Term
What are the 2 types of NONSAMPLING errors made in Data Collection? |
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Definition
Errors in the research process involving anything but the sample size
Intentional Fieldworker = interviewer falsifies their response
Unintentional Fieldworker = interviwer makes mistakes (ie. fatigue, doesn't know how to administer questions) |
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Term
What are the 2 types of RESPONDENT errors made in Data Collection? |
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Definition
Errors committed by the respondents
Intentional = respondent knowingly provides false answers
Unintentional = respondent is confused or distracted |
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Term
What are the 3 error types in Online Surveys? |
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Definition
Multiple submissions (submitting many surveys; solve by asking for email)
Bogus Respondents (disguise themselves as another person; solve with prequalified people)
Population misrepresentation (some people don't fit the norm) |
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Term
What is the biggest problem in Data Collection? |
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Definition
Nonresponse
failure on the part of a prospective respondent to take part in a survey |
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Term
What are the 3 types of Nonresponse errors? |
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Definition
Refusal to Participate
Break Off During Interview (reach a certain point, then no more responses)
Refusal to Answer Certain Questions (Item Omission) |
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Term
Define the following:
Data Entry
Data Coding
Data Code Book |
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Definition
Data Entry = making a computer file that holds raw data
Data Coding = assigning computer code values that pertain to the possible responses for each question
Data Code Book = identifies all variable names and code numbers associated with each possible response |
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Term
Why are missing values important? |
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Definition
Dispersion of answers is determined by looking at the Standard Deviation |
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Term
What information is lost presenting data with missing values (just looking at mean and SD) |
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Definition
Should ask what the number of valid responses is
Can't see full information for variables |
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Term
What can missing values signal? |
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Definition
Questions were too difficult to answer, touched on sensitive issues
Respondents may have had difficulty filling out survey, didn't paid enough attnetion |
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Term
What problems can missing values cause? |
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Definition
Reduced sample size and increased sample error
Additional cost for resampling
Systematic biases in observed responses |
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Term
What do you do with missing values? |
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Definition
Good Sample Size and few MV:
- Drop all missing values
- Check for significant differences
Sample Size Problem
- Define maximum number of MV allowed
- Choose a replacement method (ie. average) |
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Term
What should the outcome be of data cleaning? |
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Definition
Deals with outliers
Identify and deal with problem cases (too many MV, insufficient variation) |
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