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Experimental, Quasiexperimental, Single-Case
Research and Internet
based experiments And
Article Critique
Hatice ÇİLSALAR-Yelda SARIKAYA-ERDEM
Experimental Research
Definition: Testing an idea to determine whether it influences an outcome or dependent
variable.
Key Characteristics:


Random Assignment: Process of assigning individuals at random to groups or to different
groups



Control over Extraneous Variables: Controlling influences of selection of participants, the
procedures, the statistics, the design likely to affect the outcome.

Pretest-posttest, covariates, Matching Participants, Homogenous samples, Blocking variables


Manipulation of Treatment Conditions: Steps-Identify a treatment variable and its levels or
conditions, manipulate treatment conditions



Outcome measures: Dependent variable that is the presumed effect of the treatment variable.



Group comparisons: Obtaining scores for individuals or groups on the dependent variable
and comparing the means and variance between the groups.



Threats to validity: History(time passes), Maturation, Selection, Mortality, Interaction,
Testing, et.
Cresswel, (2014); Frankel, Wallen & Hyun, (2012)
Experimental Research
A ‘true’ experiment includes several key features:

one or more control groups
one or more experimental groups
random allocation to control and experimental groups

pretest of the groups to ensure parity
post-test of the groups to see the effects on the dependent
variable
one or more interventions to the experimental group(s)
isolation, control and manipulation of independent
variables
Cohen, Mannion, & Morrison (2007)
Experimental Research

Cresswel, (2014); page:334
Experimental Research
How to Design an Experimental Research
Define your research objectives
Formulate hypotheses: H0 and H1
Set up your research design
Select instruments
Select appropriate levels at which to test your hypotheses
Assign persons to groups randomly
Carry out the experiment meticulously
Analyze the data
Muijs(2004); page:334
Experimental Research
True Experimental Designs: 7
Pretest-Posttest Controlled Experimental Group Design
Experiment
group

R(Random O1(Observation) X (treatment)
Assignment)

Control group R

O3

O2
O4

Two control Groups and One Experimental Group
Pretest-Posttest Design
Experiment

R

O1

Control

R

O3

Control

R

X

O2
O4

X

O5

The Posttest Control-Experiment Group Design
Experiment

R

Control

R

X

O1
O2

Cohen, Mannion, & Morrison (2007)
Experimental Research
The Posttest Two Experimental Group Designs
Experiment

R

X1

O1

Experiment

R

X2

O2

The Pretest-Posttest Two Experiment Groups Design
Experiment R

O1

X1

O2

Experiment R

O3

X2

O4

Matched Pairs Design
Factorial Design
Low

Receive Health Lecture

Smoking Number

Medium

Receive Health Lecture

Smoking Number

High

Receive Health Lecture

Smoking Number

Low

Receive Standard Lecture

Smoking Number

Medium

Receive Standard Lecture

Smoking Number

High

Receive Standard Lecture

Smoking Number

Cohen, Mannion, & Morrison (2007)
Experimental Research
Parametric Design
Poor Readers

Token

Number of Correct Word

Average Readers

Token

Number of Correct Word

Good Readers

Token

Number of Correct Word

Outstanding Readers Token

Number of Correct Word

Control

Number of Correct Word

Repeated Measures Design
G1

O

X1

O

X2

O

X3

O

G2

O

X2

O

X3

O

X1

O

G3

O

X3

O

X1

O

X2

O

G4

O

X2

O

X1

O

X3

O

G5

O

X3

O

X2

O

X1

O

Cohen, Mannion, & Morrison (2007)
Experimental Research
Poor Experimental Designs:

One-shot Case Study

X

O

One-Group Pretest-Posttest Design

O

The Static-Group(Non-Equivalent)

X

X

O
O

Comparison Design:
The Static-Group(Non-Equivalent)

Pretest-Posttest Design:

O

O
O

X

O
O

Frankel, Wallen, & Hyun, 2012
Experimental Research

True Experimental Designs:
The Randomized Posttest Only Control Group Design
Treatment

