Delete the samples with any missing data elements.In general, there are the following types of remedies for missing data: These are characteristics that might be quite relevant to the analysis. people filling out a long questionnaire may give up at some point and not answer any further questions, or they may be offended or embarrassed by a particular question and choose not to answer it. if a questionnaire with 5 questions is randomly missing 10% of the data, then on average about 41% of the sample will have at least one question missing.Īlso, it is often the case that the missing data is not randomly distributed. This problem is bigger than might first be evident. In this case, additional sample data elements may need to be collected. This is particularly relevant when the reduced sample size is too small to obtain significant results in the analysis. One problem with this approach is that the sample size will be reduced. In Identifying Outliers and Missing Data we show how to identify missing data using a data analysis tool provided in the Real Statistics Resource Pack.Ī simple approach for dealing with missing data is to throw out all the data for any sample missing one or more data elements. For example, in conducting a survey with ten questions, perhaps some of the people who take the survey don’t answer all ten questions. Selecting a region changes the language and/or content on problem faced when collecting data is that some of the data may be missing. If the number of the entries here doesn't match the number in step 3, then log onto a computer which has the correct entries, and create these entries on the problematic machine. Here, too, ignore "Segoe UI Symbol" and "Segoe UI Emoji".
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