Methodology tutorial - quantitative data analysis: Difference between revisions
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Hypothetical example: | Hypothetical example: | ||
* The "red" student who uses the computer for very long hours will | * The "red" student who uses the computer for very long hours will lead to a positive correlation and positive regression rate, whereas the "black" ones alone in the data suggest an inexistent correlation. Mean use of computers does not represent "typical" usage in this case, since the "red" one "pulls the mean upwards". | ||
correlation and positive regression rate, whereas the "black" ones suggest an inexistent | * The "green" student however, will not have a major impact on the result, since the other data are well distributed along the 2 axis. In this second case the "mean" represents a "typical" student. | ||
correlation. Mean use of computers does not represent "typical" usage. | |||
* The "green" student however, will not have a major impact on the result, since the | |||
other data are well distributed along the 2 axis. In this second case the "mean" | |||
represents a "typical" student. | |||
[[Image:non-normal-distribution.png]] | [[Image:non-normal-distribution.png]] | ||
Line 93: | Line 89: | ||
== The principle of statistical analysis == | == The principle of statistical analysis == | ||
The goal of statistical analysis is quite simple: find structure in the data. We can express this principle with two synonymous formulas: | |||
DATA = STRUCTURE + NON-STRUCTURE | DATA = STRUCTURE + NON-STRUCTURE | ||
DATA = EXPLAINED VARIANCE + NOT EXPLAINED VARIANCE | DATA = EXPLAINED VARIANCE + NOT EXPLAINED VARIANCE | ||
Example: Simple regression analysis | Example: Simple regression analysis | ||
* DATA = '' predicted'' regression line + '' residuals'' | * DATA = ''predicted'' regression line + ''residuals'' (unexplained noise) | ||
and minimize residuals | In other words: regression analysis tries to find a line that will maximize prediction and minimize residuals. | ||
[[Image:statistical-structure.png]] | [[Image:statistical-structure.png]] | ||
Line 109: | Line 105: | ||
== Stages of statistical analysis == | == Stages of statistical analysis == | ||
Let's have look of what we mean be statistical analysis and what your typically have to do. We shall come back to most stages throughout this tutorial page: | |||
# Clean your data | # Clean your data | ||
#* Make very sure that your data are correct (e.g. check data transcription) | #* Make very sure that your data are correct (e.g. check data transcription) | ||
#* Make very sure that missing values (e.g. not answered questions in a survey) are | #* Make very sure that missing values (e.g. not answered questions in a survey) are clearly identified as missing data | ||
clearly identified as missing data | |||
# Gain knowledge about your data | # Gain knowledge about your data | ||
#* Make lists of data (for small data sets only !) | #* Make lists of data (for small data sets only !) | ||
#* Produce descriptive statistics, e.g. means, standard-deviations, minima, maxima for | #* Produce descriptive statistics, e.g. means, standard-deviations, minima, maxima for each variable | ||
each variable | |||
#* Produce graphics, e.g. histograms or box plot that show the distribution | #* Produce graphics, e.g. histograms or box plot that show the distribution | ||
# Produce composed scales | # Produce composed scales | ||
Line 129: | Line 122: | ||
#* Structure examples: regression coefficient, tables of means in analysis of variance | #* Structure examples: regression coefficient, tables of means in analysis of variance | ||
# Calculate coefficients that describe the percentage of variance explained | # Calculate coefficients that describe the percentage of variance explained | ||
#* E.g. R'' 2'' in a regression analysis | #* E.g. R''2'' in a regression analysis | ||
# Compute significance level, i.e. find out if you have to right to interpret the relation | # Compute significance level, i.e. find out if you have to right to interpret the relation | ||
#* E.g. Chi-2 for crosstabs, Fisher’s F in regression analysis | #* E.g. Chi-2 for crosstabs, Fisher’s F in regression analysis | ||
Note: With statistical data analysis programs you easily can do several steps in one | |||
operation. | |||
== Data preparation and composite scale making == | == Data preparation and composite scale making == | ||
Before you start any interesting analysis work, you'll have to do some preparation work: | |||
* Find a statistics program | |||
* Import the data and clean them | |||
* Do the documentation (inside the program), .e.g create variable names and labels, response item names and labels, missing values and selection of data type. If you don't get this right you will be very very sorry later on ... | |||
=== Statistics programs and data preparation === | |||
Firstly you should select a good statistics program. | |||
* If available, plan to use a commercial statistics program like SPSS or Statistica. This way you get local support and access to a huge range of analysis methods. | |||
There also exists good freeware (but it's slightly more difficult to use): | |||
* | * [http://portal.unesco.org/ci/en/ev.php-URL_ID=2070&URL_DO=DO_TOPIC&URL_SECTION=201.html IDAMS] Statistical Software, which is sponsored by UNESCO | ||
' | Some freeware can even do things that you can't do with commerical software, e.g. advanced data visualization. But these systems are rather meant for experts | ||