R

Control

X

O

R

O

The Randomized Pretest-Posttest Only Control Group Design
Treatment

R

O

Control

R

X

O

O

O

The Randomized Solomon Four Group Design
Treatment

R

O

X

O

Control

R

O

C

O

Treatment

R

X

O

Control

R

C

O

Random Assignment with Matching

Frankel, Wallen, & Hyun, 2012
Experimental Research
Single Group Designs

The One-shot Case Study
One group pretest-posttest design
Time series designs

Control Group Design with Random Assignment
Pretest-posttest control group design
Posttest only control group design

One-variable multiple condition design
Gall, Gall, &Borg, 2003
Experimental Research
Between Group Designs

True experimental design: (Randomized)Pretest-Posttest design or
Posttest only design
Quasi experimental design: (Un-randomized)Pretest-Posttest design
or Posttest only design
Factorial design
Within Group/Individual Designs
Repeated measures design: Interrupted(One experiment) or
Equivalent (More than one experiment)

Single subject designs: Multiple baseline design or Alternating
treatments
Creswell (2014)
Experimental Research
Strengths:

Causality: The best type for testing hypotheses about
cause-and-effect relationships
Manipulation of independent variable
Help to see whether the treatment made difference.
Go beyond description and prediction, beyond the
identification of relationship-what causes them.

Frankel, Wallen & Hyun, (2012)
Experimental Research
Limitations: Difficult to

Control some variables
Address all threats
Ethical issues: Control group may be disadvantaged by
not receiving treatment or vice versa.
Quasi-experimental
“quasi” means, in essence, “sort of.” = quasiexperiment is a “sort of” experiment.
Definition: A quasi-experiment is a study that includes
a manipulated independent variable but lacks
important controls (e.g., random assignment), or a
study that lacks a manipulated independent variable
but includes important controls. Includes nonrandom
assignment-matching.
More threat to internal validity: maturation selection,
mortality, interaction of selection, history, testing,
instrumentation, regression- Cresswell (2014)
Quasi-Experimental Research
How to Design an Experimental Research
Define your research objectives
Formulate hypotheses: H0 and H1
Set up your research design
Select instruments
Select appropriate levels at which to test your hypotheses
Assign persons to groups randomly (only experimental
design)
Carry out the experiment meticulously
Analyze the data

Muijs(2004); page:334
Quasi-experimental
Types:

A Pre-experimental Design: The one group pretest-posttest
O1 X O2
A Pre-experimental Design: The one group posttest only design
X O1

A Pre-experimental Design: The posttests only non-equivalent
groups design
A Quasi-experimental design: The pretest-posttest nonequivalent groups design
Experimental
O1 X O2
Comparison

O3

O4

The One Group Time Series
Quasi-experimental

Cresswell (2014)
Single-Case Research- Definition
Key Features:
Single - one subject
Standard conditions
Repeated
measurement
Effectiveness or
productivity
Three components:
(a) repeated measurement,
(b) baseline phase, and (c)
treatment phase.
alternative to group
designs.

Group designs compare the
performance of one sample
of individuals (e.g., people
who don’t smoke, or rabbits
who don’t have smoke
blown into their cages) with
another (e.g., people who
do smoke, or rabbits who do
have smoke blown into their
cages).
Single-subject designs
compare the performance of
an individual before and
after a specified
intervention.
Alberto& Troutman, 1995;Best& Khan, 1998,Tekin (2002),
A-B Design
Regardless of the research design, the line graphs used to illustrate the data
contain a set of common elements.
Dependent measure

Condition identifications

Baseline

8

Praise

7

Frequency of disruptions

Independent variable

Condition change line

6
5
4
3
Ordinate

Data points
Data path

2
Abscissa

1
0
0

1

2 3 4
Unit of time

5

6

7 8
Day

9 10 11 12 13 14 15 16
Measure of time
Single-Case Research- Types
A-B-A-B Designs: Reversibility-last experimental control or
no functional relationships

Number of
fulfilled
assignments
and without
token(A) and
treatment
with
tokens(B).

