Title: Chapter 2 Scientific Methods in Psychology
1Chapter 2Scientific Methods in Psychology
2Scientific Methods in Psychology
- Science is a word derived from Latin roots
- Scientia meaning knowledge
Scientific practice helps psychologists to know
that they have obtained the most accurate and
useful knowledge of mental processes and human
behavior.
3Module 2.1
- Science and the Evaluation of Evidence
4Science and the Evaluation of Evidence
- Psychology is a science. This chapter is about
how we utilize scientific methods in evaluating
claims and theories in psychology.
5The Scientific Method
- Why do we need it?
- The scientific method provides guidelines for
scientists in all fields, including psychology,
to use in evaluating discrete claims (called
hypotheses) and broader theories.
6The Scientific Method
- Why do we need it?
- It is almost impossible to prove with utter
certainty that any individual claim or theory is
true beyond a doubt. - The scientific method allows us to declare our
conclusions to be probable to the point where it
is reasonable to treat them as factual.
7The Scientific Method
- How do we support claims scientifically?
- Scientists want to know the evidence that will
support or disprove a claim. - The scientific word for a claim is hypothesis.
- A hypothesis is a testable prediction of what
will occur under a stated set of conditions.
8The Scientific Method
- Whats the hypothesis?
- Claim There Is a relationship between televised
violence and aggressive behavior.
9- Figure 2.1
- A hypothesis leads to predictions. An
experimental method tests those predictions a
confirmation of a prediction supports the
hypothesis a disconfirmation indicates a need to
revise or discard the hypothesis. Conclusions
remain tentative, especially after only one
experiment. Most scientists avoid saying that
their results prove a conclusion.
10The Scientific Method
- How do we test the hypothesis?
- Some possible methods
- Measure how much time a sample of children watch
violent television programs and compare that to
how much violent behavior the children exhibit (a
correlational study.) - Have a group of children watch violent programs
and another group watch non-violent programs, and
then record the differences in amount of violent
behavior between the two groups (an experimental
study.)
11The Scientific Method
- How do we measure the results?
- It is tricky to measure phenomena such as
violent behavior. - We need to operationally define concepts such as
this one clearly stating which behaviors will
represent the phenomenon of interest (verbal
threats, hitting, etc.). - We need to apply the definitions consistently.
12The Scientific Method
- What do our results mean?
- If the results support the original prediction,
it may mean the hypothesis is valid, but that
does not eliminate other possible explanations
for the outcome. - If the results contradict the original
prediction, the hypothesis may need to be
modified or abandoned (at least under certain
circumstances.) - Scientists generally do not make any dramatic
alterations to their conclusions based on one
study only.
13The Scientific Method
- The importance of replication
- The standards in the scientific community demand
that researchers report their methods in enough
detail so that any other scientist could feasibly
repeat the study to confirm or contradict the
validity of the findings. - Replicable results are those that anyone can
obtain, at least approximately, by following the
same procedures.
14The Scientific Method
- A good example of an interesting non-replicable
result in psychology is the much-ballyhooed
Mozart effect. - Based the results of a single study, researchers
claimed that listening to classical music could
improve cognitive functioning. - Several other studies have failed to replicate
the results of the original one.
15The Scientific Method
- The method of meta-analysis
- Because we sometimes find predominance of small
to medium effects in most studies of a particular
phenomenon (such as sex differences in aggressive
behavior) we may compile the results of a large
number of studies and treat them for all intents
and purposes as one very large research study. - A meta-analysis also provides us with more
information about the circumstances that will
increase or decrease the likelihood of the
predicted effect occurring.
16Scientific Theories
- What is a theory?
- A theory is a comprehensive explanation of
observable events and conditions. - A good theory makes precise and consistent
predictions while relying on a small number of
underlying assumptions.
17- Figure 2.2
- A good theory makes precise (falsifiable)
predictions
18Scientific Theories
- The importance of falsifiability and parsimony
- A theory that makes precise predictions is
falsifiable because it is easy to think of
evidence that would confirm or contradict the
theory. - Reliance on the fewest and simplest possible
assumptions is called parsimony, and is
considered an essential strength of good
scientific theory.
19Scientific Theories
- Example of a Parsimonious and Falsifiable
Scientific Theory - Gravity is a force that pulls objects in the
universe towards each other. - According to the theory of gravity, larger and
more massive objects pull smaller objects towards
them.
20- Can you think of examples of evidence that would
confirm or contradict this theory? - Does the theory rely on assumptions other than
the existence of the force itself and the effects
of size on the workings of the force?
