Term
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Definition
• determines all we can and cannot (45cfr46= federal regulation) • once we have ethical study we then turn to accuracy (validity) |
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Definition
• concerned with how accurately you’ve measured abstract constructs o look at validity and reliability • good research requires good measures |
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Definition
• concerned with how accurately your sample can speak for the population • to adequately describe a population, you need a good (representative) sample |
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Definition
• concerned with the accuracy of your conclusion that X causes/does not cause Y o must meet the THREE CRITERIA FOR CAUSALITY • good (causal) research will adequately meet all three |
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Term
what type of study has a stronger internal validity but tend to have a weaker external validity (application to real world)? |
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Definition
true experiments conducted in a lab |
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Term
what type of study had a stronger external validity with a weaker internal validity(control for z-factors)? |
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Definition
field research done out in real-world |
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Term
where did Dr. Exum go to college? |
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Definition
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Term
why do two studies on the same topic differ? |
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Definition
• Measure of X & Y may be different • Samples (and sample sizes) may be different • Research design may be different o May not have established group equivalence o May have different control variables |
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Term
what are the three ethical principles identified in the Belmont Report? *began 1974 & finished 1979 |
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Definition
respect for persons beneficence justice |
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what is "respect for persons"? (Belmont Report) |
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Definition
o Should view individuals as autonomous (self-governing) • Cannot force people to participate |
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Term
what is an “Informed Consent Form”? (result of "respect for persons") |
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Definition
Describes study • Indicates participation is voluntary • Participant & Researcher must sign |
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Term
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Definition
• determines all we can and cannot (45cfr46= federal regulation) • once we have ethical study we then turn to accuracy (validity) |
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Term
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Definition
• concerned with how accurately you’ve measured abstract constructs o look at validity and reliability • good research requires good measures |
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Term
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Definition
• concerned with how accurately your sample can speak for the population • to adequately describe a population, you need a good (representative) sample |
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Term
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Definition
• concerned with the accuracy of your conclusion that X causes/does not cause Y o must meet the THREE CRITERIA FOR CAUSALITY • good (causal) research will adequately meet all three |
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Term
what type of study has a stronger internal validity but tend to have a weaker external validity (application to real world)? |
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Definition
true experiments conducted in a lab |
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Term
what type of study had a stronger external validity with a weaker internal validity(control for z-factors)? |
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Definition
field research done out in real-world |
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Term
What is "beneficence"? (Belmont Report) |
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Definition
o Do no harm o Maximize benefits & minimize harms • Physical, social (status, standing), psychological, economic, legal, etc. |
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Term
what is a risk/benefit assessment? ("beneficence") |
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Definition
• Harms must be justifiable |
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Term
what is "justice"? (Belmont Report) |
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Definition
o Fair sharing of the benefits and burdens of research • Must justify why you are focusing on only one group |
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Term
what is an "equable process for selecting research patients"? ("justice") |
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Definition
• If study focuses exclusively on certain groups, you must justify why |
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Term
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Definition
evolving document of specific rules that researchers must follow to receive federal funding |
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Term
What are "IRBs"? (Institutional review boards) |
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Definition
• Institutions governed by the CFR are required to have one of these to oversee “human subjects research” Minimum of 5 people, diverse backgrounds • Reviews research proposals and decides if the study complies with 45 CFR 46 Study must have their approval before starting |
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Term
What is the purpose of an "IRB"? |
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Definition
reviews proposals to:
• Determine if the risks of the study acceptable • Determine if there are adequate safeguards in place for participants |
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Term
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Definition
ABSTRACT
o Abstract-> Concrete o Construct (concept) • Abstract idea Problem drinker; chronic offender; poverty We all have a general idea of what these things mean, but our specific definitions may vary |
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Definition
CONCRETE o Concrete->Abstract o E.G.- Men in class have been in more fights than have the women…induce that men fight more than women o Indicator • The concrete (specific) way we measure a concept Aka- Our “measure” or “operational definition”
You travel from CONCEPT to INDICATOR through deduction. |
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Definition
ABSTRACT
• “A general explanation for how things work or how they come to be” o poverty cause crime o juvenile delinquency is the result of poor parenting o X-> casual chain • Built from constructs |
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Definition
o Statement o Deduced from theory o Predicts a relationship b/t two or more variables |
