How to Interpret Standard Deviation and Standard Error in Survey Research | GreenBook (2024)

Standard Deviation and Standard Error are perhaps the two least understood statistics commonly shown in data tables. The following article is intended to explain their meaning and provide additional insight on how they are used in data analysis.

Standard Deviation and Standard Error are perhaps the two least understood statistics commonly shown in data tables. The following article is intended to explain their meaning and provide additional insight on how they are used in data analysis. Both statistics are typically shown with the mean of a variable, and in a sense, they both speak about the mean. They are often referred to as the "standard deviation of the mean" and the "standard error of the mean." However, they are not interchangeable and represent very different concepts.

Standard Deviation
Standard Deviation (often abbreviated as "Std Dev" or "SD") provides an indication of how far the individual responses to a question vary or "deviate" from the mean. SD tells the researcher how spread out the responses are -- are they concentrated around the mean, or scattered far & wide? Did all of your respondents rate your product in the middle of your scale, or did some love it and some hate it?

Let's say you've asked respondents to rate your product on a series of attributes on a 5-point scale. The mean for a group of ten respondents (labeled 'A' through 'J' below) for "good value for the money" was 3.2 with a SD of 0.4 and the mean for "product reliability" was 3.4 with a SD of 2.1. At first glance (looking at the means only) it would seem that reliability was rated higher than value. But the higher SD for reliability could indicate (as shown in the distribution below) that responses were very polarized, where most respondents had no reliability issues (rated the attribute a "5"), but a smaller, but important segment of respondents, had a reliability problem and rated the attribute "1". Looking at the mean alone tells only part of the story, yet all too often, this is what researchers focus on. The distribution of responses is important to consider and the SD provides a valuable descriptive measure of this.

Respondent:Good Value
for the Money:
Product
Reliability:
A31
B31
C31
D31
E45
F45
G35
H35
I35
J35
Mean3.23.4
Std Dev0.42.1

Two very different distributions of responses to a 5-point rating scale can yield the same mean. Consider the following example showing response values for two different ratings. In the first example (Rating "A") the Standard Deviation is zero because ALL responses were exactly the mean value. The individual responses did not deviate at all from the mean. In Rating "B", even though the group mean is the same (3.0) as the first distribution, the Standard Deviation is higher. The Standard Deviation of 1.15 shows that the individual responses, on average*, were a little over 1 point away from the mean.

Respondent:Rating "A"Rating "B"
A31
B32
C32
D33
E33
F33
G33
H34
I34
J35
Mean3.03.0
Std Dev0.001.15

Another way of looking at Standard Deviation is by plotting the distribution as a histogram of responses. A distribution with a low SD would display as a tall narrow shape, while a large SD would be indicated by a wider shape.

SD generally does not indicate "right or wrong" or "better or worse" -- a lower SD is not necessarily more desireable. It is used purely as a descriptive statistic. It describes the distribution in relation to the mean.

*Technical disclaimer: thinking of the Standard Deviation as an "average deviation" is an excellent way of conceptionally understanding its meaning. However, it is not actually calculated as an average (if it were, we would call it the "average deviation"). Instead, it is "standardized," a somewhat complex method of computing the value using the sum of the squares. For practical purposes, the computation is not important. Most tabulation programs, spreadsheets or other data management tools will calculate the SD for you. More important is to understand what the statistics convey.

Standard Error
The Standard Error ("Std Err" or "SE"), is an indication of the reliability of the mean. A small SE is an indication that the sample mean is a more accurate reflection of the actual population mean. A larger sample size will normally result in a smaller SE (while SD is not directly affected by sample size).

Most survey research involves drawing a sample from a population. We then make inferences about the population from the results obtained from that sample. If a second sample was drawn, the results probably won't exactly match the first sample. If the mean value for a rating attribute was 3.2 for one sample, it might be 3.4 for a second sample of the same size. If we were to draw an infinite number of samples (of equal size) from our population, we could display the observed means as a distribution. We could then calculate an average of all of our sample means. This mean would equal the true population mean. We can also calculate the Standard Deviation of the distribution of sample means. The Standard Deviation of this distribution of sample means is the Standard Error of each individual sample mean. Put another way, Standard Error is the Standard Deviation of the population mean.

Sample:Mean
1st3.2
2nd3.4
3rd3.3
4th3.2
5th3.1
..
..
..
Mean3.3
Std Dev0.13

Think about this. If the SD of this distribution helps us to understand how far a sample mean is from the true population mean, then we can use this to understand how accurate any individual sample mean is in relation to the true mean. That is the essence of the Standard Error. In actuality we have only drawn a single sample from our population, but we can use this result to provide an estimate of the reliability of our observed sample mean.

