survey can help people gather information for policy formulation on public issues, business decision-making purposes and social studies. The following shows the major steps of conducting surveys and the major points that must be considered in each step. Step 1: Planning the Survey 1. When planning the survey, first we must clearly specify the objectives of the survey. 2. Next, we should define the ‘population’ of the survey clearly. The population is the target of the survey. 3. Then, we should set the budget for conducting the survey. It is important to have sufficient resources such as time, money and manpower to carry out the survey.
22.1 Statistical Surveys Step 2: Choosing an Appropriate Data-collection Method After planning the survey, we have to choose an appropriate data-collection method, such as 1. interviews; 2. questionnaires; 3. observation; 4. direct testing or experiment; 5. collection of data from existing statistical reports. The most common way to collect data is using questionnaires. The following are some general principles for designing a questionnaire: (a) The questions must be relevant to the objectives of the survey. (b) Long questionnaires are undesirable. (c) The questions must be clear and easy to answer. (d) Questions that lead respondents’ opinions towards certain answers must be avoided.
22.1 Statistical Surveys (e) The data collected must be easy to interpret. (f) Questions should be arranged in a proper order. (g) The language used should be appropriate. (h) Questions should be appropriate, specific and precise. (i) Embarrassing questions should be avoided. (j) Composite and double negative questions should be avoided. (k) Questions which rely on respondents’ memory should be avoided. (l) Options such as ‘Don’t know / No opinion / Others’ should be included as appropriate. All of them affect the reliability and validity of the questionnaire. Reliability is concerned with the stability and consistency of the data collected. Validity is concerned with the relevance of the data collected to the objective of the survey.
22.1 Statistical Surveys Step 3: Selecting the Sample Since it is often very time-consuming to collect information from all the members of a population, most surveys are conducted on samples of the whole population. After designing the questionnaires, we have to decide a suitable sampling method to select samples. Step 4: Collecting the Raw Data After designing the questionnaires and selecting the samples, we can move on to collecting the data. By using the questionnaires, we can collect information in the following ways: 1. Personal interviews 2. Telephone interviews 3. Self-administered questionnaires by mail/email
22.1 Statistical Surveys Step 5: Analysing the Data and Interpreting the Findings All raw data collected have to be checked carefully before being compiled with suitable statistical techniques. Also, the data should be organized first before analysis. Step 6: Presenting the Investigation After compiling the statistical data, the survey results will be sent to the relevant parties or organization. If the subject of the survey is of public interest, the results may be published.
22.2Sampling Methods In many real-life cases, the population is very large or inaccessible. Collecting data from the whole population would be very expensive and time consuming. Therefore, we can hardly carry out a statistical survey on the whole population. So in these cases, we will use a sampling method to choose some samples from the population at RANDOM, and use the results obtained from these samples to estimate the results for the whole population. There are two main types of sampling methods, probability sampling and non-probability sampling.
22.2Sampling Methods A. Probability Sampling There are three important methods of probability sampling: simple random sampling, systematic sampling and stratified random sampling. (a) Simple Random Sampling Simple random sampling is a method of selecting a sample such that each item in the population has an equal probability of being chosen. In order to use the method of simple random sampling, we should first list all the items in the population and assign a unique identification number to each of them, and then group all the numbers in a table. This number list is called the sampling frame of the population.
22.2Sampling Methods A. Probability Sampling Example 22.1T Helen is a committee member of a youth centre. She wants to select 100 members at random and investigate their family status. Suggest how she can form the sampling frame using simple random sampling. Solution: She can form the sampling frame by using the membernumbers.
22.2Sampling Methods A. Probability Sampling (b) Systematic Sampling Systematic sampling is a method by which we first select a starting point at random, then select every kth (such as 10th or 50th) item in the population. Compared with simple random sampling, systematic sampling is much more efficient because we do not need to know the size of the population. However, when the items share some regular pattern, systematic sampling may lead to a biased sampling result.
22.2Sampling Methods A. Probability Sampling Example 22.2T An insurance company has 10 000 policyholders. The company wants to conduct a survey on their clients’ spending habits. The marketing department selects 500 clients by systematic sampling and sends questionnaires to them. (a)How can the company form a sampling frame? (b)Will a client be selected more than once? Solution: (a) They can use the policy numbers to form asampling frame. (b) Yes, some clients may have more than one policy.
22.2Sampling Methods A. Probability Sampling (c) Stratified Random Sampling Stratified random sampling is a sampling method that divides the population into at least two subgroups (called strata) that share the same characteristics (such as gender, age), and then select samples from each stratum. Random samples are selected from each stratum and the sizes of the samples in each stratum are proportional to the stratum size. Notes: The stratified random sampling method may reflect the characteristics of a population more accurately than the other two sampling methods. However, as detailed information about individual items in the population are needed, this method may be time consuming and expensive.
22.2Sampling Methods A. Probability Sampling Example 22.3T The students’ union of a university conducts a survey on the annual travel expenses of students in the university. They select 100 students for an interview by stratified random sampling. The following shows the number of students in each year. How many students should be selected from year 4? Solution: Total number of students 400 + 500 + 500 + 600 2000 Number of students selected from year 4
Judgment sampling is also called purposive sampling because the sample is chosen with a purpose. 22.2Sampling Methods B. Non-probability Sampling There are several types of non-probability sampling methods: convenience sampling, voluntary response sampling, judgment sampling, quota sampling and snowball sampling. (a) Convenience Sampling Convenience sampling is also called haphazard or accidental sampling. The sample is chosen at the convenience of the researcher. (b) Voluntary Response Sampling In this method, respondents themselves choose to take part in the survey. Write-in and call-in opinion polls use this kind of sampling method. (c) Judgment sampling When using this method, the sample is chosen based on the judgment or experience of the researcher. The researcher tries to obtain a sample that appears to be representative of the population.
