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Research Methods in Unit 3 Psychology

Research Methods in Unit 3 Psychology. A quick introduction. Hypothesis is ………. Testable prediction of the relationship between 2 or more events or characteristics. It is usually based on knowledge of other research findings or theories on the topic being studied. Written statement

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Research Methods in Unit 3 Psychology

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  1. Research Methods in Unit 3 Psychology

  2. A quick introduction

  3. Hypothesis is ……….. • Testable prediction of the relationship between 2 or more events or characteristics. • It is usually based on knowledge of other research findings or theories on the topic being studied. • Written statement • Expressed clearly and precisely

  4. Example Hypothesis “This study is designed to assess the hypothesis that students with better study habits will suffer less test anxiety.” Unless your study is exploratory in nature, your hypothesis should always explain what you expect to happen during the course of your experiment or research.

  5. SO......... In other words, the researcher is hypothesizing that the independent variable causes the dependent variable and is doing her experiment to test this hypothesis.

  6. How do we start to research? The type of research method made by the researcher depends on which method is most appropriate for the specific topic of research interest.

  7. 2 types Experimental Research: IV DV Extraneous Variables Experimental Control groups Sampling procedures Can be manipulated and controlled Descriptive research: Case studies Observational studies Study aspects of behaviour and mental process as they occur

  8. WE CAN RESEARCH SOMETHING BY USING EXPERIMENTAL RESEARCH WHERE.......

  9. Experimental Research • Experiment is used to test whether one variable or ‘thing’ influences a change or causes a change in another variable • It is a collection of research designs which use manipulation and controlled testing to understand causal processes. Generally, one or more variables are manipulated to determine their effect on a dependent variable.

  10. Wait a minute...... WHAT do “conceptualization” and “operationalization” mean??? And WHAT is a “variable”?

  11. Good question!!! Here are some definitions!!! A variable is the “thing” that you’re interested in studying—like depression or gender or levels of emotionality (how emotional someone is) or different types of food!

  12. Variables Independent Variables Dependent Variables Outcome Depends on independent variable “effect” or end result • (I) vary • Varied or changed in some way or form • “cause” Extraneous variables any other variable that could cause a change in experiment

  13. Let’s try a question to make sure you understand these terms… • Dr. Brain wrote the following question on the board: “Why do some students succeed academically (whereas others fail)? “ In this question, are we approaching academic success as an independent variable or a dependent variable? • In this question, academic success is a DEPENDENT variable because we’re trying to figure out what causes it. • If we believe that having clear goals causes some people to succeed in school whereas others fail, then we are interested in studying the presence or absence of clear goals as an independent variable, a possible CAUSE of academic success or failure.

  14. To “operationalize” a variable is to decide how you will measure it • For example, if the variable you’re interested in is depression: • Will you ask people to rate themselves, and if so, on what sort of a scale? • Alternatively, will you measure depression by facial expression? By some behavior that you observe? In some other way?

  15. To “operationalize” a variable is to decide how you will measure it • If the variable you’re studying is intelligence & you don’t think GAT test is a good measure of intelligence, what measure WILL you use? • Asking these sorts of questions is completing the process of “operationalizing” your variables. • By the way, conceptualization & operationalization are necessary for ALL the different research methods (not just for naturalistic observation)

  16. The construction of actual, concrete measurement techniques; the creation of “operations” that will result in the desired measurements. The development or choice of specific research procedures (operations) that will result in representing the concepts of interest.

  17. Operationalising What does it mean? • Strictly define the variables • We are trying to make something more measureable • We operationalise hypothesis, IV and DV’s There are THREE steps in operationalization: a. Formulating Concepts into Variables b. Formulating Variables into Measures c. Formulate Instruments for the Measures Each of these steps is considered below

  18. Operationalization also sets down exact definitions of each variable, increasing the quality of the results, and improving the robustness of the design.

  19. Try this example Hypothesis Children grow more quickly if they eat vegetables.

  20. What is wrong with this .... This question is a little bit fuzzy What does it mean children ? Grow which way? What does more quickly mean? 1 yr 10 yrs etc

  21. Practicing Operationalisation When you need to operationalise something you need to include the following: the variables b. the identity criteria for each variable. c. a measurement procedure for each variable d. what would count as evidence for or against the hypothesis.

