lecture 10 - experiments Flashcards
example: prospect theory
= famous experiment (random assignment) with participants having to respond to a scenario
scenario = outbreak of ‘‘Asian disease’’, 600 deaths expected
two programs/options to contain the disease:
two groups got different options, different framing (positive vs negative)
A. 200 will be saved -> 72%
B. 1/3 probability that 600 will be saved and 2/3 probability that no one will be saved -> 28%
C. 400 will die ->22%
D. 1/3 probability that no one will die and 2/3 probability that 600 will die -> 78%
conclusions: gains -> risk aversion (people want to keep what they have, rather than risk loosing everything), if you start from a position of loss than people are more willing to take risks
*Kahneman & Tversky
(experiments = good or bad?)
in principle seen as ideal: random assignment -> conclusively establishing causal tests
- Lijphart: most nearly ideal method for scientific explanation, but unfortunately it can only rarely be used in polsci because of practical and ethical impediments
- in general more and more experiments used (also because of survey experiments (found in most surveys)) in recent years
experiments: key components and types
- randomized intervention/treatment/manipulation (different conditions are assigned), there are at least two groups
control/treatment groups - assignment: random vs matching vs as-if/quasi
sometimes shortcuts in assignment to make sure that diff groups are equivalent (that they e.g. have same age variations)
quasi-randomization = when randomization is not possible (e.g. article by Mintz, Redd and Vedlitz, they can’t randomly assign as they have two distinct groups) = the exception
design:
- between-participants: analyse/compare treatment and control group
- within-participants: analysis/comparison between participants in the same group
*participant is both control and treatment in the same time (reading)
different types/designs
- laboratory: artificial, standardized, full control
- field: embedded in the real world, less control
e.g. one area with marketing/election campaign, one without
*people would not know they were part of an experiment - natural ‘‘experiment’’: no random assignment => strictly speaking not an experiment
- survey: embedded in population survey
example field experiment + natural experiment
field experiment = real world with manipulation/random assignment
Leonard Wantchekon: party led him randomly assign different types of campaign messages
success was measured with electoral outcomes
- public policy message = general policy goals (negative effect in most cases)
- patronage based clientelist message = promise to create jobs (positive effect)
- control group
natural ‘‘experiment’‘
COVID: ‘treatment’ effect of face masks in German city of Jena (most other cities did not oblige people to wear face masks)
- masks work
- cities without mask regulation functioned as control
= less conclusive: observed effect may be due to other cause/elements
randomization - sampling vs assignment
+ how do you do random assignment?
random sampling = for external validity
random assignment = for internal validity (ruling out alternative explanations)
how to random assign?
- simple tools: coin, die
- random number tables (choose random starting points and then start reading/taking)
- software: random number generator
! keep in mind: computers produce random nrs, but algorithm, need to change the starting point each time to get truly random nrs
2 basic experimental designs
posttest only = practical (e.g. if you want to see how people react to X)
RA treatment and control group
(RA -> M(x) Y1 and Y2)
- outcome Y is measured at the end, if the manipulation has an effect then Y1 and 2 are different
pretest-posttest = e.g. when you want to see how attitudes change
- outcome is measured at the beginning (before M(x)) and at the end (after M(x))
- this way you can see if Y changes within the group(s) itself
solomon four-group design
RA:
- treatment group 1
- control group 1
- treatment group 2
- control group 2
treatment and control group 1 get pretest-posttest
treatment and control group 2 get posttest only
why?
- pretest can point participants to the elements to what the researchers are looking for
- solomon four-group design can rule this out (by comparing group 1 and 2)
!not used often: more participants + time necessary
delayed effects design
pretest-posttest in four groups (2 control, 2 treatment)
measure the posttest for 1 control group and treatment group 1 earlier than that you do for control group 2 and treatment group 2
effects can change over time: this way you can see the difference between delayed effects and immediate effects (you can see if these occur)
factorial design
2x2 factorial design: more than one causal factor
- want to look at interaction effects between multiple factors
X1, X2 pretest and posttest
- control: Y1 and Y2
- main effect 1: Y3 -> M(X1) -> Y4
- main effect 2: Y5 -> M(X2) -> Y6
- interaction effect: Y7 -> M(X1) and M(X2) -> Y8
aka: you do one control for both
you do 2 separate treatments
and one treatment where both factors are manipulated
validity and ethical issues
validity
- ecological validity: lab experiments are really artificial -> hard to establish theories about real world (how much it matter depends)
- reactivity : people know they are in an experience and behave differently
e.g. placebo effects
e.g. demand characteristics - Single Shot vs Repeated Exposure experiments (e.g frames and counter-frames (positive messages + negative messages)
- WEIRD samples: white educated industrialized rich democratic (most experiments done in populations with WEIRD)
lab experiments: strong in interal validity, not in external validity
survey + field: both
ethics:
- treatment usually requires concealment and/or deception
- field studies: real world effects, debriefing often not possible
!threats to internal and external validity in the article
when are experiments useful
- communication, language and public opinion
priming, framing, persuasion - campaigning: field experiments
- policy making: effectiveness of different policies
- decision making
quantitative process tracing: direct observation of behavior, e.g. Mintz, Redd and Vedlitz
(qualitative process tracing: post hoc reconstruction (history) or participant observation)
example: Mintz, Redd and Vedlitz
= computer-based laboratory experiment
RQ = gnerealizability of student samples in decision-making experiments (counterterrorism): decision-making strategies and decisions
scientific relevance = external validity of research
participants:
- elites = military officers
- public = students
manipulation (at the end see if the manipulations had impact: ask how big was the certainty e.g.)
- certainty that technologies function: high vs low
- framing: whether funding is certain 10% vs 90%
experimental design?
scenario manipulations (certainty and framing) are randomized, but participant pool is quasi-experimental
2x2x2 (between participants) -> 8 groups
factorial design (they look at interaction of factors)
*number of cells accessed maybe ceiling effect?