Because sample members are not selected from a sampling frame, snowball samples are subject to numerous biases. 22.2Sampling Methods B. Non-probability Sampling (d) Quota Sampling In quota sampling, interviewers have been given quotas to fill from specified sub-groups of the population and the interviewers select the sample. This is similar to stratified sampling, but in quota sampling, the choice of the sample is non-random. (e) Snowball Sampling This sampling technique is often used in hidden populations which are difficult for researchers to access. To start with, the researcher compiles a short list of sample members from various sources. Each of these respondents is contacted to provide the names of other probable respondents.
22.2Sampling Methods C. Comparing Probability and Non-probability Sampling The following table gives the differences between probability and non-probability sampling.
22.3Statistical Investigations A. Uses of Statistics In recent years, statistics is widely used in different aspects. People get much benefit from the use of statistical methods. Everyday, there are many statistical reports presented in the media such as newspapers, journals, magazines, television and the internet. Such reports are often presented in the form of different statistical graphs according to the nature of the data. The following are four types of commonly used graphs: 1. Pie chart 2. Histogram / Bar chart 3. Broken line graph 4. Stem-and-leaf diagram
22.3Statistical Investigations B. Abuses of Statistics Statistical data are often presented in ways that favour the producers but not the users. The common ways used to mislead users are: 1. Using the average to mislead readers2. Misinterpreted percentages3. Misrepresentation of data by graphs
22.3Statistical Investigations B. Abuses of Statistics Example 22.4T A group of students wanted to know the average amount of pocket money per month of the students in their school. They interviewed 40 S6 students, and 30 of them have pocket money over $1000 each month. They claimed that 75% of the students have pocket money over $1000 each month. Do you think it is misleading? Give a reason. Solution: Yes, it is misleading since S6 students may have more pocket money than S1 students in general.
22.3Statistical Investigations B. Abuses of Statistics Example 22.5T The figure shows the sales of two brands of orange juice. (a) Find the ratio of the sales. (b) Does the advertisement over-emphasize the sales of Miss Orange? Solution: (a) Sales of ‘Sun’ : Sales of ‘Miss Orange’ (b) Area of figure for Sun : Area of figure for Miss Orange 3 : 12 1 : 4 Yes, the advertisement over-emphasizes the sales of Miss Orange.
22.3Statistical Investigations C. Assessing the Statistical Investigations There are some criteria for assessing statistical investigations presented in different sources. A good statistical investigation should consider the following: 1. Sponsorship of the survey The sponsor of a survey might affect the response rate. Generally the response rate of a survey would be higher if it is sponsored by a university. 2. Population covered The researcher is responsible to define the target population clearly. The population is defined in keeping with the objectives of the study. 3. Sampling methodAs the population is too large, a sample is always used to represent the population. The sample chosen should reflect the characteristics of the population from which it is drawn.
22.3Statistical Investigations C. Assessing the Statistical Investigations 4. Mode of data collection There are different ways to get data and all these methods have their advantages and disadvantages which may affect the results of the survey. 5. Time period of data collectionThe time period of data collection also affects the reliability of the survey. 6. Wording of questions The wording of a question is very important. Words like ‘usually’, ‘often’, ‘sometimes’, ‘occasionally’, ‘seldom’ and ‘rarely’ are commonly used in questionnaires. But they do not have the same meaning to everyone. 7. Sample size and response rateResponse rate indicates how much confidence can be placed in the results of a survey. A low response rate will ruin the reliability of a study.
Chapter Summary 22.1 Statistical Surveys Data-collection methods: (a) Interviews (b) Questionnaires (c) Observation (d) Experiment (e) Existing statistical reports • The steps in conducting a survey are: • Planning the survey • Choosing an appropriate data-collection method • Selecting the sample • Collecting the raw data • Analysing the data and interpreting the findings • Presenting the investigation
Chapter Summary 22.2 Sampling Methods 1. A population in statistics refers to the entire set of individuals under study. A sample refers to a carefully chosen and representative part of the population. 2. Probability Sampling (a) Simple random sampling is a method of selecting a sample such that each item in the population has an equal chance of being chosen. (b) Systematic sampling is a method that selects a startingpoint randomly, then selects every kth item in the population. (c) Stratified random sampling is a method that divides the population into strata, each of which is composed of data sharing the same characteristics, and then samples are selected from each stratum.
Chapter Summary 22.2 Sampling Methods 3. Non-probability Sampling (a) Convenience sampling is a method of selecting a sample at the convenience of the researcher. (b) Voluntary response sampling is a method in which the respondents themselves choose to take part in the survey. (c) Judgment sampling is a method to choose a sample based on the judgment or experience of the researcher. (d) Quota sampling is a method in which interviewers have been given quotas to fill from specific sub-groups of the population and the interviewers select the sample. (e) Snowball sampling is a method to select a sample by first contacting a few potential respondents, and then relying on the referrals from the initial respondents to generate additional subjects.
Chapter Summary 22.3 Statistical Investigations 1. Uses of Statistics In the media, there are many statistical reports which are presented according to the nature of the data in different types of graphs, such as a (a) pie chart (b) broken line graph(c) histogram / bar chart (d) stem-and-leaf diagram 2. Abuses of Statistics Statistical data are often presented in ways that favour the producers but not the users. The common ways used to mislead users are:(a) Misuse of the ‘averages’(b) Misinterpreted percentages(c) Misrepresentation of data by graphs 3. Assessing the Statistical Investigations There are some criteria for assessing statistical investigations presented in different sources.