EASILY. It is falsifiable.
NO. It is parsimonious.
21- An example of a claim that is NOT falsifiable
- The telephone psychic says Next year, you will
go through a big change. - This is not falsifiable because it is too vague.
22- An example of a claim that is NOT parsimonious
- The sun goes around the earth. Little gnomes push
it around the sky every day. We cant see them
because they are invisible to the human eye. - This is not parsimonious because too many
assumptions must be made in order for the claim
to be accepted as fact.
23Concept Check
- Is this claim falsifiable?
- You will encounter new challenges in your
travels this week.
NO It is vague.
24- An oversupply of dopamine in the human central
nervous system will eventually result in a
decline in the number of receptors available for
that neurotransmitter.
YES
25- On March 19th, 2005, you will meet a 30-year-old
millionaire who will offer you an exciting
entry-level job in a growing high-tech company in
Austin, TX.
YES Think why do horoscopes never get this
specific?
26- Children whose parents divorce will eventually
have serious emotional and relationship problems.
NOT AS SUCH We need to operationalize the terms
emotional problems and relationship problems.
27- There are unseen powers at work in our lives
that scientists will never be able to fully
explain.
NO This is vague What powers? How do they work?
28Parsimony and Degrees of Open-mindedness
- You might ask -
- Shouldnt we remain open-minded to new
possibilities?
29Scientific open-mindedness
- It is the willingness to consider proper
evidence. - It is NOT unquestioning acceptance of any
possibility in the absence of evidence. This is
known as gullibility.
In other words, your degree of open-mindedness
should have some relationship to the quality of
the evidence presented.
30What about anecdotal evidence?
- People often use personal accounts of isolated
events to bolster their beliefs in phenomena
(such as ESP.) - Because this sort of evidence is not
systematically gathered, it is prone to
selective memory (called confirmation bias) on
the part of the reporter. - We tend to remember when our hunches come true,
and forget when they do not. We like to be right.
31Research on ESP (Extrasensory Perception)
- Because of the problems described above,
anecdotal evidence is not considered to be
acceptable as good evidence of the existence of
ESP. - Experiments done in controlled settings, such as
the Ganzfeld procedure, along with careful
observation of some famous professional psychics,
have shown results that were non-replicable, or
easily explainable by techniques of
slight-of-hand known well to experienced
magicians.
32Psychology as a Science
- Science does not deal with proof or certainty.
- The history of science is one of constant
revision in the face of new and compelling
evidence. - Yet in psychology and all other sciences, we
apply the rigorous and systematic methods of
scientific study hypothesis, methods, results,
and interpretation, to ensure that our claims are
firmly grounded and our revisions reflect an
improved understanding of the phenomena under
scrutiny.
33Module 2.2
- Conducting Psychological Research
34General Principles of Research
- It is essential to your learning in psychology,
and perhaps to your knowledge in general, to be
able to evaluate the quality of the evidence
presented in psychological research.
What information do you need to know to be a good
interpreter of psychological research?
35General Principles of Research
- Definitions of Psychological Terms
- The Problems of Measurement
- We need to measure the phenomena we are studying.
- Sometimes what we study in psychology is not
tangible. It is not as we are measuring weight or
length of time.
36General Principles of Research
- Definitions of Psychological Terms
- The problems of Measurements
- In order to accurately measure these concepts and
phenomena, we develop behavioral or observable
definitions of them. - We call these definitions operational
definitions. - An operational definition is one that specifies
the operations or procedures used to produce or
measure something. Its a way to give an
intangible idea a numerical value.
37General Principles of Research
- Definitions of Psychological Terms
- So if we are investigating the effect of watching
violence on television on childrens aggressive
behavior - We need to operationalize violence on
television. - We need to operationalize aggressive behavior.
38General Principles of Research
- Definitions of Psychological Terms
- Violence might be operationalized as the number
of times in a one-hour show that one person
threatens or injures another person. - Aggressive behavior might be operationalized as
the number of insults, threats and assaults by
the subject over a 24-hour period after watching
a particular television program.
(There are other versions of these operational
definitions that would work well.)
39Concept Check
- Operational definitions
- Which of the following might be used as an
operational definition of attraction?
- A feeling of affection when two people are
together. (1) - The number of minutes during which two people are
touching each other over a four-hour period. (2) - (2)
40- Which of the following might be used as an
operational definition of assertiveness?