http:// | * [http://www.r-project.org/ R] is `GNU S', a freely available language and environment for statistical computing and graphics which provides a wide variety of statistical and graphical techniques: linear and nonlinear modelling, statistical tests, time series analysis, classification, clustering, etc. | ||
[[image:icon-warning.png]] Do not use programs like Excel. You will not only loose your time, but you can't even do the most simple statistics that are required for any serious work. Of course there are exceptions: | |||
* Use such programs for simple descriptive statistics if you think that you can get away with these or if the main thrust of your thesis does not involve any kind of serious data analysis. | |||
; Data preparation | |||
These are the minimal steps: | |||
* Enter the data | * Enter the data | ||
** Assign a number to each response item (planned when you design the questionnaire) | ** Assign a number to each response item (planned when you design the questionnaire) | ||
** | ** We also suggest to enter a clear code for missing values (no response), e.g. -1, but a blank can also do. | ||
* Make sure that your data set is complete and free of errors | * Make sure that your data set is complete and free of errors | ||
** Some simple descriptive statistics (minima, maxima, missing values, etc.) can help | ** Some simple descriptive statistics (minima, maxima, missing values, etc.) can help to detect really bad coding errors (e.g. ''55'' instead of '5'). | ||
* Learn how to document the data in your statistics program | * Learn how to document the data in your statistics program | ||
** Enter labels for variables, labels for responses items, display instructions (e.g. | ** Enter labels for variables, labels for responses items, display instructions (e.g. | ||
Line 169: | Line 166: | ||
** Define data-types (interval, ordinal or nominal) | ** Define data-types (interval, ordinal or nominal) | ||
=== Composite scales (indicators) === | |||
Composite scales measure one concept, e.g. "the feeling of being there" (social presence). Typically to measure such "soft" variables with questionnaires, several questions are asked. They then can be combined into a single variable. | |||
;Basics | |||
Basics | |||
* Most scales are made by simply adding the values from different items (sometimes called | * Most scales are made by simply adding the values from different items (sometimes called "Lickert scales") | ||
"Lickert scales") | |||
* Eliminate items that have a high number of non responses | * Eliminate items that have a high number of non responses | ||
* Make sure to take into account missing values (non responses) when you add up the | * Make sure to take into account missing values (non responses) when you add up the responses from the different items | ||
responses from the different items | |||
** A real statistics program (SPSS) does that for you | ** A real statistics program (SPSS) does that for you | ||
* Make sure when you create your questionnaire that all items use the same range of | * Make sure when you create your questionnaire that all items use the same range of response item, else you will need to standardize !! | ||
response item, else you will need to standardize !! | |||
Quality of a scale | ;Quality of a scale | ||
* Again: use a published set of items to measure a variable (if available) | * Again: use a published set of items to measure a variable (if available) | ||
** if you do, you can avoid making long justifications ! | ** if you do, you can avoid making long justifications ! | ||
* Sensitivity: questionnaire scores discriminate | * Sensitivity: questionnaire scores discriminate | ||
** e.g. if exploratory research has shown higher degree of presence in one kind of | ** e.g. if exploratory research has shown higher degree of presence in one kind of learning environment than in an other one, results of presence questionnaire should demonstrate this. | ||
learning environment than in an other one, results of presence questionnaire should | |||
demonstrate this. | |||
* Reliability: internal consistency is high | * Reliability: internal consistency is high | ||
** Intercorrelation between items (alpha) is high | ** Intercorrelation between items (alpha) is high | ||
Line 198: | Line 190: | ||
** e.g. results are correlated with similar variables. | ** e.g. results are correlated with similar variables. | ||
; Example: The COLLES surveys | |||
http://surveylearning.moodle.com/colles/ | |||
* The Constructivist On-Line Learning Environment Surveys include one to measure preferred (or ideal) experience in a teaching unit. It includes 24 statements measuring 6 dimensions. | |||
* We only show the first two (4 questions concerning relevance and 4 questions concerning reflection). | |||
* Note that in the real questionnaire you do not show labels like "Items concerning relevance" or "response codes". | |||
* The Constructivist On-Line Learning Environment Surveys include one to measure preferred | |||
(or ideal) experience in a teaching unit. It includes 24 statements measuring 6 | |||
dimensions. | |||
* We only show the first two (4 questions concerning relevance and 4 questions concerning | |||
reflection). | |||
* Note that in the real questionnaire you do not show labels like "Items concerning | |||
relevance" or "response codes". | |||
{| border="1" | {| border="1" |
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Quantitative data analysis
This is part of the methodology tutorial (see its table of contents).
