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Mid Term

Quiz yourself by thinking what should be in each of the black spaces below before clicking on it to display the answer.
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Question
Answer
Research Design   An overall set of procedures for evaluating the effect OF an independent variable ON a dependent variable.  
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hypothesis   A testable statement about the empirical relationship between cause and effect. (it tells us what we should find when we look at the data)  
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variable   An empirical measurement of a characteristic.  
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dependent variable   Represents the effect in a causal explanation.  
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independent variable   Represents the causal factor in an explanation.  
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concept   An idea or mental construct that represents phenomena in the real world.  
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conceptual definition   Describes the concept's measurable properties and specifies the unit(s) of analysis.  
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operational definition   Describes the instrument to be used in measuring the concept and provides a procedural blueprint; a measurement strategy.  
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unit of analysis   The entity we want to analyze (person, city, state, county, country, etc.)  
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Ecological Fallacy   Arises when aggregate-level phenomena is used to make inferences at the individual level.  
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systematic measurement error   Introduces consistent, chronic distortion into an empirical measurement. (test anxiety, verbal skills, etc.) (durable)  
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random measurement error   Introduces haphazard, chaotic distortion into the measurement process. (fatigue, commotion, etc.) (not durable)  
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reliability   A consistent measure of the concept. (gives the same reading every time) (no random error)  
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validity   Records the true value of intended characteristics and does not measure any unintended characteristics. (measures what you want to measure) (no systematic error)  
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Levels of Measurement   Nominal-Level Variables Ordinal-Level Variables Interval-Level Variables  
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Central Tendency   The typical average. (Center) -Mean -Median -Mode  
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Dispersion   The variation of cases across its values. (Spread) -Range -Variance -Standard Deviation  
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Frequency Distribution   A tabular summary of a variable's values.  
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Sampling Distribution   The distribution of a statistic (ie mean) for all possible samples within a population.  
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Non-Standard Distribution   A distribution of data points.  
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Standard (Standard Normal) Distribution   1) All the properties of Normal Distribution 2) A distribution of Z-Scores 3) mean is always 0 and st dev is always 1  
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Probability Distribution   A statistical function describing all possible outcomes that a random variable can take within a given range.  
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test group   Composed of subjects who receive a treatment that the researcher believes is causally linked to the dependent variable.  
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control group   Composed of subjects who do NOT receive the treatment that the researcher believes is causally linked to the dependent variable.  
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experimental design   Ensures the test group and control group are the same in every way except one-the independent variable.  
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random assignment   Occurs when every participant has an equal chance of being in the control group or the test group.  
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selection bias   Occurs when nonrandom processes determine composition of the test group and the control group.  
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internal validity   Within the artificially created conditions, the effect of the independent variable ON the dependent variable is isolated from other plausible explanations.  
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external validity   When the results of the study can be generalized; its findings can be applied to situations in the natural world.  
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direct relationship   Runs in a positive direction; An increase in the IV is associated with an increase in the DV. (ordinal)  
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inverse relationship   Runs in a negative direction; An increase in the IV is associated with a decrease in the DV. (ordinal)  
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linear relationship   An increase in the IV is associated with a consistent increase or decrease in the DV. (positive or negative) (interval)  
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curvilinear relationship   Relationship b/w IV and DV depends on which interval or range of the IV is being examined. (not linear) (interval)  
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rival explanation   An alternative cause for the dependent variable.  
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controlled comparison   Accomplished by examining the relationship b/w the IV and the DV, while holding constant other variables suggested by rival explanations and hypotheses.  
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compositional difference   Any characteristic that varies across categories of an IV. (Dems and Repubs vary by gender, age, income, etc.)  
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spurious relationship   The relationship b/w IV and DV weakens, perhaps dropping to zero. (XYZ scenario)  
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additive relationship   The IV and the control variable (Z) make meaningful contributions to the explanation of the DV. (XYZ scenario)  
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interaction relationship   The relationship b/w the IV and the DV is not the same for all values of the control variable (Z). (XYZ scenario)  
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zero-order relationship (aka gross or uncontrolled relationship)   An overall association b/w two variables that does not take into account other possible difference b/w the cases being studied.  
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controlled comparison table   Presents a cross-tabulation b/w an IV and a DV for each value of the control variable.  
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controlled effect   A relationship b/w a causal variable and a DV within one value of another causal variable.  
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partial effect   Summarizes a relationship b/w two variables after taking into account rival variables.  
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population   The universe of cases the researcher wants to describe.  
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sample   Number of cases drawn from a population.  
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random sampling error   The extent to which a sample statistic differs, by chance, from a population parameter.  
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standard deviation   Summarizes the extent to which the cases in an interval-level distribution fall on or close to the mean of the distribution.  
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range   The maximum actual value minus the minimum actual value.  
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variance   The measure of the dispersion of values around the mean.  
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Central Limit Theorem   Rule that states if you take an infinite number of samples from a population, the means of those samples would be normally distributed.  
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Normal Distribution   Distribution used to describe interval-level variables.  
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standardization   Occurs when the numbers in a distribution are converted into standard units of deviation from the mean of the distribution.  
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Z Score   A standardized value. deviation from the mean/standard unit  
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probability   The likelihood of the occurence of an event or set of events.  
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Student's t-distribution   A probability distribution that can be used for making inferences about a population mean when the sample size is small.  
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degrees of freedom   Refers to a statistical property of a large family of distributions. =sample size (n) minus the number of parameters being estimated by the sample.  
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sample proportion   The number of cases falling into one category of the variable divided by the number of cases in the sample.  
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Empirical Rule   A statistical rule stating that for a normal distribution, almost all data will fall within three standard deviations of the mean. One St Dev=68.3% Two St Dev=95.4% Three St Dev=99.7%  
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standard error   The standard deviation of a sampling distribution. (sigma/N)  
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Basic Law of Probability   Given that all outcomes of an event are equally likely, the probability of any specified outcome is equal to the ratio of the number of ways that that outcome could be achieved to the total number of ways that all possible outcomes can be achieved.  
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3 Rules of general probability   1) The probability is b/w 0 and 1 2) Sum of all probabilities in a sample space will always = 1 3) Probability – 1 = complement of probability  
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