- The number of times a person makes requests or
states his or her feelings over the course of a
one-hour interaction. (1) - An appearance of confidence and ease in social
situations. (2) - (1)
41General Principles of Research
- Population Samples
- Usually in research we are asking questions that
are pertinent to a large population of interest
such as - Seven to ten-year-old children
- People diagnosed with depression
42General Principles of Research
- Population Samples
- But it is not practical to study all the
individuals in the population. - We take a relatively small number of observations
or individuals from the population, and we
generalize from that small number. - The small number of individuals or observations
is called a sample.
43General Principles of Research
- Population Samples
- There are several types of samples and sampling
procedures - A convenience sample is a group chosen because of
its ease of availability and study. - A representative sample closely resembles the
population in its percentage of males and
females, ethnic or racial groups, age levels, or
whatever other characteristics might have some
relevance to the results.
44General Principles of Research
- Population Samples
- A random sample is one in which every individual
in the population has an equal chance of being
selected. - A cross-cultural sample is one that contains
groups of people from at least two distinct
cultures.
45General Principles of Research
- Population Samples
- How we go about obtaining a sample has to be
carefully assessed in terms of our resources and
goals. Sometimes it is acceptable and appropriate
to rely on a convenience sample, other times this
strategy will produce results that are useless in
helping us understand and interpret the real
world.
46Concept Check
- Population Samples
- Suppose I am interested in the attitudes of
college students towards using the Internet in
their studies. I survey my students in one
Introductory Psychology class at my college. - Can I assume that their attitudes are
representative of the attitudes of all college
students in general?
- Population Samples
- Suppose I am interested in the attitudes of
college students towards using the Internet in
their studies. I survey my students in one
Introductory Psychology class at my college.
Not a safe assumption why?
47General Principles of Research
- Experimenter Bias
- Because (fallible) humans do the research, we
need to keep in check the various tendencies that
can work to create erroneous research findings or
erroneous interpretations of findings. - Experimenter bias is the tendency of an
experimenter to unintentionally distort the
procedures or results of an experiment based on
the expected or desired outcome of the research.
48General Principles of Research
- Experimenter Bias
- For example, if you were a researcher testing the
hypothesis that children who have been diagnosed
with learning disabilities are on average more
creative than children who have no diagnosis, you
may find it hard to ignore your hypothesis as
you observe the children with an LD diagnosis
going about whatever tasks you have devised to
operationalize creativity.
49General Principles of Research
- Experimenter Bias
- Methods have been devised to help counteract
these normal human tendencies that create bias - Using blind observers who record data without
knowing what the researcher is studying. - Using a placebo control. A placebo is a pill or
other sham treatment that makes it very difficult
for the subjects (single-blind) or the subjects
and experimenter (double-blind) to know who has
received the treatment and who has not.
50- Table 2.1
- Single-Blind and Double-Blind Studies
51General Principles of Research
- Research design
- There are many methods used to study
psychological concepts and phenomena. - We start by asking ourselves what happens, and
under what circumstances does it seem to occur? - We try to choose the best procedure. Each method
has advantages and disadvantages.
52General Principles of Research
- Observational (non-experimental) Research Design
- Naturalistic Observation
- Careful monitoring and examination of what people
and animals do under more or less natural
circumstances. - Example Dr. Jane Goodalls decades-long
observation of chimpanzees in the forest of
Gombe, recording their social organization and
biological functioning.
53General Principles of Research
- Observational Research Design
- Case History
- A thorough observation and description of a
single individual, appropriate only when done for
an unusual condition or circumstance. - Example The case of Phineas Gage, whose bizarre
and unfortunate accident taught medical doctors
and psychologists much about the nature of the
prefrontal cortex of the brain.
54General Principles of Research
- Observational Research Design
- Survey
- A survey is a study of the prevalence of certain
beliefs, attitudes, or behaviors, based on
peoples responses to specific questions. - Example Albert Kinseys 1948 survey of the
sexual preferences and habits of Americans was
ground breaking, although not by any means beyond
criticism.
55General Principles of Research
- Observational Research Design
- Surveys
- A Few Concerns About Survey Research
- Problems with obtaining a random or
representative sample - Competence or honesty of those who respond
- The wording of the questions
- Surveyor bias
56- Figure 2.8
- An example of how to bias a survey. This
imaginary survey for an imaginary society has a
style of questions similar to those found in many
surveys sponsored by actual political and social
organizations. The request for a donation is a
reliable clue that the organization is not really
seeking your opinion and will probably not even
bother to tabulate the results.