Scales and "data assumptions"
Types of quantitative measures (scales)
Quantitative data come in different forms (measures). Depending on the data type you can or cannot do certain kinds of analysis. There exists three basic data types and the literature uses various names for these...
Types of measures |
Description |
Examples |
---|---|---|
nominal or category |
enumeration of categories |
male, female district A, district B, software widget A, widget B |
ordinal |
ordered scales |
1st, 2nd, 3rd |
interval or quantitative or "scale" (in SPSS) |
measure with an interval |
1, 10, 5, 6 (on a scale from 1-10) 180cm, 160cm, 170cm |
For each type of measure or combinations of types of measure you will have to use different analysis techniques.
For interval variables you have a bigger choice of statistical techniques.
- Therefore scales like (1) strongly agree, (2) agree, (3) somewhat agree, etc. usually are treated as interval variables, although it's not totally correct to do so.
Data assumptions
In addition to their data types, many statistical analysis types only work for given sets of data distributions and relations between variables.
In practical terms this means that not only you have to adapt your analysis techniques to types of measures but you also (roughly) should respect other data assumptions.
- Linearity
The most frequent assumption about relations between variables is that the relationships are linear.
In the following example the relationship is non-linear: students that show weak daily computer use have bad grades, but so do they ones that show very strong use.
Popular measures like the Pearson’s r correlation will "not work", i.e. you will have a very weak correlation and therefore miss this non-linear relationship.
- Normal distribution
Most methods for interval data also require a so-called normal distribution
If you have data with "extreme cases" and/or data that is skewed, some individuals will have much more "weight" than the others.
Hypothetical example:
- The "red" student who uses the computer for very long hours will lead to a positive correlation and positive regression rate, whereas the "black" ones alone in the data suggest an inexistent correlation. Mean use of computers does not represent "typical" usage in this case, since the "red" one "pulls the mean upwards".
- The "green" student however, will not have a major impact on the result, since the other data are well distributed along the 2 axis. In this second case the "mean" represents a "typical" student.
In addition you also should understand that extreme values already have more weight with variance-based analysis methods (i.e. regression analysis, Anova, factor analysis, etc.) since since distances are computed as squares.
The principle of statistical analysis
The goal of statistical analysis is quite simple: find structure in the data. We can express this principle with two synonymous formulas:
DATA = STRUCTURE + NON-STRUCTURE
DATA = EXPLAINED VARIANCE + NOT EXPLAINED VARIANCE
Example: Simple regression analysis
- DATA = predicted regression line + residuals (unexplained noise)
In other words: regression analysis tries to find a line that will maximize prediction and minimize residuals.
Stages of statistical analysis
Let's have look of what we mean be statistical analysis and what your typically have to do. We shall come back to most stages throughout this tutorial page:
- Clean your data
- Make very sure that your data are correct (e.g. check data transcription)
- Make very sure that missing values (e.g. not answered questions in a survey) are clearly identified as missing data
- Gain knowledge about your data
- Make lists of data (for small data sets only !)
- Produce descriptive statistics, e.g. means, standard-deviations, minima, maxima for each variable
- Produce graphics, e.g. histograms or box plot that show the distribution
- Produce composed scales
- E.g. create a single variable from a set of questions
- Make graphics or tables that show relationships
- E.g. Scatter plots for interval data (as in our previous examples) or crosstabulations
- Calculate coefficients that measure the strength and the structure of a relation
- Strength examples: Cramer’s V for crosstabulations, or Pearson’s R for interval data
- Structure examples: regression coefficient, tables of means in analysis of variance
- Calculate coefficients that describe the percentage of variance explained
- E.g. R2 in a regression analysis
- Compute significance level, i.e. find out if you have to right to interpret the relation
- E.g. Chi-2 for crosstabs, Fisher’s F in regression analysis
Note: With statistical data analysis programs you easily can do several steps in one operation.
Data preparation and composite scale making
Before you start any interesting analysis work, you'll have to do some preparation work:
- Find a statistics program
- Import the data and clean them
- Do the documentation (inside the program), .e.g create variable names and labels, response item names and labels, missing values and selection of data type. If you don't get this right you will be very very sorry later on ...
Statistics programs and data preparation
Firstly you should select a good statistics program.