  22. If we operationalise this hypothesis... Hypothesis Children grow more quickly if they eat vegetables.” Identify what age group What vegetables The amount of time the test will be taken over Does the sample of kids reflect the wider community Already we have operationalised this hypothesis

  23. How does controlled experimental design eliminate or deal with extraneous variables? 1) First, it eliminates as many extraneous variables as it can by standardizing the experimental procedure so that all groups experience the same thing

  24. For example: • as we have discussed, placebo (such as “sugar pills”) are sometimes used to make sure the control & experimental group do not differ on the extraneous variable of “believing the treatment will work.” Placebos make sure that ALL groups have this same belief. Remember the goal is to make EVERYTHING the same between the experimental and the control group EXCEPT for the independent variable?

  25. Some more terms…. • There are some subjects who are administered the independent variable (in this case, study groups) and some subjects who aren’t • The group of subjects to whom the independent variable is administered is called the experimental group. • The other group is called the control group. • Thecontrol groupand the experimental group should be the same in all other ways.The only way in which they should differ is on the independent variable.

  26. experimental group. The group in an experiment who is exposed to the independent variable • control group. The group in experiment not exposed to the independent variable, used for comparison with the experimental group.

  27. In the controlled experimental design, the researcher controls the administration of the independent variable and then measures the dependent variable

  28. The choice of the sample is critical…. • The sample must be large enough in order for the researcher to be able to generalize to the population. (I shouldn’t interview two students and then say what all Bluffton students think!) • The sample also needs to be representative of the population, so for example, I shouldn’t just talk to seniors…. or to men… or to white students… or to religious students, etc. If I am interested in saying something about ALL Bluffton students, I need to talk to a sample of people that adequately represents all of the differences in the population.

  29. M and M activities

  30. Selecting Participants Represenatative Sample • Random sampling every member of population of research interest has equal chance of being selected • Stratified sampling dividing the population to be sampled into different sub groups or strata then selecting a sample from each group

  31. Different subgroups Random stratified sampling a random selection from each sub group, get accurate lists of people within each stratum Random allocation also random assignment participants selected for the experiment are just as likely to be in the experimental group as the control group

  32. DATA Qualitative - data involving qualities or characteristics of a participants experience of what is being experienced Quantitative – in development a change in the quantity or amount of thinking, behaving or feeling. Numerical value

  33. WHAT is “correlational data”????? • A correlation is a relationship between two variables. When two variables are correlated, that means they are related to each other in one of two ways: • Positive correlation: as one of the variables increases, so does the other • Negative correlation: as one of the variables increases, the other decreases

  34. Correlational Data • Two variables can be positively or negatively correlated or not correlated at all (unrelated) • Note that negative correlations indicate that there IS a relationship between the variables, the relationship is just an inverse one. Just shows as x goes up Y goes down

  35. Correlation does NOT mean causation • Correlation tells us nothing about the direction of the relationship between two variables or whether either of them really causes the other

  36. Researchers use statistics to analyse and describe the data that they collect, they also use it to help them interpret the results obtained from the research

  37. STATISTICS

  38. Inferential and Descriptive statistics • Descriptive- used for analysing, organising, summarising and describing the results • Inferential- used for interpreting and giving extra meaning to the results

  39. Descriptive • Mean ( average) – could be used to describe the average performance of a particular thing • MEASURE OF CENTRAL TENDENCY- central or average value in a set of scores • Median- middle score of mid point • Mode- most frequently occurring score

  40. Who cares, I here you say…. You would use Mean, Median and Mode to indicate trends in the population IF you need to comment on some results and need a single figure you could calculate the mean, median and or the mode and discuss

  41. Inferential These statistics allow researches to draw conclusions based on evidence Allow the researcher to make conclusions and generalisations

  42. Types of Inferential Statistics • Statistical significance – is there a real difference between the control group and the experimental group, that is not due to chance

  43. Interpreting P-Values • Looking at the probability of something occurring • Reliability • Internal consistency • Construct and external • The lower the p-value the less probable of it occurring • The higher the p-value the more probable of it occurring

  44. P-VALUE – yay !!!! • To test to see if results are by chance or not • 5 or fewer times (<5) in 100 repetitions • P<0.06 would indicate that there was a 6% chance ( 6 or less in100)that the difference in the scores was due to chance alone

  45. STAND UP AND CLAP YOUR HANDS !!!

  46. Some more examples • P<0.01 (less than or equal to 1 in 100) • P<0.001 (less than or equal to 1 in 1000

  47. Order effect • The effect of administering treatments in a specific order. • Are you the first or second or last participant can that impact on the results

  48. Placebo effect • The phenomenon in research where the subject’s beliefs about the outcome can significantly effect the outcome without any other intervention.

  49. Single and double blind procedure • Double blind procedure is a method of enhancing internal validity in an experiment. In double blind procedure, neither the researcher nor the subjects are made aware of which group is the experimental group and which the control group. 2 groups do not know what is going on(double)

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