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Term
what is an"operational definition"? |
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Definition
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Term
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Definition
(concept)
• Abstract idea Problem drinker; chronic offender; poverty We all have a general idea of what these things mean, but our specific definitions may vary |
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Term
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Definition
X, Y, & Z
• Measure of a concept (e.g.- indicator) that has at least 2 values (or “scores” or “ attributes”) • P. 51 • Examples: o Variable-> Attribute • Sex->male, female • Race-> white, black, etc |
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Definition
• A measure of much variability is in the set of scores for an indicator • “movement” |
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Term
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Definition
may be numbers • This does not necessarily mean they are quantitative o May be numeric codes for qualitative data
can be: • Qualities that cannot be ranked (no higher/lower) o Northeast, South, Midwest, West • Qualities then can be ranked (higher/lower) o Lower class, middle class, upper class Quantities that are precise amounts • 0 times arrested, 1 time, 2 times, 3 times, etc.. |
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tells us something about the type of attributes for a given measure |
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Definition
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Term
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Definition
• A measure with no variance o All scores are the same |
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Term
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Definition
• “As X moves does Y move in some general direction?” o If yes (even just a little) then there is a relationship o They can move in the same direction or opposite direction….either way there is a relationship |
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Term
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Definition
• If two variables (X & Y) are causally related, then X is the originator of Y o X causes Y X -> Y |
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Term
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Definition
o Must have a correlation • Scores for X & Y move together o Must have the proper temporal order • X occurred before Y o Must rule out rival explanations (or “spuriousness”) • Rule out the possibility that X & Y are related solely because of some other variable (Z) |
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Definition
not causal and attributed to some other factor we’ll call Z
Z /\ X Y |
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Term
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Definition
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Term
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Definition
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Term
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Definition
"z factors" • Are rival explanations for why X & Y are correlated o Rival to the idea that X causes Y • We must eliminate (or “control for”) these explanations |
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Term
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Definition
represents descriptive features o E.g.- race; the type of crime committed; narrative accounts/stories o Sometimes coded with numbers • Still qualitative; just with numeric codes |
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Definition
represents how much of a construct o E.g.- age, number of prior arrests |
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Term
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Definition
o Use data to describe our sample |
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Term
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Definition
o Use data to describe our population o Requires “p-values” (e.g. p<.05) |
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Term
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Definition
• Studying a phenomenon at one point in time o E.g.- a one-time survey given to participants • Provides a snap shot at that moment |
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Term
what are "cross-sectional studies" NOT good at? |
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Definition
examining causal chains
• Hard to show that X comes before Y in cross sectional data • To show temporal order, you could try retrospective measures o Ask participants to think back about something in past (e.g.-depression level at beginning of the year) • But can people accurately remember the past??? QUESTIONABLE. |
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Term
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Definition
• Identify yourself as researcher • Observe/interview o but do not participate in the behavior o thus, may not have a complete appreciation or understanding of the behavior • Important to build rapport/trust o Helps you become “invisible”
• Problem: Reactive Effects |
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Term
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Definition
• Identify yourself, but also participate in the behavior (to some degree) o Gives you firsthand experience/insight o Reactive effects still possible • Less? You gain trust by going through what they go through. |
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Term
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Definition
• Do not identify yourself • Participate in the group’s activities as a “member” • Reactive effects? Should be virtually zero. • Measurement issues o Asking a lot of questions may blow your cover o May lose your objectivity (‘going native’) |
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Term
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Definition
o people don’t behave naturally if they know they are being watched |
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Term
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Definition
Qualitative -the simplest or “lowest” level of measurement - non-hierarchical categories • no “greater than/lesser than” • Common CJ examples: o Sex (m/f) o Race (w, b, o) o Marital status o Narratives (responses to questions) -not numerically meaningful • they do not measure quantity -what you do with these data? • Count (or determine the percentage) in each group |
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Term
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Definition
qualitative -attributes represent hierarchical categories • do reflect “greater than/lesser than” • but do not convey PRECISE quantities o Common CJ examples: • Level of agreement (sd, d, a, sa) • Level of frequency (never, rarely, often, always) • Prison security (min, med, max, super-max) -because the data does not measure a precise amount, you cannot compute an average -what can you do with these data? • Count (or determine percentage) in each group • Can also rank order the attributes |
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Term
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Definition