(Choen, Mannion, & Morrison, 2007; Kennedy, 2005)
Single-Case Research- Types
B-A-B Designs: an intervention already placed

Sometimes an individual’s behavior is so severe that
the researcher cannot wait to establish a baseline
Or an intervention already placed so researcher must
begin with an intervention. In this case, a B-A-B design
is used. The intervention is followed by a baseline
followed by the intervention.
Single-Case Research- Types
B
A
B
Praise

8

Baseline

Praise

Frequency of disruptions

7
6
5
4
3
2
1
0
0

1

2

3

4

5

6

7 8
Day

9

10 11 12 13 14 15 16
Single-Case Research- Types
A-B-C Designs: additional opportunity to analyze how
various interventions influence behaviors
18
16

Earns Candy

Number Correct

14
12
10

Earns Money

8
6
4
2
0
1

2

3

4

5

6

7

8

9

10

11

12

13

14

15

16

Sessions

Kennedy, (2005)

17
Single-Case Research
A-B-C Designs:

Instructor feedback

Peer feedback
Single-Case Research
Strengths
Researcher can establish a cause-and-effect
relationship between treatment and behavior using
only a single participant
See the effect of a treatment on a single participant
Flexibility – development of the design depends on
participant’s responses
By using comparative designs, compare and
contrast the results of the studies easily
Single-Case Research
Limitations
Problem with generalizations since designs use only
one participant
Multiple observations can affect participant’s
responses
Absence of statistical controls and reliance on
visual inspection of the data
Internet based experiments
Three data collection method through Internet;

Nonreactive data collection
Online Surveys
Web based experiments (Reips,2002)
Internet based experiments
Why?

Speed,
Low cost,
Experimenting around a
clock,
A high degree of automation
of the experiment, a wider

sample.

Large number of
participants
High statistical power

Protection of anonymity
Huge representativeness

There is little evidence in the literature that Internetbased surveys achieve higher response rates, as a general
rule, than conventional surveys
Reips (2002)
Internet based experiments
Form of emails to emails-plus-attachments of the questionnaire itself, to
emails directing potential respondents to a web site, or simply to web sites.
Although email surveys tend to attract greater response than web-based
surveys, web-based surveys have the potential to reach greater numbers of
participants
Page layout options should be simple not advanced

Avoid open-ended questions not to distrupt participants attention
Confirming of each item can be difficult for those who have less developed
computer skills.
Keep the introduction to the questionnaire short (no more than one
screen), informative (e.g. of how to move on) and avoiding giving a long list
of instructions.
Keep the response categories close to the question
Cohen,
Internet based experiments
Advantages:
Ease access to a large number of
demographically and culturally diverse
participants
Specific participant population
Better generalizability of findings to
population, more settings or situations

Avoidance of time constrains,
organizational problems: scheduling
difficulties, as thousands of participants
may participate simultaneously

Reduction of experimenter effects,
demand characteristics
Cost saving of personnel hours,
equipment, administration
Greater openness of the research
process
Access to the number of
nonparticipants
Ease access for participants
Public control of ethical issues

Highly voluntary participation
High participation: High statistical
power
Detectability of motivational

Reips (2002)
Internet based experiments
Disadvantages:

Possible multiple submission:
warning about multiple
submission, blocking using
same IP address, or handing
out passwords-one time
password, participant pool or
online panel, control by
collecting personal
identification, controlling
internal consistency
Self-selection: can be
controlled by using the
multiple site entry technique.

Dropout: Promising
immediate feedback, giving
financial incentives, by
personalization
Misunderstood instructions:
Pretest of materials and
providing the participants with
the opportunity for giving
feedback
The comparative basis is
relatively low.

