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Two essential characteristics of an experiment:

Two essential characteristics of an experiment:. Random assignment of subjects (participants) to groups (e.g., treatments or conditions) AND Treatments or conditions that manipulate the independent variable (IV). GROUP COMPARISON RESEARCH. EXPERIMENTS. Evaluating Experiments. Internal and

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Two essential characteristics of an experiment:

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  1. Two essential characteristics of an experiment: • Random assignment of subjects (participants) to groups (e.g., treatments or conditions) AND • Treatments or conditions that manipulate the independent variable (IV).

  2. GROUP COMPARISON RESEARCH EXPERIMENTS

  3. Evaluating Experiments Internal and External Validity

  4. Threats to Internal Validity • (1) Maturation: passage of time may produce changes in research participants. • (2) Historical effects: some significant historical event(s) may impact performance on the DVs (“time of measurement effects”). • (3) Testing effects: practice and reactivity.

  5. Threats to Internal Validity • (4) Instrumentation: differences in measurement techniques and measures over different measurement periods make it difficult to assess true changes in the DVs. • (5) Regression to the mean: occurs whenever groups are selected based on extreme scores (ie, very high or very low); scores “regress” towards their true mean over repeated measurement occasions.

  6. Threats to Internal Validity • (6) Experimental mortality: participant attrition, or drop-out, from a study. • (7) Participant selection: obtained effects on the DV are a function of characteristics of the sample. • (8) Selection-by-maturation interaction: maturation effects are found in some samples, but not in others.

  7. External Validity • People • Situations (contexts) • Time (history)

  8. Factors that influence external (ecological) validity • Explicit description of the experimental conditions. • Multiple-treatment interference. • Hawthorne (observer) effects. • Novelty and disruption effects. • Experimenter effects (teacher v. researcher) • Pretest and post-test sensitization

  9. Additional factors that influence external validity • History X treatment interaction effects. • The manner in which the dependent variable is measured. • Interaction of time of measurement (immediate v. delayed) and treatment effects.

  10. Improving External Validity (1) • Use random selection rather than a nonrandom procedure. • Keep attrition low. • Describe how your study’s setting and other settings differ; provide data about similarity between various groups of students, schools, and historical times.

  11. Improving External Validity (2) Conduct your study in variety of schools, with different students, and at different times. Replicate your study.

  12. Experimental Design Issues • How many treatments are involved in the experiment? • Will a control or comparison group be used? • Will a pretest of the DV be used? • How many times will the DV be measured? • How will internal and external validity threats be controlled?

  13. Design 1: ONE-GROUP PRETEST-POSTTEST DESIGN pretest posttest Group 1: O1 X O2

  14. Problems with pre-experimental design: (1) can't assume any change brought about by treatment is due to the treatment itself; other factors may explain the change. (2) design has no internal validity. (3) what is the effect of the pretest on subject performance?

  15. Design 2: POSTTEST ONLY CONTROL GROUP DESIGN(Static group comparison) Group 1: X O11 (treatment) Group 2: - O21 (control)

  16. Problem with this design: lacks random assignment; we can't assume groups are equivalent prior to treatment.

  17. Design 3: RANDOMIZED SUBJECTS; POSTTEST-ONLY CONTROL GROUP DESIGN Group 1: [R] X O11 (treatment) Group 2: [R] - O21 (control)

  18. Strengths of design: • Simple, but powerful experimental design. • No pretest: useful in studies where pretest sensitivity/reactivity is likely, or pretest is not available. • Main advantage: randomization--controls for several internal validity threats. • Can be used with >2 groups.

  19. Design 4: RANDOMIZED MATCHED SUBJECTS, POST-TEST ONLY CONTROL GROUP Group 1: [R] X O11 (treatment) Matching Group 2: [R] - O21 (control)

  20. Similar to Design 3, except uses matching of Ss on some variables (eg., IQ or reading achievement), rather than random assignment. Pretest scores can be used to match Ss. Matching variables presumed to be correlated with DV. One S randomly assigned to treatment, one S to control. Useful in studies with small sample sizes.

  21. Design 5: RANDOMIZED SUBJECTS, PRETEST- POSTTEST CONTROL GROUP DESIGN (a true experimental design) pretest posttest Experiment: [R] O11 X O12 Control group: [R] O21 O22

  22. Strengths of this design: (1) initial randomization of groups-- assures statistical equivalence prior to treatment. (2) allows experimenter to study change (in attitudes, learning, behaviors, etc. due to treatment). (3) pretest assures equivalence of groups. (4) controls for most threats to internal validity: history, maturation, and pretesting; also differential selection of Ss and statistical regression.

  23. Weakness of this design: Threat to internal validity: what effect does the pretest have on subjects’ responses to the treatment?

