Survey
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
Inferential Statistics Psych 231: Research Methods in Psychology Purpose: To make claims about populations based on data collected from samples What’s the big deal? Example Experiment: Group A - gets treatment to improve memory Group B - gets no treatment (control) After treatment period test both groups for memory Results: Group A’s average memory score is 80% Group B’s is 76% Is the 4% difference a “real” difference (statistically significant) or is it just sampling error? Inferential Statistics Step 1: State your hypotheses Null hypothesis Alternative hypothesis Step 2: Set your decision criteria This is the hypothesis that you are testing Alpha level (prob of Type I error) Reject H0 Experimenter’s conclusions Fail to Reject H0 Real world (‘truth’) H0 is correct H0 is wrong Type I error Type II error Step 3: Collect your data from your sample(s) Step 4: Compute your test statistics Step 5: Make a decision about your null hypothesis Reject H0 Fail to reject H0 “statistically significant differences” “not statistically significant differences” Testing Hypotheses Example Experiment: Group A - gets treatment to improve memory Group B - gets no treatment (control) After treatment period test both groups for memory Results: Group A’s average memory score is 80% Group B’s average memory score is 76% Is the 4% difference a “real” difference (statistically significant) or is it just sampling error? Two sample distributions About populations H0: μA = μB H0: there is no difference between Grp A and Grp B Real world (‘truth’) H0 is correct Reject H0 XB XA 76% 80% Experimenter’s conclusions Fail to Reject H0 Testing Hypotheses H0 is wrong Type I error Type II error Tests the question: Are there differences between groups due to a treatment? Real world (‘truth’) H0 is correct Reject H0 Experimenter’s conclusions Fail to Reject H0 Two possibilities in the “real world” H0 is true (no treatment effect) One population Two sample distributions XB XA 76% 80% “Generic” statistical test H0 is wrong Type I error Type II error Tests the question: Real world (‘truth’) H0 is correct Are there differences between groups due to a treatment? Reject H0 Experimenter’s conclusions Fail to Reject H0 Two possibilities in the “real world” H0 is true (no treatment effect) H0 is wrong Type I error Type II error H0 is false (is a treatment effect) Two populations XB XA XB XA 76% 80% 76% 80% People who get the treatment change, they form a new population (the “treatment population) “Generic” statistical test XB XA ER: Random sampling error ID: Individual differences (if between subjects factor) TR: The effect of a treatment Why might the samples be different? (What is the source of the variability between groups)? “Generic” statistical test XB XA ER: Random sampling error ID: Individual differences (if between subjects factor) TR: The effect of a treatment The generic test statistic - is a ratio of sources of variability Computed Observed difference TR + ID + ER = = test statistic Difference from chance ID + ER “Generic” statistical test Observed difference Difference from chance “Statistically significant differences” When you “reject your null hypothesis” • Essentially this means that the observed difference is above what you’d expect by chance • “Chance” is determined by estimating how much sampling error there is • Factors affecting “chance” (sampling error) • Sample size • Population variability Estimating Sampling Error Population mean Population Distribution x n=1 Sampling error (Pop mean - sample mean) Estimating Sampling Error: Sample size Population mean Population Distribution Sample mean x n=2 x Sampling error (Pop mean - sample mean) Estimating Sampling Error: Sample size Generally, as the sample Population mean size increases, the sampling error decreases Sample mean Population Distribution x x n = 10 x x x x x x xx Sampling error (Pop mean - sample mean) Estimating Sampling Error: Sample size Typically the narrower the population distribution, the narrower the range of possible samples, and the smaller the “chance” Small population variability Large population variability Estimating Sampling Error: Pop. Variance These two factors combine to impact the distribution of sample means. The distribution of sample means is a distribution of all possible sample means of a particular sample size that can be drawn from the population Population Distribution of sample means Samples of size = n XA XB XC XD “chance” Avg. Sampling error Estimating Sampling Error: Standard Error The generic test statistic distribution A transformation of the distribution of sample means