-quantitative -the most precise or “highest” level of measurement -attributes reflect an actual, precise quantity • Common CJ examples: o Age o Grade o Weight -what can you do with these data? • Count (or determine percentage) in each group • Can also rank order the attributes • Higher order mathematical operations, like the mean -To be a ratio level of measurement: • All the attributes must correspond to a single specific value |
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Term
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Definition
multiple-item indicator combine the indicators to create a "scale score" |
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Term
forumla to calculate crime rate per 100,000 people |
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Definition
(#crimes/population)*100,000 |
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Term
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Definition
o AKA: Frequency Table • Nominal, Ordinal, & Ratio |
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Term
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Definition
nominal & ordinal • Bars don’t touch (discrete categories) |
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Term
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Definition
ratio • Bars touch (fluid, continuous data) |
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Term
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Definition
(bell shaped) • one peak with two tails • right side is mirror image of left |
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Term
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Definition
• the skew is always in the tail
EX- Left skewed: will skew in left tail |
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Term
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Definition
• two peaks (sets of clusters) • 3 peaks= tri-modal (and so on) |
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Term
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Definition
flat • roughly same number for every attribute |
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Term
three measures of central tendency |
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Definition
• numbers that will tell us where a variable’s attributes TEND to fall
mean median mode |
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Term
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Definition
• The average • “the value around which all deviations sum to zero” • great measure; use it when you can • designed for ratio level measures • highly influenced by skewness and outliers still mathematically correct but can now be misleading |
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Term
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Definition
• the attribute falling in the middle of a rank ordered set of scores • attribute that falls at the 50th percentile
• not as functional as the mean • Not sensitive to outliers/skewness • The variable must be ordinal or ratio (must put attributes in rank order; you cant rank nominal) |
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Term
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Definition
• simplest measure of central tendency • the attribute that occurs most often (has the highest frequency) NOT how many times it occurs • Not as functional as the median (or mean) • A variable can have more than 1 (bi-modal) • Not sensitive to outliers/skewness • The only central tendency measure you can use with nominal data |
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Term
Rules for Using Measures of Central Tendency |
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Definition
• 1) Use the mean whenever it is appropriate o ratio data that is normally distributed (or “approximately normal”) • 2) If you cant use the mean, use the median o ordinal data, or ratio data that are highly skewed/outliers • 3) If you cant use the median, use the mode o when you have nominal level data |
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Term
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Definition
measure the amount of “movement” • range • standard deviation • variance -all are designed for RATIO measures |
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Term
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Definition
• simplest measure • range=highest-lowest • lower range=more variability • Weaknesses of the range: o Sensitive to outliers o Ignores the variability of the scores “in the middle” |
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Term
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Definition
uses all the scores (not just the extremes o -remember “deviations” o - A SPECIAL kind of average o -the “average” deviation from the mean -tells us how far scores can move-on “average”-around the mean -Larger SD’s=more spread; “fatter” distribution |
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Term
How do you compute the standard deviation? |
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Definition
Compute the deviations from the mean o -2, -1, 1, 2 o -Square them o 4, 1, 1, 4 o -Average these squared deviations(VARIANCE) o (4+1+1+4)/ 4=2.5 o -Take the square root of this average -square root of 2.5= 1.6 drinks -this is your SD! |
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Term
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Definition
think of it as the TOTAL amount of movement o -mathematically: variance= SD 2(squared) o -Larger variance=more variability The special relationship between the Mean, SD, and the Normal Curve |
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Term
The Pearson r & Venn diagram are considered what type of relationship? |
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Definition
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Term
in the Pearson r how do you interpret the sign & the number? |
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Definition
{-} negative relationship {__} positive relationship |
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Term
What constitutes a weak relationship? |
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Definition
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Term
What constitutes a moderate relationship? |
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Definition
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Term
What constitutes a strong relationship? |
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Definition
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Term
What does the Explained Variance tell us? |
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Definition
% of the variance in Y that is attributed to X |
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Term
How do you calculate the Explained Variance from the Peason R? |
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Definition
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Term
How do you rule out spuriousness in non-experimental studies? |
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Definition
-try to eliminate Z through statistical techniques 1. Allow X to happen naturally and then measure it 2. Measure Y 3. Measure the Z factors that you think might render your XY correlation spurious 4. Multivariate statistical techniques to see if X and Y are correlated above and beyond the influence of Z |
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Term