  24. Design 6: SOLOMON THREE-GROUP Group 1: [R] O11 X O12 Group 2: [R] O21 - O22 Group 3: [R] - X O32

  25. DESIGN 7: SOLOMON FOUR-GROUP DESIGN Group 1: [R] O11 X O12 Group 2: [R] O21 - O22 Group 3: [R] - X O32 Group 4: [R] - - O42

  26. Factorial designs • Include more than one independent variable. • Often have more than one dependent variable. • Can examine interactions between independent variables as well as the “main effects” of the individual independent variables on the dependent variables.

  27. SIMPLE FACTORIAL Design 8: EXPERIMENTAL VARIABLES Independent Variable 1: Teacher skill (Novice vs. expertteacher) Independent variable 2: Presentation (Lecture vs. multimedia) Student attribute variable: Aptitude Dependent variable: Achievement What are the main effects of teacher skill on student achievement? What are the main effects of presentation format on student achievement? What are the interactive effects of skill and presentation on student achievement? Do these effects differ by the aptitude level (e.g., high, average, low) of students?

  28. FACTORIAL DESIGN Groups: Novice/Lecture Expert/Lecture High Aptitude High Aptitude Novice/Lecture Expert/Lecture Low Aptitude Low Aptitude Novice/Multimedia Expert/Multimedia High Aptitude High Aptitude Novice/Multimedia Expert/Multimedia Low Aptitude Low Aptitude Dependent Variable:Achievement

  29. POTENTIAL RESULTS of a FACTORIAL DESIGN M.E. for M.E. for Interaction btwn I.V # 1? I. V. # 2? I.V. # 1 & # 2? (“Teacher skill”)(“Presentation”) NO NO NO YES NO NO NO YES NO YES YES NO NO NO YES YES NO YES NO YES YES YES YES YES

  30. Design 9: NON-RANDOMIZED CONTROL GROUP, PRETEST-POSTTEST DESIGN Group 1: 011 X 012 Group 2: 021 - 022 (groups not randomly formed)

  31. COUNTERBALANCED DESIGN 10: Experiment 1 Group 1: Treatment A Group 2: Treatment B Replication (Experiment 2) Group 1: Treatment B Group 2: Treatment A

  32. Design 11: ONE-GROUP TIME SERIES DESIGN Pretests Posttests Group 1: O1 O2 O3 X O4 O5 O6

  33. Strengths: (1) Multiple testing provides a check on threats to internal validity: maturation, testing, and regression can be accounted for. Weaknesses: (1) fails to control for internal validity threat of history: perhaps some other, unexplained variable accounts for any observed change in DV. (2) external validity problem: effect of repeated testing. (3) selection-maturation interaction may occur if atypical groups are selected. (4) statistical analysis/interpretation may be difficult.

  34. Design 12: CONTROL GROUP TIME SERIES DESIGN Pretests Posttests Group 1: O1 O2 O3 X O4 O5 O6 Group 2: O1 O2 O3 - O4 O5 O6

  35. Miller, Miller, & Rosen • Reciprocal teaching of reading comprehension: • summarizing a paragraph; • asking a good question; • clarifying the hard parts of text; • predicting what comes next

  36. Experimental design: • Students randomly assigned to • modified RT • control group I • control group II • Research Design • Experimental R 0 X O • Control 1 R 0 - 0 • Control 2 R 0 - -

  37. Can you summarize the results? • What were the effects of modified reciprocal teaching? • Did MRT improve reading comprehension, compared to controls? Did it increase writing skills, compared to controls? • What were other, non-hypothesized effects of MRT?

  38. Critique • Why not train classroom teachers to conduct reciprocal teaching? • Teacher bias affects grading of assignments. • Little explanation of the reading comprehension strategies. • Any practical difference among the groups? • Why focus on student conduct?

  39. Gettinger study: Effects of error correction on third graders’ spelling. • Does 3rd graders’ spelling improve when instruction provides corrective feedback and sufficient time for mastery learning? • Can a method successfully utilized under artificial (laboratory) conditions be successful in a classroom learning situation?

  40. Hypothesis: “...students who received the error-correction intervention would evidence higher spelling accuracy than would students who received no additional modification beyond their standard spelling practice, or whose practice was optimized by dividing their words into smaller, daily chunks...”

  41. Random assignment of intact classes to three experimental conditions: (A) Standard condition (B) Reduced-number of words (C) Error-correction and practice

  42. Dependent Variables: (1) Spelling accuracy (weekly tests). (2) Teacher ratings: spelling test performance and spelling accuracy when writing. Experimental group only: Number of trials-to-criterion (TTC) and orthographic ratings of spelling attempts.

  43. Procedures of the study: Baseline (6 weeks) Treatment (6 weeks) Generalization (6 weeks)

  44. Results • EC group > weekly spelling test scores intervention and generalization phases than SC or R# groups. • Similar results for dictated stories spelling. • EC group > teacher ratings during intervention phase. • Number of learning trials decreased. • Orthographic ratings improved over time.

  45. Strengths good experimental design valid measures of spelling achievement sufficient treatment duration incorporated into regular classroom Weaknesses sample not fully representative of 3rd grades’ students Critique

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