External validity is limited by
their dependence on computer
Reips, (2002)
Internet based experiments
Dillman et al. (1999) three ways to overcome problem of
differential expertise in computer usage:
having the instructions for how to complete the item
next to the item itself at the start of the questionnaire
asking the respondents at the beginning about their
level of computer expertise, and, if they are more
expert, offer omitting instruction part and, if they are
less experienced, directing them to instructions
having a ‘floating window’ that accompanies each
screen and which can be maximized for further
instructions.
Cohen
Internet based experiments

Reips, (2002)
Internet based experiments
16 Standards:

5. Consider multiple site entries

1. Consider to use web-based

6. Run survey both online and

software tool to create survey
2. Pretest the instrument for

clarity of instructions
availability on different
platforms
3. Make a decision about

offline for comparision
7. If dropout is to be avoided use

the warm-up technique
8. Use dropout to determine

whether there is motivational
confounding

advantages out-weigh the
disadvantages
4. Check your web survey for

configuration errors
Reips, (2002)
Internet based experiments

16 Standards:

13. Perform consistency checks

9. Use high-hurdle technique,

14. Keep logs

incentive information

10. Ask filter questions at the

15. Report and analyze drop out

rates

beginning of the experiment to
encourage serious and complete 16. The experimental materials
should be kept available on the
responses.
Internet, as they will often give
11. Check for obvious naming of
a much better impression of
files, conditions, passwords
what was done than any verbal
description could convey.
12. Use , if needed to avoid
multiplication, participant tools
or password techniques
Reips, (2002)
References
Cohen, L., Manion, L., & Morrison, K. (2013). Research methods in education. Routledge.
Creswell, J. W. (2014). Educational research: Planning, conducting and evaluating, quantitative
and qualitative. Pearson International Edition.
Fraenkel, J. R., Wallen, N. E., & Hyun, H. H. (2012). How to design and evaluate research in
education. McGraw-Hill International Edition.
Gall, M. D., Gall J. P. & Borg, W. R. (2003). Educational research: An introduction. Pearson.

Kennedy, C. H. (2005). Single-case designs for educational research. Financial Times/Prentice
Hall.
Reips U. D. (2002). Theory and techniques of web based experimenting. In B. Batinic,
U.D. Reips, & M. Bosnjak (Eds.) Online Social Sciences. Seattle Hogrefe & Huber.
Reips, U. D. (2002). Standards for Internet-based experimenting. Experimental Psychology
(formerly Zeitschrift für Experimentelle Psychologie), 49(4), 243-256.
Tekin, E. (2000). Karşılaştırmalı tek denekli araştırma modelleri. Özel Eğitim Dergisi,
2(4), 1-12.
Experimental, Quasi experimental, Single-Case, and Internet-based Researches in education

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Experimental, Quasi experimental, Single-Case, and Internet-based Researches in education