In fact, SE tells us that we can be 95% confident that our observed sample mean is plus or minus roughly 2 (actually 1.96) Standard Errors from the population mean.

The below table shows the distribution of responses from our first (and only) sample used for our research. The SE of 0.13, being relatively small, gives us an indication that our mean is relatively close to the true mean of our overall population. The margin of error (at 95% confidence) for our mean is (roughly) twice that value (+/- 0.26), telling us that the true mean is most likely between 2.94 and 3.46.

Respondent:Rating:
A3
B3
C3
D3
E4
F4
G3
H3
I3
J3
Mean3.2
Std Err0.13

Summary
Many researchers fail to understand the distinction between Standard Deviation and Standard Error, even though they are commonly included in data analysis. While the actual calculations for Standard Deviation and Standard Error look very similar, they represent two very different, but complementary, measures. SD tells us about the shape of our distribution, how close the individual data values are from the mean value. SE tells us how close our sample mean is to the true mean of the overall population. Together, they help to provide a more complete picture than the mean alone can tell us.

Presented by

DataStar, Inc.

  • Data & Analytics
  • Data Collection
  • Quantitative Research

We are the Survey Specialists! Contact us for top quality survey management, incl. web programming/hosting, mail, data entry, tabulation and analysis.

Why choose DataStar, Inc.

Wide variety of services

Customized solutions

Fast turnaround

Proven research expertise

Competitive pricing

Learn more about DataStar, Inc.

Related topics

  • Data Services
  • Data Analysis
  • Data Services
  • Data Processing
  • Data Services
  • Data Tabulation

Related articles

Big Data: A Guided Tour

Article by

  • Rich Timpone, Senior Vice President at the Ipsos Science Centre

Big Data can be hard to pin down - a little mysterious, even. In this Ipsos Views white paper, Rich Timpone, Senior Vice President at the Ipsos Science Centre, gives us a guided tour of Big Data.

Read more

How to Interpret Standard Deviation and Standard Error in Survey Research | GreenBook (2024)

FAQs

How do you interpret standard deviation and standard error in survey research? ›

SD tells us about the shape of our distribution, how close the individual data values are from the mean value. SE tells us how close our sample mean is to the true mean of the overall population.

How do you interpret standard deviation and standard error? ›

How Are Standard Deviation and Standard Error of the Mean Different? Standard deviation measures the variability from specific data points to the mean. Standard error of the mean measures the precision of the sample mean to the population mean that it is meant to estimate.

How do you interpret standard deviation on a survey? ›

Low standard deviation means data are clustered around the mean, and high standard deviation indicates data are more spread out. A standard deviation close to zero indicates that data points are close to the mean, whereas a high or low standard deviation indicates data points are respectively above or below the mean.

How do you interpret standard error in research? ›

The standard error tells you how accurate the mean of any given sample from that population is likely to be compared to the true population mean. When the standard error increases, i.e. the means are more spread out, it becomes more likely that any given mean is an inaccurate representation of the true population mean.

How much standard error is acceptable? ›

The standard error, or standard error of the mean, of multiple samples is the standard deviation of the sample means, and thus gives a measure of their spread. Thus 68% of all sample means will be within one standard error of the population mean (and 95% within two standard errors).

How do you interpret the results of the survey? ›

6 Tips for Interpreting Survey Results
  1. Ask the right questions. ...
  2. For open-ended questions, start broad and drill down. ...
  3. Filter for key phrases. ...
  4. Display results visually. ...
  5. Use other data to understand (and sometimes discount) results. ...
  6. Interpret through the lens of your goals—both overarching and current.

What does standard deviation and standard error of the mean tell you about your data? ›

In summary, standard deviation tells you how far each value lies from the mean within a single dataset, while standard error tells you how accurately your sample data represents the whole population.

How do you interpret standard deviation and descriptive statistics? ›

A low standard deviation indicates that the data points tend to be close to the mean of the data set, while a high standard deviation indicates that the data points are spread out over a wider range of values. There are situations when we have to choose between sample or population Standard Deviation.

How do you interpret a sample in research? ›

Mean. The mean is the average of the data, which is the sum of all the observations divided by the number of observations. For example, the wait times (in minutes) of five customers in a bank are: 3, 2, 4, 1, and 2.

What does a standard deviation of 1.5 mean? ›

In the second graph, the standard deviation is 1.5 points, which, again, means that two-thirds of students scored between 8.5 and 11.5 (plus or minus one standard deviation of the mean), and the vast majority (95 percent) scored between 7 and 13 (two standard deviations).

How do you interpret the mean and standard deviation of a Likert survey? ›

First method:
  1. From 1 to 1.80 represents (strongly disagree).
  2. From 1.81 until 2.60 represents (do not agree).
  3. From 2.61 until 3.40 represents (true to some extent).
  4. From 3:41 until 4:20 represents (agree).
  5. From 4:21 until 5:00 represents (strongly agree).