How do you rule out spuriousness in experimental studies? |
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Definition
-rule out spuriousness Methodically -Try to establish group equivalence |
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Term
What are "True Experiments"? |
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Definition
Pretest-Post Test experimental design Post Test only experimental design Factorial experimental design |
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Term
How does the Pretest-Post test experimental design work? |
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Definition
pretest measured on dependent variable, applied stimulus then re-measure (post test) |
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Term
How does the Post test only experimental design work? |
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Definition
no pretest done can reduce the possibility of the test being a threat to validity key is randomization |
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Term
What are the Quasi-experiments? |
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Definition
Non-equivalent control group design cohort design time series design |
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Term
non-equivalent control group design |
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Definition
• Typically uses matching • Identifying a pair of participants who are “identical” on a variable you want to control for. • Assign one to treatment and other to control |
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Term
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Definition
• Does not use matching • Treatment and control group are dif. Cohorts • Typically run in succession (dif. Groups of participants at dif. Points in time) |
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Term
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Definition
• Same group of people over time. • Only one group of participants • Participants serve as own control group |
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Term
Why is matching inferior to random assignment? |
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Definition
it only controls for those variables on which you match random assignment: controls for all possible variables (in theory) |
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Term
Why are True Experiments stronger research designs than Quasi-experiments? |
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Definition
True experiments use random assignment & they are better able to meet the 3 criteria for causality |
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Term
what are the threats to internal validity in non-experimental studies that we discussed in class? |
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Definition
o 1. Incorrect Temporal Order- • Correlation studies often measure X and Y at the same time (cross-sectional study) • Can be difficult to determine which happens first o (depression→ low gpa) o (low gpa→ depression) 2. Omitted Variable Bias -Occurs when you fail to control for relevant z factors -the variables “omitted” from your analysis b/c you forgot to (or could not) measure it/control for it. |
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Term
Selection Bias (Threat #1 to internal validity in experimental studies) |
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Definition
treatment & control group offer some important factor at the start of the story -Ex: more men selected than women
-less of a problem when you use random assignment |
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Term
Experimental Mortality (Threat #2 to internal validity in experimental studies) |
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Definition
Aka: differential attrition
a potential problem in longitudinal studies
if it occurs equally across treatment & control group then the problem cancels out
*differential attrition is a more serious problem |
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Term
Maturation Effects (Threat #3 to internal validity in experimental studies) |
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Definition
maturation=changes in behavior that occurs naturally within the person over time -if occurs differentially then it's a big problem
Ex: 2 groups; same crime; 1 pays a fine & other gets 10yrs in prison |
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Term
Statistical Regression (Threat #4 to internal validity in experimental studies) |
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Definition
Aka- regression to the mean
this is the natural tendency for behavior to ebb-&-flow around a mean -a bit like maturation but here change is a cyclical (some days up; others down) |
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Term
Diffusion (or "contagion") Effects (Threat #5 to internal validity in experimental studies) |
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Definition
sometimes treatment "spills over" into the control group -so X is given to both groups -no longer have a true counterfactual |
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Term
Compensatory Rivalry (Threat #6 to internal validity in experimental studies) |
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Definition
the control group realizes they are not getting "X", so they change their behavior |
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Term
Hawthorne Effects (Threat #7 to internal validity in experimental studies) |
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Definition
the treatment group knows they are getting "X", so they change their behavior |
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Term
How do you prevent the threats of Compensatory Rivalry (#6) & Hawthorne Effects (#7)? |
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Definition
If possible, "blind" (or "mask") participants to their condition
Don't let them know if they are in the treatment or control group -may be difficult to do |
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Term
Percentage vs. Valid Percentage |
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Definition
valid percentage more useful b/c it's based on people who answered the entire survey -more accurate |
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Term
Why would you NOT use a True Experiment? |
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Definition
ethical and/or practical reasons |
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Term
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Definition
row percentage: if you add all the rows= 100% column % downwards
use when X & Y are nominal or ordinal |
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Term
special relationship between the mean, SD, & normal curve |
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Definition
mean +/- SD captures 68% of scores under curve
mean= 2SD= 95% mean= 3SD= 99% |
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Term
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Definition
for 2 ratio level variables (bi-variate)
Aka- Pearson product moment correlation coefficient
# ranging from 0 to l1l |
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Term
Spurious relationship (Venn diagram) |
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Definition
if the circle for Z completely overlaps the relationship between X & Y then Z can account for the relationship between X & Y it is spurious |