  • 1. Experimental, Quasiexperimental, Single-Case Research and Internet based experiments And Article Critique Hatice ÇİLSALAR-Yelda SARIKAYA-ERDEM
  • 2. Experimental Research Definition: Testing an idea to determine whether it influences an outcome or dependent variable. Key Characteristics:  Random Assignment: Process of assigning individuals at random to groups or to different groups  Control over Extraneous Variables: Controlling influences of selection of participants, the procedures, the statistics, the design likely to affect the outcome. Pretest-posttest, covariates, Matching Participants, Homogenous samples, Blocking variables  Manipulation of Treatment Conditions: Steps-Identify a treatment variable and its levels or conditions, manipulate treatment conditions  Outcome measures: Dependent variable that is the presumed effect of the treatment variable.  Group comparisons: Obtaining scores for individuals or groups on the dependent variable and comparing the means and variance between the groups.  Threats to validity: History(time passes), Maturation, Selection, Mortality, Interaction, Testing, et. Cresswel, (2014); Frankel, Wallen & Hyun, (2012)
  • 3. Experimental Research A ‘true’ experiment includes several key features: one or more control groups one or more experimental groups random allocation to control and experimental groups pretest of the groups to ensure parity post-test of the groups to see the effects on the dependent variable one or more interventions to the experimental group(s) isolation, control and manipulation of independent variables Cohen, Mannion, & Morrison (2007)
  • 5. Experimental Research How to Design an Experimental Research Define your research objectives Formulate hypotheses: H0 and H1 Set up your research design Select instruments Select appropriate levels at which to test your hypotheses Assign persons to groups randomly Carry out the experiment meticulously Analyze the data Muijs(2004); page:334
  • 6. Experimental Research True Experimental Designs: 7 Pretest-Posttest Controlled Experimental Group Design Experiment group R(Random O1(Observation) X (treatment) Assignment) Control group R O3 O2 O4 Two control Groups and One Experimental Group Pretest-Posttest Design Experiment R O1 Control R O3 Control R X O2 O4 X O5 The Posttest Control-Experiment Group Design Experiment R Control R X O1 O2 Cohen, Mannion, & Morrison (2007)
  • 7. Experimental Research The Posttest Two Experimental Group Designs Experiment R X1 O1 Experiment R X2 O2 The Pretest-Posttest Two Experiment Groups Design Experiment R O1 X1 O2 Experiment R O3 X2 O4 Matched Pairs Design Factorial Design Low Receive Health Lecture Smoking Number Medium Receive Health Lecture Smoking Number High Receive Health Lecture Smoking Number Low Receive Standard Lecture Smoking Number Medium Receive Standard Lecture Smoking Number High Receive Standard Lecture Smoking Number Cohen, Mannion, & Morrison (2007)
  • 8. Experimental Research Parametric Design Poor Readers Token Number of Correct Word Average Readers Token Number of Correct Word Good Readers Token Number of Correct Word Outstanding Readers Token Number of Correct Word Control Number of Correct Word Repeated Measures Design G1 O X1 O X2 O X3 O G2 O X2 O X3 O X1 O G3 O X3 O X1 O X2 O G4 O X2 O X1 O X3 O G5 O X3 O X2 O X1 O Cohen, Mannion, & Morrison (2007)
  • 9. Experimental Research Poor Experimental Designs: One-shot Case Study X O One-Group Pretest-Posttest Design O The Static-Group(Non-Equivalent) X X O O Comparison Design: The Static-Group(Non-Equivalent) Pretest-Posttest Design: O O O X O O Frankel, Wallen, & Hyun, 2012
  • 10. Experimental Research True Experimental Designs: The Randomized Posttest Only Control Group Design Treatment R Control X O R O The Randomized Pretest-Posttest Only Control Group Design Treatment R O Control R X O O O The Randomized Solomon Four Group Design Treatment R O X O Control R O C O Treatment R X O Control R C O Random Assignment with Matching Frankel, Wallen, & Hyun, 2012
  • 11. Experimental Research Single Group Designs The One-shot Case Study One group pretest-posttest design Time series designs Control Group Design with Random Assignment Pretest-posttest control group design Posttest only control group design One-variable multiple condition design Gall, Gall, &Borg, 2003
  • 12. Experimental Research Between Group Designs True experimental design: (Randomized)Pretest-Posttest design or Posttest only design Quasi experimental design: (Un-randomized)Pretest-Posttest design or Posttest only design Factorial design Within Group/Individual Designs Repeated measures design: Interrupted(One experiment) or Equivalent (More than one experiment) Single subject designs: Multiple baseline design or Alternating treatments Creswell (2014)
  • 13. Experimental Research Strengths: Causality: The best type for testing hypotheses about cause-and-effect relationships Manipulation of independent variable Help to see whether the treatment made difference. Go beyond description and prediction, beyond the identification of relationship-what causes them. Frankel, Wallen & Hyun, (2012)