What does 1 standard deviation tell you? ›

Using the standard deviation, statisticians may determine if the data has a normal curve or other mathematical relationship. If the data behaves in a normal curve, then 68% of the data points will fall within one standard deviation of the average, or mean, data point.

What does a standard error of 0.05 mean? ›

The standard error of the mean permits the researcher to construct a confidence interval in which the population mean is likely to fall. The formula, (1-P) (most often P < 0.05) is the probability that the population mean will fall in the calculated interval (usually 95%).

What does standard deviation Tell us about accuracy? ›

The standard deviation measures the precision of a single typical measurement. It is common experience that the mean of a number of measurements gives a more precise estimation than a single measurement. This experience is quantified by the standard error of the mean.

What is an acceptable standard deviation? ›

Statisticians have determined that values no greater than plus or minus 2 SD represent measurements that are are closer to the true value than those that fall in the area greater than ± 2SD.

Is it better to have a low or high standard error? ›

Standard error measures the amount of discrepancy that can be expected in a sample estimate compared to the true value in the population. Therefore, the smaller the standard error the better. In fact, a standard error of zero (or close to it) would indicate that the estimated value is exactly the true value.

What error is acceptable? ›

An acceptable margin of error used by most survey researchers typically falls between 4% and 8% at the 95% confidence level.

What is a good result for a survey? ›

A survey response rate of 50% or higher should be considered excellent in most circ*mstances. A high response rate is likely driven by high levels of motivation to complete the survey, or a strong personal relationship between business and customer. Survey response rates in the 5% to 30% range are far more typical.

How do you analyze survey data with multiple responses? ›

The three general steps are:
  1. Define a set of two more responses (you cannot do step 2 without doing this step first) ...
  2. Obtain multiple response frequencies (or cross-tabs) of the set you created - this will provide frequencies and percentages of each response option by total number of responses and by cases.
6 Oct 2020

Should I plot standard deviation or standard error of the mean? ›

When to use standard error? It depends. If the message you want to carry is about the spread and variability of the data, then standard deviation is the metric to use. If you are interested in the precision of the means or in comparing and testing differences between means then standard error is your metric.

Will the standard error always be lower than the standard deviation? ›

In other words, the SE gives the precision of the sample mean. Hence, the SE is always smaller than the SD and gets smaller with increasing sample size. This makes sense as one can consider a greater specificity of the true population mean with increasing sample size.

How do you interpret the standard deviation of a sampling distribution? ›

The standard deviation of the sampling distribution measures how much the sample statistic varies from sample to sample. It is smaller than the standard deviation of the population by a factor of √n. → Averages are less variable than individual observations.

How do you write an interpretation of data example? ›

There are four steps to data interpretation: 1) assemble the information you'll need, 2) develop findings, 3) develop conclusions, and 4) develop recommendations. The following sections describe each step. The sections on findings, conclusions, and recommendations suggest questions you should answer at each step.

How do you interpret descriptive statistics in research? ›

Interpret the key results for Display Descriptive Statistics
  1. Step 1: Describe the size of your sample.
  2. Step 2: Describe the center of your data.
  3. Step 3: Describe the spread of your data.
  4. Step 4: Assess the shape and spread of your data distribution.
  5. Compare data from different groups.

How do you interpret standard deviation for Likert scale data? ›

First method:
  1. From 1 to 1.80 represents (strongly disagree).
  2. From 1.81 until 2.60 represents (do not agree).
  3. From 2.61 until 3.40 represents (true to some extent).
  4. From 3:41 until 4:20 represents (agree).
  5. From 4:21 until 5:00 represents (strongly agree).

How do you interpret variance and standard deviation in research? ›

Variance is the average squared deviations from the mean, while standard deviation is the square root of this number. Both measures reflect variability in a distribution, but their units differ: Standard deviation is expressed in the same units as the original values (e.g., minutes or meters).

Top Articles
Latest Posts
Article information

Author: Edwin Metz

Last Updated:

Views: 5897

Rating: 4.8 / 5 (58 voted)

Reviews: 89% of readers found this page helpful

Author information

Name: Edwin Metz

Birthday: 1997-04-16

Address: 51593 Leanne Light, Kuphalmouth, DE 50012-5183

Phone: +639107620957

Job: Corporate Banking Technician

Hobby: Reading, scrapbook, role-playing games, Fishing, Fishing, Scuba diving, Beekeeping

Introduction: My name is Edwin Metz, I am a fair, energetic, helpful, brave, outstanding, nice, helpful person who loves writing and wants to share my knowledge and understanding with you.