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Term
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Definition
the probability (likelihood) if Y & X had not occured |
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Term
how do you determine if there is a Bivariate relationship? |
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Definition
As X moves Y also moves in some general pattern |
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Term
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Definition
a graph of each X/Y pairing -independent variable X on the x-axis -dependent variable Y on the Y axis
may include the "line of best fit" -the straight line that is as close as possible to all data points (**minimizes wiggle) |
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Term
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Definition
controls for all possible variables (in theory) According to probability theory you can pick up all Z factors (in theory) |
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Term
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Definition
controls for only those variables on which you match ***inferior to random assignment
o Identifying a pair of participants who are “identical” on a variable you want to control for o Assign one to treatment and other to control group PROBLEM: difficult to match on a lot of variables |
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Term
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Definition
• occurs when you fail to control for a relevant Z factor o the variable is “omitted” from your analysis because you forgot to (or could not) measure it/control for it
• you cant possibly measure/include every possible Z factor, but you should try to control for the factors that are most likely to be correlated with X & Y • If at all possible, control for a “past” measure of Y |
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Term
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Definition
-concerned with how accurately our sample can speak for the population |
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Term
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Definition
-the entire collection of “elements” (people, places, or things) we are interested in describing. -Studying populations can be difficult/costly |
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Term
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Definition
-subset of the population |
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Term
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Definition
• Uses random selection (not random assignment) o Selects people at random • Everyone has an equal and independent chance of being selected • As a result, our sample should look a lot like our population • We will know the probability of an element being selected into the sample we can only estimate sampling error (margin of error) in these |
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Term
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Definition
• No random selection • We do not know the probability of being selected
• Typically easier and less expensive to create o Very common, despite their problems |
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Term
3 types of non-probability samples |
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Definition
o Convenience sample • Sometimes called “Reliance on Available Subjects” (p. 155) o Quota sample o Snowball sample |
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Term
steps to getting a random sample |
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Definition
• get a sampling frame o master list of everyone in the population • assign each element an ID # • determine the number of digits in the largest ID# o (ex: 35= 2 digits, 522= 3 digits, 1,332= 4 digits) • select a starting place on the table • read the appropriate number of digits along right hand side • skip repeated numbers or numbers that don’t match an ID# |
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Term
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Definition
-a statement that predicts a relationship between two variables |
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Term
If p<____ then our relationship is “statistically significant” (i.e.- it is real) |
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Definition
.05 less than 5% chance
o P=the chance of getting your r assuming the null hypothesis is true o Or, think of it as the chance that your r is not “real” |
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Term
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Definition
probability value produced from: pearson r, t-test, chi-square, regression |
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Term
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Definition
• H0: r=0 o Fisher’s hypothesis • FYI: Your hypothesis is the “alternative hypothesis” or the “research hypothesis” |
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Term
if a finding IS statistically significant we ______ the null |
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Definition
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Term
greater than/equal to 5%, |
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Definition
then we fail to reject the null o Assume there is no relationship in the population |
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Term
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Definition
this is the cut-off point we use to determine statistical significance • Typically, alpha= .05, but it doesn’t have to be • Some make alpha= .01, so now sample findings must fall outside +/- 3 SE to be significant |
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Term
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Definition
How good/accurate are our measures (operational definitions) of our constructs?- Concerned with a measure’s • Reliability • Validity |
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Term
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Definition
the indicator construct+error |
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Term
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Definition
-means “consistency” or “repeatability” |
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Term
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Definition
o AKA: Internal Consistency or Scale Reliability o Performed on scales (not single-item indicators) o Looks at how well the indicator scores “hang together” (ex- how well they correlate together) • If all the indicators are measuring the same construct, then they should all have similar scores |
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Term
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Definition
• A statistic that measures internal consistency • Values range from 0.00 to 1.00 (always positive) • Higher values=greater consistency • Rule of thumb… o “Good” scales should have a minimum of 0.70 o Preferably 0.80 and higher |
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Term
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Definition
• Used with single-item indictors or scales • If your measurement instrument is reliable, then you should get similar scores each time you administer I to a particular person o EX- bathroom scale |