  • 14. Experimental Research Limitations: Difficult to Control some variables Address all threats Ethical issues: Control group may be disadvantaged by not receiving treatment or vice versa.
  • 15. Quasi-experimental “quasi” means, in essence, “sort of.” = quasiexperiment is a “sort of” experiment. Definition: A quasi-experiment is a study that includes a manipulated independent variable but lacks important controls (e.g., random assignment), or a study that lacks a manipulated independent variable but includes important controls. Includes nonrandom assignment-matching. More threat to internal validity: maturation selection, mortality, interaction of selection, history, testing, instrumentation, regression- Cresswell (2014)
  • 16. Quasi-Experimental Research How to Design an Experimental Research Define your research objectives Formulate hypotheses: H0 and H1 Set up your research design Select instruments Select appropriate levels at which to test your hypotheses Assign persons to groups randomly (only experimental design) Carry out the experiment meticulously Analyze the data Muijs(2004); page:334
  • 17. Quasi-experimental Types: A Pre-experimental Design: The one group pretest-posttest O1 X O2 A Pre-experimental Design: The one group posttest only design X O1 A Pre-experimental Design: The posttests only non-equivalent groups design A Quasi-experimental design: The pretest-posttest nonequivalent groups design Experimental O1 X O2 Comparison O3 O4 The One Group Time Series
  • 19. Single-Case Research- Definition Key Features: Single - one subject Standard conditions Repeated measurement Effectiveness or productivity Three components: (a) repeated measurement, (b) baseline phase, and (c) treatment phase. alternative to group designs. Group designs compare the performance of one sample of individuals (e.g., people who don’t smoke, or rabbits who don’t have smoke blown into their cages) with another (e.g., people who do smoke, or rabbits who do have smoke blown into their cages). Single-subject designs compare the performance of an individual before and after a specified intervention. Alberto& Troutman, 1995;Best& Khan, 1998,Tekin (2002),
  • 20. A-B Design Regardless of the research design, the line graphs used to illustrate the data contain a set of common elements. Dependent measure Condition identifications Baseline 8 Praise 7 Frequency of disruptions Independent variable Condition change line 6 5 4 3 Ordinate Data points Data path 2 Abscissa 1 0 0 1 2 3 4 Unit of time 5 6 7 8 Day 9 10 11 12 13 14 15 16 Measure of time
  • 21. Single-Case Research- Types A-B-A-B Designs: Reversibility-last experimental control or no functional relationships Number of fulfilled assignments and without token(A) and treatment with tokens(B). (Choen, Mannion, & Morrison, 2007; Kennedy, 2005)
  • 22. Single-Case Research- Types B-A-B Designs: an intervention already placed Sometimes an individual’s behavior is so severe that the researcher cannot wait to establish a baseline Or an intervention already placed so researcher must begin with an intervention. In this case, a B-A-B design is used. The intervention is followed by a baseline followed by the intervention.
  • 23. Single-Case Research- Types B A B Praise 8 Baseline Praise Frequency of disruptions 7 6 5 4 3 2 1 0 0 1 2 3 4 5 6 7 8 Day 9 10 11 12 13 14 15 16
  • 24. Single-Case Research- Types A-B-C Designs: additional opportunity to analyze how various interventions influence behaviors 18 16 Earns Candy Number Correct 14 12 10 Earns Money 8 6 4 2 0 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 Sessions Kennedy, (2005) 17
  • 26. Single-Case Research Strengths Researcher can establish a cause-and-effect relationship between treatment and behavior using only a single participant See the effect of a treatment on a single participant Flexibility – development of the design depends on participant’s responses By using comparative designs, compare and contrast the results of the studies easily
  • 27. Single-Case Research Limitations Problem with generalizations since designs use only one participant Multiple observations can affect participant’s responses Absence of statistical controls and reliance on visual inspection of the data
  • 28. Internet based experiments Three data collection method through Internet; Nonreactive data collection Online Surveys Web based experiments (Reips,2002)
  • 29. Internet based experiments Why? Speed, Low cost, Experimenting around a clock, A high degree of automation of the experiment, a wider sample. Large number of participants High statistical power Protection of anonymity Huge representativeness There is little evidence in the literature that Internetbased surveys achieve higher response rates, as a general rule, than conventional surveys Reips (2002)
