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Steps In Running A Survey



Hide details for Step 1: Planning a surveyStep 1: Planning a survey

a) Identifying your question
One of the first things you need to clarify when designing a survey is exactly what you want to find out. Start by writing your question as clearly as you can. Include as much detail as possible so that everyone else will interpret the question in the same way as you.

For example, if you wanted to find out "What times do students get up in the morning?" you would need to clarify:

  • Is it a normal school day, a weekend or a holiday e.g. “What time do students get up on a normal school day?”
  • Will it matter if students have different school starting times? Compare the question “How long before school starts do students get up?”
  • What units do you want to use to collect the data? “How many minutes before school starts do students get up?”
  • How will part units be reported? Do you want data to the closest whole number? If you plan to have fractions can these be decimals?

State your definitions
You will also need to state some definitions:
  • ‘student’ is defined as Year 7 and Year 11 Australian school students
  • ‘getting up time’ is the time students get out of bed on a school day.

It is important that you maintain these definitions throughout your investigation and in any report. If your question is not clearly defined, the participants in your survey may interpret the question differently and your results won't be accurate.

b) Deciding who to include in your sample

Participant characteristics
Next you need to specify the scope of your sample. For example, are you looking at a particular age group or year level or location? In these cases. your question might be “How many minutes before school starts do Year 7 students get up compared with Year 11 students?” or "How many minutes before school starts do students in Queensland get up compared with students in South Australia?".

Sample size
Estimates are made about the total population and subgroups based on the information from the sample. Generally, larger samples will give a more accurate representation of the population. However, it can be difficult to obtain accurate information on smaller groups within the population if the sample size is small.
In addition, the level of accuracy can usually be measured. There are formulae to determine the size of the sample that should be taken depending on the level of confidence required. One of the simplest is:
Sample size = √n
(where n is the size of the population)

Randomness
To allow predictions to be confidently made about the total population, samples need to be randomly selected as well as of sufficient size. For data to be selected randomly, each data item must have the same chance of being selected as any other. Pulling data items from a hat or using the random number generator on a calculator are common ways of ensuring that data are selected randomly. Data not selected randomly may be biased towards a particular outcome.

Types of Sampling
There are a number of ways that a sample can be randomly drawn from a population. For example, you may want to ensure that each subgroup of a population is represented in the same proportion as in the general population.
For more information on types of sampling see our Glossary page.



























































Hide details for Step 2: Collecting dataStep 2: Collecting data

Once you have decided on your question, how many people will be in your sample, and randomly selected them, you will need to consider how to collect the data. Will it be through an interview or will you collect written responses? The data you collect will also need to be in a form that is easily organised in order to analyse it. For example, you need consistency in units and fractional answers so request that the data be recorded to the nearest centimetre or half centimetre.

Interview
In an interview, a participant can ask questions if they haven’t understood something.

Written response
Written responses can be completed by many participants at the same time and are quicker than interviews.

Variables
A variable is any measurable characteristic or attribute that can have different values for different subjects – for example, eye colour, distance from school etc.
Characteristic is another way of saying variable. For example, height, age or country of birth are all characteristics or variables of people.




Show details for Step 3: Organising dataStep 3: Organising data
Hide details for Step 4: Displaying informationStep 4: Displaying information

How will you present your findings? Will you use tables, graphs or both? What sort of table or graph is most appropriate?
One of the most powerful ways to communicate data is by using graphs. Data presented in a graph can be quick and easy to understand.

A graph should:

  • be simple and not too cluttered
  • show data without changing the data’s meaning
  • show any trend or differences in the data
  • be accurate in a visual sense – for example, if one value is 15 and another 30, then 30 should be twice the size of 15
Ambiguity can be reduced by
  • avoiding 3D representations
  • avoiding broken or uneven scales
It is important that you give each graph a heading. Axes must be labelled and any scale must have equal intervals. A key should be included where it is needed to interpret the data.
Different graphs are useful for different types of information and it is important that the right graph for the type of data is selected. See What graph or display to use when for more information.
Consider the type of data you have collected when choosing a display or graph.
Type of dataAppropriate display or graph
CategoricalBar graph, pie chart, dot plot
Numerical (discrete)Bar graph, histogram, line graph, box and whisker plot, stem and leaf plot, age pyramid
Numerical (continuous)Histogram, line graph, box and whisker plot, stem and leaf plot

Bar graphs – Figure 3
A bar graph is used to represent categorical or discrete numerical data. A bar graph has a gap between each bar or set of bars and the widths of the gaps and bars are consistent. The length of the bars in a bar graph is also important: the greater the length, the greater the value. A bar graph can be either horizontal or vertical – vertical bar graphs are also known as column graphs.

Horizontal bar graphs – Figure 4
The advantage of using a horizontal bar graph over a column graph is that the category labels in a horizontal bar graph can be fully displayed making the graph easier to read.

Side by side bar or column graphs – Figure 5
Side by side bar graphs are useful to compare two or more groups for the same data.