into a standardized distribution (e.g., z-distribution, t-distribution, F-distribution) Observed difference Difference from chance Test statistic Distribution of sample means “Generic” statistical test Distribution of the test statistic Step 1: State your hypotheses Step 2: Set your decision criteria Null hypothesis Alternative hypothesis Alpha level (prob of Type I error) Step 3: Collect your data from your sample(s) Step 4: Compute your test statistics Step 5: Make a decision about your null hypothesis Reject H0 Fail to reject H0 “statistically significant differences” “not statistically significant differences” Testing Hypotheses The generic test statistic distribution To reject the H0, you want a computed test statistics that is large • reflecting a large Treatment Effect (TR) What’s large enough to reject H0? The alpha level gives us the decision criterion TR + ID + ER ID + ER Distribution of the test statistic Test statistic Distribution of sample means α-level determines where these boundaries go “Generic” statistical test The generic test statistic distribution To reject the H0, you want a computed test statistics that is large • reflecting a large Treatment Effect (TR) What’s large enough to reject H0? The alpha level gives us the decision criterion Distribution of the test statistic Reject H0 Fail to reject H0 “Generic” statistical test The generic test statistic distribution To reject the H0, you want a computed test statistics that is large • reflecting a large Treatment Effect (TR) What’s large enough to reject H0? The alpha level gives us the decision criterion Distribution of the test statistic Reject H0 “One tailed test”: sometimes you know to expect a particular difference (e.g., “improve memory performance”) Fail to reject H0 “Generic” statistical test Computed Observed difference TR + ID + ER = = test statistic Difference from chance ID + ER Things that affect the computed test statistic • Sample size • Variability in the population R NR exp Difference expected by chance (sample error) Size of the treatment effect • The bigger the effect, the bigger the computed test statistic “Generic” statistical test “A statistically significant difference” means: the researcher is concluding that there is a difference above and beyond chance with the probability of making a type I error at 5% (assuming an alpha level = 0.05) Note “statistical significance” is not the same thing as theoretical significance. Only means that there is a statistical difference Doesn’t mean that it is an important difference Significance Failing to reject the null hypothesis Generally, not interested in “accepting the null hypothesis” (remember we can’t prove things only disprove them) Usually check to see if you made a Type II error (failed to detect a difference that is really there) • Check the statistical power of your test • Sample size is too small • Effects that you’re looking for are really small • Check your controls, maybe too much variability Non-Significance 1 factor with two groups T-tests • Between groups: 2-independent samples • Within groups: Repeated measures samples (matched, related) 1 factor with more than two groups Analysis of Variance (ANOVA) (either between groups or repeated measures) Multi-factorial Factorial ANOVA Some inferential statistical tests Design 2 separate experimental conditions Degrees of freedom • Based on the size of the sample and the kind of t-test Formula: Observed difference T= X1 - X2 Diff by chance Computation differs for between and within t-tests T-test Based on sample error Reporting your results The observed difference between conditions Kind of t-test Computed T-statistic Degrees of freedom for the test The “p-value” of the test “The mean of the treatment group was 12 points higher than the control group. An independent samples t-test yielded a significant difference, t(24) = 5.67, p < 0.05.” “The mean score of the post-test was 12 points higher than the pre-test. A repeated measures t-test demonstrated that this difference was significant significant, t(12) = 5.67, p < 0.05.” T-test Designs XA XB XC More than two groups • 1 Factor ANOVA, Factorial ANOVA • Both Within and Between Groups Factors Test statistic is an F-ratio Degrees of freedom Several to keep track of The number of them depends on the design Analysis of Variance XA XB XC More than two groups Now we can’t just compute a simple difference score since there are more than one difference So we use variance instead of simply the difference • Variance is essentially an average difference Observed variance F-ratio = Variance from chance Analysis of Variance XA XB XC 1 Factor, with more than two levels Now