57General Principles of Research
- Correlational Studies
- Correlation
- Correlation is a measure of the relationship
between two variables which are both outside of
the investigators control. - Examples of variables include aspects such as
height, weight, socio-economic level, number of
years of education. - The mathematical estimate of the strength and
direction of a correlation is the correlation
coefficient.
58General Principles of Research
- Correlational Studies
- The value of the correlation coefficient can
range from 1.00 to 1.00. - The higher the absolute value, the stronger the
relationship is, regardless of the direction. - A negative correlation (-) means that as one
variable increases, the other decreases. An
example of a negative correlation is the more
absences a student has, the lower his or her
grade in psychology is (more absences accompanied
by fewer points on tests.)
59- Figure 2.9
- In a scatterplot each dot represents data for one
person for example, each point in the center
graph tells us one persons weight and that
persons grade on the psychology final exam, in
this case using hypothetical data. A positive
correlation indicates that, as one variable
increases, the other generally does also. A
negative correlation indicates that, as one
variable increases, the other generally
decreases. The closer a correlation coefficient
is to 11 or 21, the stronger the relationship.
60General Principles of Research
- Correlational Studies
- A positive correlation () means that as one
variable increases, so does the other. An example
of a positive correlation would be the higher the
annual income, the greater the amount and number
of donations to charity (more income accompanied
by more charitable giving.) - A zero or near zero correlation means that the
variables have no relationship that changes in
one are not related to any type of change in the
other.
61Concept Check
- What type of correlation?
- Peoples shoe size and IQ score
- Zero
62- The greater the number of years of education, the
higher the income
Positive
63- The greater the score on a depression inventory,
the lower the score on a memory test
Negative
64- Which relationship is stronger?
65General Principles of Research
- Correlational Studies
- Some Problems with Interpreting Correlational
Research - Illusory Correlation An apparent relationship
based on casual observations of unrelated or
weakly related events. - Example The belief in moon madness.
66General Principles of Research
- Correlational Studies
- Some Problems with Interpreting Correlational
Research - Correlation ? Causation Correlational research
only tells us if two variables are related and
how strongly. It does not tell us why two
conditions can appear together and yet not cause
each other. - Example The more someone weighs, the larger his
or her vocabulary is. Do you know why?
Because weight and vocabulary both increase
with age.
67- Figure 2.10
- A strong correlation between depression and
impaired sleep does not tell us whether
depression interferes with sleep, poor sleep
leads to depression, or whether another problem
leads to both depression and sleep problems.
68Concept Check
- Interpreting correlational research
- Suppose we did a research study on our campus and
found a -.75 correlation between frequency of
exercise and level of depression. - List all the possible conclusions that we might
draw from this study.
- Exercising makes depression less likely.
- Depression makes exercising less likely.
- A third variable causes increases in exercise
and decreases - in depression.
69- Table 2.2
- Comparision of Five Methods of Research
70General Principles of Research
- Experiments
- Experiment
- A study in which the investigator manipulates at
least one variable (independent) while measuring
at least one other variable (dependent).
71- Figure 2.11
- An experimenter manipulates the independent
variable (in this case the programs people watch)
so that two or more groups experience different
treatments. Then the experimenter measures the
dependent variable (in this case pulse rate) to
see how the independent variable affected it.
72General Principles of Research
- Experiments
- Example To test whether the hormone adrenaline
enhances memory in mammals, a researcher teaches
rats to run a maze. She gives a randomly selected
portion of the rats a drug to block production of
adrenaline. She then times all the rats on the
maze.
73General Principles of Research
- Experiments
- Remember In order for a study to be a true
EXPERIMENT, one of the variables must be directly
under the researchers control, and the other
must be measurable in some scientific way.
74- Figure 2.12
- Once researchers decide on the hypothesis they
want to test, they must design the experiment.
These procedures test the effects of watching
televised violence. An appropriate, accurate
method of measurement is essential.
75Concept Check
- Is it an experiment? If so, name the independent
and dependent variables. - A researcher wants to know if men or women are
better at a particular set of spatial
relationship tasks. He compares a randomly
selected group of 50 men and 50 women on a test
of the task.
Not an experiment M/F is a subject variable,
not a true independent variable.
76- A researcher wants to know if a particular herbal
supplement is helpful for improving memory. She
selects 100 college sophomores who achieved an
average score on a memory test, gives half of
them the herb for one month, half of them an
inert pill, and the re-tests them all.