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Term
rule of thumb for strong correlation in test-retest reliability |
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Definition
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Term
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Definition
means accuracy • does your measure accurately capture what you think it is measuring? |
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Term
different types of validity? -all of which can be used with single-tem indicators or scales |
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Definition
• Face Validity • Content Validity • Criterion Validity • Construct Validity |
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Term
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Definition
• no math involved • just by looking at the item (“on its face”), does it appear to measure what you want it to measure |
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Term
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Definition
requires math
• Example: o is a breathalyzer valid? • Take blood samples from drinkers (criterion) • Take breath readings from same set of drinkers • Correlate the two sets of scores • Strong positive correlations=strong criterion validity • Rule of thumb: o Minimum of +0.70 o Prefer +0.80 and higher • Problem: o Sometimes hard to find the gold standard measure of our construct • Low self control? Neighborhood disorder? Social bonds? o So, may not be able to examine this |
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Term
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Definition
• requires math • concerned with how well your indicator correlates with other theoretically-related variables • Correlations b/t your measure and the “other” measure may be positive or negative • It depends on the theoretical relationship
• The scores should be modestly correlated o Not too weak (they should be correlated) o Not too strong (otherwise, your indicator may actually be a measure of the “other” construct) • Rule of Thumb: o Between 0.25-0.60 |
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Term
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Definition
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Term
Guideline #1 for writing good survey questions |
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Definition
• Consult the literature for pre-existing questions |
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Term
Guideline #2 for writing good survey questions |
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Definition
• Use open-ended questions sparingly o Participants don’t like to write answers (missing data; they will avoid filling out open questions) |
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Term
Guideline #3 for writing good survey questions |
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Definition
• With Likert scales, decide if you want/need a “Neutral” option o I approve of the use of the death penalty • SD • D • N • A • SA o “neutral” encourage “fence sitters” o But sometimes you may feel “neutral” is needed |
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Term
Guideline #4 for writing good survey questions |
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Definition
• Write questions at a low reading level o Use short, simple sentence structure, simple words, etc. • 40% of US population reads at a 6th grade level |
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Term
Guideline #5 for writing good survey questions |
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Definition
• Avoid negatively worded “stems” if possible o Can add confusion (error!) o I believe juveniles should not be tried as adults • SD, D, A, SA o Better question: I believe juveniles should be tried as adults. |
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Term
Guideline #6 for writing good survey questions |
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Definition
• Avoid double negatives o Confusing (error!) o Is it not unlike you to call the police if you witnessed a crime? • Yes • No |
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Term
Guideline #7 for writing good survey questions |
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• Avoid double barreled questions o These are two questions within one o I believe the death penalty is cruel and unusual punishment and should not be used under any circumstances • SD, D, A, SA o Introduces error! • Better Approach: Split them into separate questions |
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Guideline #8 for writing good survey questions |
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• Make sure your response options are exhaustive (cover all possible answers) o EX. Poor question: • How many times have you received a speeding ticket? 1-2 3-5 6-10 • There is no response if you have never received a ticket • ERROR! • An “Other:_____” option can help to make a response set exhaustive. |
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Guideline #9 for writing good survey questions |
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• Make sure your response options are mutually exclusive (no overlap) o EX- poor question: • How many times have you received a speeding ticket? 0 1-2 2-5 5-10 10+ • Error! |
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Guideline #10 for writing good survey questions |
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• make sure your questions and answers make sense o EX- poor question: • Occasionally, I worry about being a crime victim. Never true of me Rarely true of me Sometimes true of me Often true of me Always true of me |
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-some people selected to be in your sample won’t participate Rate=(# participants/# in sample)*100= ____% |
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rule of thumb for acceptable response rate |
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o Minimum response rate= 50% • General for social science is only 30% o Good response rate= 60% o Great response rate= 70+% |
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Who is less likely to participate in research studies? |
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• Men • Nonwhites • Young • Less educated (lower SES/social economic standing) |
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Dillman's recommendations on how to generate a high response rate |
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send out "tickle letter" to pique interest make sure all materials appear professional make it personal o Use participant’s name in address and greeting o Hand sign cover letters o Use stamps rather than metered postage o Place stamps slightly askew
make it user-friendly o Easy to red font, lots of white spaces o Should be a short survey; at most around 8-10pgs o Lots of close-ended questions (if possible) o Include a self-addressed stamped envelope for the survey to be returned
• Your opening questions should be easy to answer, non-offensive, and relevant to the purpose of the study ("hook") • Incentivize participants o If given in advance, may spark the “norm of reciprocity” • Incentives need not be expensive • Send out reminder postcards approximately 2 weeks after surveys • If still no response, 2 weeks later resend survey again |
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