PSYC 2005 Exam #1 Study Guide
Basic assumptions about nature
-a physical universe exists -there is rendomness and unpredictableness but it is primarily orderly and predictible system -we can discover the principles of their universe through scientific research -knowledge of the universe is always incomplete
differential research
-comparing 2 or more groups of people ( Ex: male vs female; dem vs rep; grade level) -measurements must be the exact same for each group -setting and observational procedures must be constrained -only difference between groups should be their characteristics preexisting variable
Naturalistic Observation
-observe behavior of p's in natural environment -only constraint is on the observational method -don't usually have a strong hypothesis
how to find variance
-subtract mean from score giving each score's deviation score -square each each of these deviation scores this gives you the squared deviation -add up all the squared deviations (sum of squares ss) - divide the sum of squares by the number of scores, this dives you the average of the squared deviation
safegaurds for deception and concealment
1) Researcher's judgment that the dec/con poses no serious or long term risk 2) a debriefing, which involves explaining the true nature of the dec/con as soon as possible, usually immediately after the study
Phases of research process
1. idea generating phase 2. problem defining phase 3. procedure- design phase 4; observation phase 5. data analysis phase 6. interpretation phase 7. communication phase
what are some good questions to ask about scientific claims?
1. what is the nature of the evidence for the claims? 2. In what forms is the evidence reported? 3. What are the affiliations of the supposed scientists?
multimodal distribution
2 or more high points
continuous variable
A variable (such as age, test score, or height) that can take on a wide or infinite number of values between two values.
nominal scale
Lowest level of measurement, do not match the # system naming categories qualitative differences we can assign numbers to the categories but they are arbitrary Ex: place of birth, political affiliation can't use mean or median only mode; can't be skewed
pseudoscience
a collection of beliefs or practices mistakenly regarded as being based on scientific method. astrology, creationists, etc
theory
a formalized set of concepts that summarizes and organizes observations and inference, provides tentative explanations for phenomena, and provides the bases for making predictions
bimodal distribution
a frequency distribution having two different values that are heavily populated with cases
true zero
a non-arbitrary point indicating a zero level of the variable being measured
skewed distribution
an asymmetrical but generally bell-shaped distribution (of opinions); its mode, or most frequent response, lies off to one side
scientific model
another type of theory miniature representations of reality description or analogy that helps scientists understand something unseen/complex "mini theories" models represent reality, they don't duplicate it models can be concetual or abstract verbal or mathmatical
Histograms
barlike graph of a frequency distribution; height of bar = frequency
justice (relating to ethical principles in research)
both the risks and the benefits of research should be shared equally by all members of the population
Statistics
branch of math that deals with organization, analysis,, and interpretation of a group of numbers a method of pursuing truth, predicting out comes
Nominal variables
categorical variables for which the categories do not have a natural ordering
causal relationships
changes in one variable results in a predictable change in the other
variable
characteristics that can have different values
non-manipulated IV
classification variable researchers assign participants to groups based on preexisting characteristics organismic variables (IQ, age, political affiliation) are the most common types of variables in psych studies researchers do NOT actively control but instead assigns groups
reification of a construct
confusing a construct for a fact don't do this
levels of constraint
coninuum of demands on the adequacy of information constibutes the second dimension of our model of research explanatory research is less refined, has low constraint studies don't always need to be precise and controlled
How does a research avoid measurement errors?
create a well thought out operational definition of the measurement procedure
deception/concealment
deliberately misleading ps by giving them false information or by withholding information
How to understand a group of scores
describe the scores in terms of representative (or typical) values like an average gives the central tendency main representative # used is the mean
variability
describes how spread out the numbers are variance or standard deviation
Two Branches of statistical methods
descriptive statistics and inferential statistics
data
facts about research
misleading graphs are caused by
failure to use equal intervals exaggeration of proportions (not starting scale at 0)
rectangular distribution
frequency distribution in which all values have approximately the same frequency
unimodal distribution
frequency distribution with one value clearly having a larger frequency than any other
correlation research
greater constraint on procedures used to measure behavior setting can range from naturalistic to very controlled lab quantification, so needs precise and consistent procedures
Why was B. F. Skinner against statistics?
he thought there was a lot of information lost when averaging scores
Ratio scale
highest level of measurement interval scale with a TRUE ZERO can use math operations score data, full number system meaning full to talk about the ratio of the score (ex: someone is 2x as tall as someone else)
kurtosis
how much the shape of a distribution differed from the normal curve in terms of whether the curve is more peaked or flat
What are the properties of the abstract number system?
identity magnitude equal intervals true zero
contructs
inferred events, often used by scientists as if they really exist as facts and actually have a relationship with the observable events
Case Study Research
intensive study of an individual observe p's, access records, actively intervene in the p's functioning, by interviewing and testing somewhat more constrained
ratio scale variable
interval variable with a true zero point (zero indicates complete absense of the variable), such as height in centimeters or duration of illness
autonomy (relating to ethical principles in research)
it is the right of the ps to decide whether they will participate and they must be given sufficient information on which to make that decision (informed consent)
Evaluative Bias of language
language inserts subtle judgments into the descriptions of objective behavior certain words have certain connotations
Ordinal scales
magnitude and identity order ranking interval unclear Ex: social class, school rank
interval scales
magnitude, id, and interval scaling close to matching # system but still does not have a true zero Temperature (C & F) Used a lot in psychology (IQ scale)
kinds of independent variabl
manipulated and non manipulated
ceiling effect
many scores pike up at the high end of a distribution because it is not possible to have any higher score
floor effect
many scores pile up at the low end of a distribution because it is not possible to have any lower score
which events are not considered facts?