we can’t just compute a simple difference score since there are more than one difference • A - B, B - C, & A - C 1 factor ANOVA Null hypothesis: XA XB XC H0: all the groups are equal XA = XB = XC Alternative hypotheses HA: not all the groups are equal XA ≠ XB ≠ XC XA = XB ≠ XC 1 factor ANOVA The ANOVA tests this one!! Do further tests to pick between these XA ≠ XB = XC XA = XC ≠ XB Planned contrasts and post-hoc tests: - Further tests used to rule out the different Alternative hypotheses XA ≠ XB ≠ XC Test 1: A ≠ B Test 2: A ≠ C Test 3: B = C XA = XB ≠ XC XA ≠ XB = XC XA = XC ≠ XB 1 factor ANOVA Reporting your results The observed differences Kind of test Computed F-ratio Degrees of freedom for the test The “p-value” of the test Any post-hoc or planned comparison results “The mean score of Group A was 12, Group B was 25, and Group C was 27. A 1-way ANOVA was conducted and the results yielded a significant difference, F(2,25) = 5.67, p < 0.05. Post hoc tests revealed that the differences between groups A and B and A and C were statistically reliable (respectively t(1) = 5.67, p < 0.05 & t(1) = 6.02, p <0.05). Groups B and C did not differ significantly from one another” 1 factor ANOVA We covered much of this in our experimental design lecture More than one factor Factors may be within or between Overall design may be entirely within, entirely between, or mixed Many F-ratios may be computed An F-ratio is computed to test the main effect of each factor An F-ratio is computed to test each of the potential interactions between the factors Factorial ANOVAs Reporting your results The observed differences • Because there may be a lot of these, may present them in a table instead of directly in the text Kind of design • e.g. “2 x 2 completely between factorial design” Computed F-ratios • May see separate paragraphs for each factor, and for interactions Degrees of freedom for the test • Each F-ratio will have its own set of df’s The “p-value” of the test • May want to just say “all tests were tested with an alpha level of 0.05” Any post-hoc or planned comparison results • Typically only the theoretically interesting comparisons are presented Factorial ANOVAs Example: Suppose that you notice that the more you study for an exam, the better your score typically is. This suggests that there is a relationship between study time and test performance. We call this relationship a correlation. Relationships between variables Properties of a correlation Form (linear or non-linear) Direction (positive or negative) Strength (none, weak, strong, perfect) To examine this relationship you should: Make a scatterplot Compute the Correlation Coefficient Relationships between variables Plots one variable against the other Useful for “seeing” the relationship Form, Direction, and Strength Each point corresponds to a different individual Imagine a line through the data points Scatterplot Y 6 Hours study Exam perf. X 6 1 Y 6 2 5 5 6 2 3 4 1 3 2 Scatterplot 4 3 1 2 3 4 5 6 X A numerical description of the relationship between two variables For relationship between two continuous variables we use Pearson’s r It basically tells us how much our two variables vary together As X goes up, what does Y typically do • X, Y • X, Y • X, Y Correlation Coefficient Linear Form Non-linear Negative Positive Y Y X X • As X goes up, Y goes up • As X goes up, Y goes down • X & Y vary in the same direction • X & Y vary in opposite directions • Positive Pearson’s r • Negative Pearson’s r Direction Zero means “no relationship”. The farther the r is from zero, the stronger the relationship The strength of the relationship Spread around the line (note the axis scales) Strength r = -1.0 “perfect negative corr.” -1.0 r = 0.0 “no relationship” r = 1.0 “perfect positive corr.” 0.0 The farther from zero, the stronger the relationship Strength +1.0 Rel A r = -0.8 Rel B r = 0.5 -.8 -1.0 .5 0.0 Which relationship is stronger? Rel A, -0.8 is stronger than +0.5 Strength +1.0 Compute the equation for the line that best fits the data points Y 6 5 Y = (X)(slope) + (intercept) 4 3 2 1 0.5 Change in Y 1 2 3 Regression 4 5 6 X Change in X 2.0 = slope 4.5 Can make specific predictions about Y based on X Y 6 5 X=5 Y = (X)(.5) + (2.0) Y=? Y = (5)(.5) + (2.0) Y = 2.5 + 2 = 4.5 4 3 2 1 1 2 3 Regression 4 5 6 X Also need a measure of error Y = X(.5) + (2.0) + error Y = X(.5) + (2.0) + error • Same line, but different relationships (strength difference) Y 6 5 Y 6 5 4 3 2 1 4 3 2 1 1 2 3 4 5 Regression 6 X 1 2 3 4 5 6 X Don’t make causal claims Don’t extrapolate Extreme scores (outliers) can strongly influence the calculated relationship Cautions with correlation & regression