Yes IV herb/no herb DV score on memory test
77General Principles of Research
- Experiments
- Other important terminology
- Experimental group The set of individuals who
receive the treatment that the experiment is
designed to test. - Control group The set of individuals who are
treated in the same way as the experimental group
except for the procedure that the experiment is
designed to test. - Random assignment A selection method in which
the experimenter assigns subjects to either the
experimental or control group using a procedure
based on chance.
78General Principles of Research
- Experiments
- Possible problems in carrying out and
interpreting the results of experiments - Demand Characteristics Cues that tell a subject
what is expected of him or her, and what the
researcher hopes to find. - Example If the subject knows that the drug being
tested is supposed to improve mood, he or she may
feel better.
79- Figure 2.13
- (a) In experiments on sensory deprivation, a
person who is deprived of most sensory
stimulation becomes disoriented, loses track of
time, and reports hallucinations. But do these
results partly reflect the persons expectation
of having distorted experiences? (b) In one
experiment students were placed in a normal room
after undergoing various procedures designed to
make them expect a dreadful experience. Many
reported hallucinations and distress.
80General Principles of Research
- Experiments
- Possible problems in carrying out and
interpreting the results of experiments - Ethical Considerations In doing research with
humans or animals, researchers must way possible
harm that may be inflicted against the usefulness
and other benefits that may be gained.
81General Principles of Research
- Ethical Concerns in Research involving Human
Subjects - Safeguarding human subjects well-being
- Use of informed consent Subjects are advised on
what to expect and explicitly state that they
agree to continue. - Institutional Research Board (IRB) Approval A
university or other reputable institution
appoints a panel of qualified judges who review
all research proposals before the actual
experiment begins.
82General Principles of Research
- Ethical Concerns in Research involving Human
Subjects - American Psychological Association standards The
criteria for appropriate treatment of humans who
are experimental subjects are well known to
members of this largest professional organization
in the science. Censure and expulsion are
possible consequences for those who do not follow
these procedures.
83General Principles of Research
- Ethical Concerns in Research involving Animals
- Though highly controversial, research studies
that use animals to help us understand the body
and brain have been essential to progress in
medicine and psychology. - Criteria for care and use of animals are
established by professional organizations - APA
- The Neuroscience Society
- Animal care committees at research institutions
84General Principles of Research
- Ethical Concerns in Research involving Animals
- Following the guidelines, animal care committees
strive to - Ensure that research animals are treated humanely
- Ensure that any pain and discomfort are kept to a
minimum - Ensure that all alternatives are examined before
animals are subjected to potentially painful
procedures - Nonetheless, this area continues to be one of
great debate, and no compromise between the sides
ever seems 100 satisfactory.
85Psychological Research
- Because of the challenges involved in studying
intangible mental processes and human behavior
that is the product of diverse influences,
psychologists have developed procedures that are
rigorous and inventive and very frequently do
increase our understanding of the phenomena in
this complex and fascinating science!
86Module 2.3
- Measuring and Analyzing Results
87- Figure 2.15
- Why statistics can be misleading Both of these
graphs present the same data, an increase from 20
to 22 over 1 years time. But by ranging only
from 20 to 22 (rather than from 0 to 22), graph
(b) makes that increase look much more dramatic.
(After Huff, 1954)
88Descriptive Statistics
- Descriptive statistics are mathematical summaries
of results. There are two broad categories of
descriptive statistics - Measurements of the Central Score
- Measurements of Variation or Dispersion
89Descriptive Statistics
- Measurements of the Central Score The mean
- The mean is the sum of all the scores divided by
the total number of scores. This measure is most
useful when the scores are normally distributed. - A normal distribution, or normal curve, is a
symmetrical frequency of scores clustered around
the mean.
90Descriptive Statistics
- Measurements of the Central Score The median
- The median is the middle score when we arrange
all the scores in order from lowest to highest. - It is especially useful when the scores we are
working with are very abnormally distributed. - For example, if our distribution of scores is 2,
3, and 10, 3 is a more accurate description of
the middle then the mean, which would be 5 for
this set of scores.
91- Figure 2.17
- The monthly salaries of the 25 employees of
company X, showing the mean, median, and mode.
(After Huff, 1954)
92Descriptive Statistics
- Measurements of the Central Score The mode
- The mode is the score that occurs most frequently
in a distribution. - The least useful of the three measures of central
score, it comes in handy when a distribution is
very abnormally distributed (when the majority of
scores are clustered at the low end or high end)
or when working with non-numerical data
(categorical variables such as diagnostic
classifications.)
