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Course evaluations are open!

Fall 2024 deadlines:

  • December 4 (condensed evaluation period)
  • December 21 (default evaluation period)

Find out which period your unit uses.

View and Interpret Previous Course Evaluation Results

One purpose of the course evaluation system is to inform students about courses and instructors.听Under certain conditions, previous numerical course evaluation results are available to consult. This page contains information to help you understand and interpret these results.


Under what conditions are course evaluation results made available to view?

Numerical results of course evaluations are available when the following two conditions are met:

  1. An instructor has not objected to access; and
  2. An adequate response rate has been received, defined as follows:
    Class Size Response Rate (%)
    5 - 11 minimum 5 responses
    12 - 30 at least 40%
    31 - 100 at least 35%
    101 - 200 at least 30%
    201 or more at least 25%

Note: For courses with multiple instructors, all instructors assigned to the course must not object to access for course evaluation results to be disseminated to students.

In all cases, written comments are confidential to the instructor and the academic unit head or their delegate.

When are the results available?听

Results are available according to the following schedule:

  • Fall evaluations: March the following calendar year

  • Winter evaluations: June the same calendar year

  • Summer evaluations: October the same calendar year

Statistics on the Availability of Results

  • As at December 2019:

    • 2,376 instructors have granted permission for their numerical results to be available (view report).

    • 1,255听of the 2,602听(48%) courses evaluated met the response thresholds required for results to be available.听

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Definitions used in the course evaluation system

Display of disseminated course evaluation results in Mercury
Display of disseminated course evaluation results in Mercury

Total Number of Completed Evaluations

The number of students who submitted the evaluation.

Total Enrollment in Course

The number of students enrolled in the course.

Response Rate

The sum of the 鈥淭otal Number of Completed Evaluations鈥 and the "Total Number of Declined Evaluations," divided by the 鈥淭otal Enrollment in the Course or Course Section," expressed as a percentage.

Valid responses

The number of students who selected one of the options provided for the question.

Blank responses

The number of students who did not select an option for the question. Blank responses are NOT included in any calculations. Note: The number of 鈥淰alid responses鈥 plus the number of 鈥渂lank responses鈥 should equal the 鈥淭otal Number of Completed Evaluations鈥.

Mean

The sum of all 鈥渧alid responses鈥 divided by the number of 鈥渧alid responses鈥. Note: The closer the mean is to 5, the closer it is to 鈥渟trongly agree/ excellent鈥.

Standard Deviation

The standard deviation is a measure of the variation of the distribution of a data set. The standard deviation provides information about the distribution of responses, and underlines the danger of looking at the mean alone without considering the variance.

Formula: The standard deviation is calculated as the square root of the arithmetic mean of the squares of the deviation from the arithmetic mean. As this is a calculation on a sample rather than the population, the result is an estimated standard deviation and is expressed in the same units as the data.

Why look at the Standard Deviation?

For example, the following three cases illustrate how the same mean, 3, summarizes three data sets with completely different features. Clearly, the estimated standard deviation is needed in conjunction with the sample mean to better describe a data set.

Case 1 Case 2 Case 3
Student responses: 5 x 鈥1鈥 and 5 x 鈥5鈥
Data set: (1, 1, 1, 1, 1, 5, 5, 5, 5, 5)
Mean: 3
蟽(厂顿): 2.1
Student responses: 2 x 鈥1鈥, 2 x 鈥2鈥, 2 x 鈥3鈥, 2 x 鈥4鈥 and 2 x 鈥5鈥
Data set: (1, 1, 2, 2, 3, 3, 4, 4, 5, 5)
Mean: 3
蟽(厂顿): 1.5
Student responses: 10 x "3"
Data Set: (3, 3, 3, 3, 3, 3, 3, 3, 3, 3)
Mean: 3
蟽(厂顿): 0

Standard Deviation of the Mean

This is an estimate of how representative the sample mean (those responding to the questionnaire) is of the population mean (the whole class).

Formula: The variability of the sample mean is, naturally, smaller than the variability in the individual observations. This is usually taken to be the estimated standard deviation of the observations, divided by the square root of the sample size. When sampling from a 鈥渟mall鈥 finite population this variability will be reduced. A finite population estimator of the standard deviation of the sample mean is given by:
Formula for standard deviation of the mean

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Considerations when interpreting course evaluation results

If you review results from previous courses, it is important to interpret the numbers in a meaningful way.听 Some points to remember are:

  1. The mean is not sufficient to provide a picture of the distribution of responses. When interpreting the numerical results, consider information such as the distribution of responses by item as well as the variation in responses. Generally, differences that are less than .5 above or below the mean should be regarded as functionally equivalent.听

  2. The standard deviation provides important additional information about the variability of student responses. A standard deviation for a question greater than 1 indicates relatively high differences of opinion.

  3. Ratings of global items are the most useful as indicators of overall instructional effectiveness (e.g., 鈥淥verall this instructor is an excellent teacher鈥; 鈥淚 learned a great deal from this course鈥).听 Responses to these questions are found to correlate most consistently with measures of actual student achievement. Generally, mean scores over 4 are considered strong and mean scores of 3.5 to 4 represent solid results.

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While this web page is accessible worldwide, 海角社区 is on land which has served and continues to serve as a site of meeting and exchange amongst Indigenous peoples, including the Haudenosaunee and Anishinabeg nations. Teaching and Learning Services acknowledges and thanks the diverse Indigenous peoples whose footsteps mark this territory on which peoples of the world now gather. This land acknowledgement is shared as a starting point to provide context for further learning and action.

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