  • 30. Internet based experiments Form of emails to emails-plus-attachments of the questionnaire itself, to emails directing potential respondents to a web site, or simply to web sites. Although email surveys tend to attract greater response than web-based surveys, web-based surveys have the potential to reach greater numbers of participants Page layout options should be simple not advanced Avoid open-ended questions not to distrupt participants attention Confirming of each item can be difficult for those who have less developed computer skills. Keep the introduction to the questionnaire short (no more than one screen), informative (e.g. of how to move on) and avoiding giving a long list of instructions. Keep the response categories close to the question Cohen,
  • 31. Internet based experiments Advantages: Ease access to a large number of demographically and culturally diverse participants Specific participant population Better generalizability of findings to population, more settings or situations Avoidance of time constrains, organizational problems: scheduling difficulties, as thousands of participants may participate simultaneously Reduction of experimenter effects, demand characteristics Cost saving of personnel hours, equipment, administration Greater openness of the research process Access to the number of nonparticipants Ease access for participants Public control of ethical issues Highly voluntary participation High participation: High statistical power Detectability of motivational Reips (2002)
  • 32. Internet based experiments Disadvantages: Possible multiple submission: warning about multiple submission, blocking using same IP address, or handing out passwords-one time password, participant pool or online panel, control by collecting personal identification, controlling internal consistency Self-selection: can be controlled by using the multiple site entry technique. Dropout: Promising immediate feedback, giving financial incentives, by personalization Misunderstood instructions: Pretest of materials and providing the participants with the opportunity for giving feedback The comparative basis is relatively low. External validity is limited by their dependence on computer Reips, (2002)
  • 33. Internet based experiments Dillman et al. (1999) three ways to overcome problem of differential expertise in computer usage: having the instructions for how to complete the item next to the item itself at the start of the questionnaire asking the respondents at the beginning about their level of computer expertise, and, if they are more expert, offer omitting instruction part and, if they are less experienced, directing them to instructions having a ‘floating window’ that accompanies each screen and which can be maximized for further instructions. Cohen
  • 35. Internet based experiments 16 Standards: 5. Consider multiple site entries 1. Consider to use web-based 6. Run survey both online and software tool to create survey 2. Pretest the instrument for clarity of instructions availability on different platforms 3. Make a decision about offline for comparision 7. If dropout is to be avoided use the warm-up technique 8. Use dropout to determine whether there is motivational confounding advantages out-weigh the disadvantages 4. Check your web survey for configuration errors Reips, (2002)
  • 36. Internet based experiments 16 Standards: 13. Perform consistency checks 9. Use high-hurdle technique, 14. Keep logs incentive information 10. Ask filter questions at the 15. Report and analyze drop out rates beginning of the experiment to encourage serious and complete 16. The experimental materials should be kept available on the responses. Internet, as they will often give 11. Check for obvious naming of a much better impression of files, conditions, passwords what was done than any verbal description could convey. 12. Use , if needed to avoid multiplication, participant tools or password techniques Reips, (2002)
  • 37. References Cohen, L., Manion, L., & Morrison, K. (2013). Research methods in education. Routledge. Creswell, J. W. (2014). Educational research: Planning, conducting and evaluating, quantitative and qualitative. Pearson International Edition. Fraenkel, J. R., Wallen, N. E., & Hyun, H. H. (2012). How to design and evaluate research in education. McGraw-Hill International Edition. Gall, M. D., Gall J. P. & Borg, W. R. (2003). Educational research: An introduction. Pearson. Kennedy, C. H. (2005). Single-case designs for educational research. Financial Times/Prentice Hall. Reips U. D. (2002). Theory and techniques of web based experimenting. In B. Batinic, U.D. Reips, & M. Bosnjak (Eds.) Online Social Sciences. Seattle Hogrefe & Huber. Reips, U. D. (2002). Standards for Internet-based experimenting. Experimental Psychology (formerly Zeitschrift für Experimentelle Psychologie), 49(4), 243-256. Tekin, E. (2000). Karşılaştırmalı tek denekli araştırma modelleri. Özel Eğitim Dergisi, 2(4), 1-12.