Stacked bar or column graphs – Figure 6
Stacked or segmented bar graphs are sometimes used to display a breakdown of data for a particular group – for example, the breakdown of types of internet use by sex. They are most useful when the data is shown as a percentage value and the number of categories is very small. If there are too many categories, the frequency of the datasets can be difficult to read and compare.

Histograms – Figure 7
A histogram is similar to a column graph, however, there are no gaps between columns. Histograms are used for numerical data only. Data can be either discrete or continuous and grouped or ungrouped. A histogram should have equal width columns when possible.

Line Graphs
Line graphs are used for numerical data. They show how one variable changes in relation to another. The independent variable is always displayed on the horizontal axis. It is important to use a consistent scale on each axis so you can get an accurate sense of the data.

Time Series – Figure 8
Time series graphs are line graphs that display a trend or a pattern in data over time. The slope can be upward or negative. Patterns can be seasonal (over a short period), or cyclic (over a longer period). Alternately, a time series can show a random variation.
To use a times series to make predictions, you can smooth fluctuations by using a suitable smoothing process such as deseasonalising the data.

Pie Charts – Figure 9
Pie charts, often called pie graphs, sector graphs or sector charts, show how much each sector contributes to the total. Pie charts are useful when there are only a few categories as more than five categories can make them difficult to read.
It is very important to label each sector with its value to make comparison easier.

Dot Charts – Figure 10
A dot chart can convey a lot of information in a simple, uncluttered way. Each dot can represent one or many.

Box and Whisker Plots – Figure 11
Box and whisker plots display 5 figure summary statistics: minimum, quartile 1, median, quartile 3 and maximum for a set of numerical data.
Box and whisker plots are useful for looking at the shape of a data set. In particular, parallel box and whisker plots are used to compare two data sets and are drawn on the same number line. To help identify possible outliers, 'fences' can be drawn at 1.5 x, the IQR above Q3 and below Q1. For more information, see summarising Data, Measures of Spread.

Stem and Leaf Plots – Figure 12
Stem and leaf plots are an efficient way of recording numerical data because numbers in the stem apply to all values in the leaves. They are also very useful to show the shape of a distribution and, since they order data, can be used to identify median and quartiles.
Back to back stem and leaf plots are used to compare the distribution of two data sets.

Age Pyramids – Figure 13
Age pyramids are used to represent a population age structure. Age pyramids are a very effective way of showing change in a country’s age structure over time or for comparing different countries. Estimates and projections of Australia's population from 1971 to 2050 are available on the ABS Animated Age Pyramid page.


Figure 3: Bar graph showing importance of conserving water.
Input from 0 (Not Important) to 999 (Very Important)
Source: 2010 C@S National summary table 28.


Figure 4: A horizontal bar graph


Figure 5: A side by side column graph


Figure 6: A stacked bar graph


Figure 7: A histogram showing data with grouped intervals


Figure 8: A time series graph


Figure 9: A pie chart


Figure 10: A dot plot with many to one correspondence


Figure 11: Parallel box and whisker plots


Figure 12: A back to back stem and leaf plot of arm span


Figure 13: An age pyramid (Source: Australian Bureau of Statistics Education Services)



Show details for Step 5: Analysing the dataStep 5: Analysing the data
Hide details for Step 6: Drawing conclusionsStep 6: Drawing conclusions

Communicating the results of your investigation is a critical part of the survey process. Ensuring the accuracy of any interpretations and avoiding misinterpretations are crucial. Keeping in mind the purpose of the investigation and your audience will help to keep your conclusions on track and avoid including unnecessary information.

Accuracy of Data
All your calculations need to be accurate, verifiable from the data and clearly communicated using simple language.

Misinterpretation
To effectively communicate your results, you will need to be aware of avoiding any misinterpretation of the data such as using the mean when the median is more appropriate or not taking seasonal variation into account.

Stating your conclusions
With statistics, there is always a risk that the results you have do not tell the whole story. You can use the following checklist to help judge the reliability of your statistical information.

  • Do your conclusions communicate the message told by the data?
  • Are your conclusions based on results rather than on your opinions?
  • Have you considered alternative explanations for the same results?
  • Is your report set out logically including using an organisational framework such as headings and sub headings?
  • Have you included the source of any information you have used or referred to?
  • Have you included relevant tables and graphs?
  • Are your findings clear, related to your aim and only contain necessary information?

Audience
  • Have you considered your audience and used appropriate language?
  • Have you anticipated questions your reader might have? For example, have you explained unusual or unexpected results? Have you justified your choice of analysis, indicated your sampling process etc?
  • Can your reader check your conclusions by viewing your analysis?

Sampling Error
Finally, if you intend for your results to be applicable in other contexts, it is important to understand the limits that might apply.
The difference between an estimate based on a sample survey and the true value that would result if a census of the whole population was taken is called the sampling error. Sampling error can be measured mathematically and is influenced by the size of the sample. In general, the larger the sample size the smaller the sampling error.
The way a sample is drawn is also important. In general, a random sample will result in data that is more able to be generalised to the population.



Commonwealth of Australia 2008

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