93- Figure 2.16
- Results of an imaginary survey of study habits at
one college. This college apparently has two
groups of studentsthose who study as hard as
they can and those who find other things to do.
In this case both the mean and the median are
misleading. This distribution is bimodal its two
modes are 0 and 8.
94Concept Check
- Calculate the mean, median and mode for this
distribution of scores - 2, 3, 4, 4, 7, 10
Mean 5 Median 4 Mode 4
95- What would be the best measure of central score
for this distribution? - 1, 2, 2, 3, 3, 20
Median
96- What would be the best measure of central score
for this distribution? - 4, 4, 4, 4, 4, 4, 7, 8, 10
Mode
97Descriptive Statistics
- Measurements of Variation
- The range is a statement of the highest and
lowest scores - If our distribution has the following scores 1,
2, 3, 5, 7, 9, 9, 10, the range is from 1 to 10.
98Descriptive Statistics
- Measurements of Variation
- The standard deviation (SD) is a measurement of
the amount of variation among scores in a normal
distribution. - The more closely the scores are clustered around
the mean, the smaller the standard deviation is. - Standard deviations are used to make meaningful
comparisons on different tests or on different
versions of the same kind of test.
99- Figure 2.18 These two distributions of test
scores have the same mean but different variances
and different standard deviations.
100Concept Check
- On your first statistics exam of the semester,
you get a score of 90, the mean for the class is
70 and the standard deviation is 20. On the
second exam of the semester, you get an 80. The
mean for the class is 65 and the standard
deviation is 5. Did you do better, worse, or the
same on the second test?
You did much, much better on exam 2!
101Evaluating Results Inferential Statistics
- As mentioned earlier in the module, we rarely are
certain in the world of research. To infer is to
guess based on evidence. Inferential statistics
are the mathematical procedures we use for this
educated guessing a statement about a large
population based on an inference from a small
sample.
102- Figure 2.19 In a normal distribution of scores,
the amount of variation from the mean can be
measured in standard deviations. In this example
scores between 400 and 600 are said to be within
1 standard deviation from the mean scores
between 300 and 700 are within 2 standard
deviations.
103Evaluating Results Inferential Statistics
- Sometimes we try to infer where the true mean
of the population of interest is based on the
mean of our sample. - We use a confidence interval to state how sure we
are that the true mean lies within a certain
range. - The calculation of width of the confidence
interval is based on the size of the sample (the
larger the better) and the value of the standard
deviation (the smaller the better.) - Example Based on my analysis of this sample, I
am 95 certain that the true population mean lies
between 5.0 and 7.0.
104Evaluating Results Inferential Statistics
- Confidence Intervals
- Confidence intervals are typically reported at
the 90, 95 or 99 levels of certainty. - The higher the confidence level, the broader the
range that is given by the researcher. - If the standard deviation is small and the sample
on which the confidence interval is based is
large, we can increase our certainty without
necessarily broadening the range.
105- FIGURE 2.20 The vertical lines indicate 95
confidence intervals. The pair of graphs in part
a indicate that the true mean has a 95 chance of
falling within a very narrow range. The graphs in
b indicate a wider range and therefore suggest
less certainty that reward is a more effective
therapy than punishment.
106Evaluating Results Inferential Statistics
- Probability Values
- A probability value is a way to estimate if a
score would be extremely rare given what we know
about the likely range in which the population
mean falls. - If the researcher says that there is a 95
certainty that the population mean falls between
5.0 and 7.0, and a particular score falls at 8.2,
then that score has a probability value of less
than 5 (p
in some way.
107Evaluating Results Inferential Statistics
- Probability Values and Statistical Significance
- Often scores that are exceptional in this way are
interpreted as being unlikely to have arisen by
chance. - A result that is unlikely to have occurred by
chance in a distribution is interpreted as being
statistically reliable or statistically
significant.
108- Figure 2.21
- Researchers say that results are statistically
significant if they calculate that chance
variations in data would be unlikely to produce a
difference between groups as large as the one
that the researchers actually observed.
109Concept Check
- Which is a more significant result
- One that is obtained with a p-value of .10 OR
- One obtained with a p-value of .001?
-
.001
110Statistics and Conclusions
- Consistent, dependable, large effects do not
require statistics for analysis and
interpretation. They speak for themselves. - Psychologists are often dealing with small and
fragile effects, or effects that only arise under
a certain set of circumstances. To do meaningful
work in this science, we need a solid
understanding of research design and statistics.