memory, emotion, intelligence, attitudes, creativity, etc. anything NOT directly observable
nominal fallacy
mistake the naming of phenomenon for an explanation
mode
most common value peak of histogram the mode will match the median if the data set is unimodal and symmetrical poor representation of control, but good for nominal scores
standard deviation
most widely used square root of variance the average amount that the scores deviate from the mean
scientific theories
must be testable and must be falsifiable solid empirical base and carefully developed constructs parsimonious
Why are all scientific assumptions, knowledge, and their theories tentative?
new knowledge will alter current ideas and theories
magnitude
number has an inherent order
equal interval variable
numbers stand for approximately equal amounts of what is being measured Ex: GPA, 0-10 scale
rank order variable (ordinal)
numeric variable in which the values are ranks such as class rank or finishing a race (1st, 2nd place)
score
particular person's value on a variable
Experimental Research
performance of p's under certain conditions research randomly assigns p's to condition or groups unlike differential research high constraint
values
possible number or category that a score can have
controls
procedures used to reduce extraneous influences important for validity
Ethical principles 2 basic categories
protect those who participate in research conduct and report research accurately and honestly
inductive reasoning
reason from particular to general (observations --> constructs)
central tendency
refers to the middle of the distribution 3 measures: mean, medium, and mode
validity
refers to the quality or precausion of a study, procedure, measure to how well it does what it is supposed to do Ex: does the study answer the question it posed? Does the test measure what we want it to measure? WHat does this lab study reveal about the real world?
parsimonious theory
relatively simple and straightforward and is preferred over a complex theory if the theories provide a complex theory of the theories provide equivalent predictive ability
availabilty heuristic
relies on the info that is most readily available, rather than the total body of info on a subject in order to make a decision
Frequency table
shows how frequently a score was used and mkes it easy to see the pattern in a large group of numbers -make a list of the values from lowest to highest -make tallies -make table with scores and # of times -find percentages
negative skewed distribution
skewed left
positive skewed distribution
skewed right
normal curve
specific bell shaped frequency distribution that is symmetrical and unimodal
Barnum statements
statements, such as those used in astrological forecasts, that are so general that they can be true of almost anyone
all-or-none bias
tendency to see a statements as either true or false, when most cases in science the statement is probabbilistic
similarity-uniqueness paradox
tendency to view two things as either similar or different from one another when they arae likely both
median
the middle score good representation when there are a few outliers that could affect the mean
Who holds personal responsibility for participants in research?
the researcher any ethical issues should be corrected before contacting any participants
what happens in the in the debriefing
the researcher informs the ps about the procedures and explains the rational for their use resolves misconceptions and discomfort Following ps sign a form either permitting or denying the use of their data
stereotype threat
the risk ofconfirming as a self characteristic, a negative stereotype about a group you happen to belong to certain situations create this threat like taking a challenging math test
beneficence (relating to ethical principles in research)
the risk to ps should be minimized and the benefit to ps and society must be weighed against the possible benefits
response-set bias
the tendency to respond in specific ways regardless of the situation or your experiences Ex: social desirability= the tendency to respond in a socially acceptable manner (inaccurate self reports to make yourself look better)
validity
theory makes specific testable predictions that further observation can confirm
constants
things that researchers avoid varying
facts
those events that we can observe directly and repeatedly
shapes of frequency distributions
unimodal bimodal multimodal rectangular symmetrical skewed
extraneous variables
unplanned and uncontrolled factors that can arise in a study and affect the outcome researchers must control these to avoid their potential effects
deductive reasoning
use general or abstract ideas to return to specifics, used to make predictions
Inferential Statistic
used to draw conclusions and to make inferences that are based on numbers from a research study but go beyond numbers, allows people to make inferences about large groups of people
Descriptive statistics
used to summarize and describe a group of numbers from a study
mean
usually the best measurement of central tendency
discrete variable
variable that has a specific value and that cannot have values between these specific values (rank order)
list the 5 research methods from lowest to highest level of constraint.
Naturalistic observation Case study Correlation research Differential Research Experimental Research
Scales of measurement
Nominal Scale Ordinal Scale Interval Scale Ratio Scale
equal interval
difference between units is the same anywhere on the scale
Measurement Error
distorts the scores so that the observations do not accurately reflect reality
symmetrical distribution
distribution in which the pattern of frequencies on the left and right side are mirror images of each other
identity (property of abstract # system)
each # has a particular meaning
functional theory
equal emphasis on deduction and induction most theories
Kinds of quantitative variables
equal interval variables Ratio scale variables rank order variables
manipulated iv
experimenter actively controls