- If available, plan to use a commercial statistics program like SPSS or Statistica. This way you get local support and access to a huge range of analysis methods.
There also exists good freeware (but it's slightly more difficult to use):
- IDAMS Statistical Software, which is sponsored by UNESCO
Some freeware can even do things that you can't do with commerical software, e.g. advanced data visualization. But these systems are rather meant for experts
- R is `GNU S', a freely available language and environment for statistical computing and graphics which provides a wide variety of statistical and graphical techniques: linear and nonlinear modelling, statistical tests, time series analysis, classification, clustering, etc.
Do not use programs like Excel. You will not only loose your time, but you can't even do the most simple statistics that are required for any serious work. Of course there are exceptions:
- Use such programs for simple descriptive statistics if you think that you can get away with these or if the main thrust of your thesis does not involve any kind of serious data analysis.
- Data preparation
These are the minimal steps:
- Enter the data
- Assign a number to each response item (planned when you design the questionnaire)
- We also suggest to enter a clear code for missing values (no response), e.g. -1, but a blank can also do.
- Make sure that your data set is complete and free of errors
- Some simple descriptive statistics (minima, maxima, missing values, etc.) can help to detect really bad coding errors (e.g. 55 instead of '5').
- Learn how to document the data in your statistics program
- Enter labels for variables, labels for responses items, display instructions (e.g.
decimal points to show)
- Define data-types (interval, ordinal or nominal)
Composite scales (indicators)
Composite scales measure one concept, e.g. "the feeling of being there" (social presence). Typically to measure such "soft" variables with questionnaires, several questions are asked. They then can be combined into a single variable.
- Basics
- Most scales are made by simply adding the values from different items (sometimes called "Lickert scales")
- Eliminate items that have a high number of non responses
- Make sure to take into account missing values (non responses) when you add up the responses from the different items
- A real statistics program (SPSS) does that for you
- Make sure when you create your questionnaire that all items use the same range of response item, else you will need to standardize !!
- Quality of a scale
- Again: use a published set of items to measure a variable (if available)
- if you do, you can avoid making long justifications !
- Sensitivity: questionnaire scores discriminate
- e.g. if exploratory research has shown higher degree of presence in one kind of learning environment than in an other one, results of presence questionnaire should demonstrate this.
- Reliability: internal consistency is high
- Intercorrelation between items (alpha) is high
- Validity: results obtained with the questionnaire can be tied to other measures
- e.g. were similar to results obtained by other tools (e.g. in depth interviews),
- e.g. results are correlated with similar variables.
- Example
- The COLLES surveys
http://surveylearning.moodle.com/colles/
- The Constructivist On-Line Learning Environment Surveys include one to measure preferred (or ideal) experience in a teaching unit. It includes 24 statements measuring 6 dimensions.
- We only show the first two (4 questions concerning relevance and 4 questions concerning reflection).
- Note that in the real questionnaire you do not show labels like "Items concerning relevance" or "response codes".
Statements |
Almost Never |
Seldom |
Some-times |
Often |
Almost Always |
---|---|---|---|---|---|
response codes |
1 |
2 |
3 |
4 |
5 |
Items concerning relevance | |||||
a. my learning focuses on issues that interest me. |
O |
O |
O |
O |
O |
b. what I learn is important for my prof. practice as a trainer. |
O |
O |
O |
O |
O |
c. I learn how to improve my professional practice as a trainer. |
O |
O |
O |
O |
O |
d. what I learn connects well with my prof. practice as a trainer. |
O |
O |
O |
O |
O |
Items concerning Reflection | |||||
... I think critically about how I learn. |
O |
O |
O |
O |
O |
... I think critically about my own ideas. |
O |
O |
O |
O |
O |
... I think critically about other students' ideas. |
O |
O |
O |
O |
O |
... I think critically about ideas in the readings. |
O |
O |
O |
O |
O |
Algorithm to compute each scale:
for each individual add response codes and divide by number of items
or use a "means" function in your software package:
relevance = mean (a, b, c, d)
Examples:
Individual A
who answered a=sometimes, b=often, c=almost always, d= often gives:
(3 + 4 + 5 + 4 ) / 4 = 4
Missing values (again)
- Make sure that you do not add "missing values"
Individual B
who answered a=sometimes, b=often, c=almost always, d=missing gives:
(3 + 4 + 5) / 3 = 4
and certainly NOT:
(3 + 4 + 5 + 0) / 4 or (3 + 4 + 5 -1) / 4 !!
Overview on statistical methods and coefficients
Descriptive statistics
- Descriptive statistics are not very interesting in most cases
(unless they are
used to compare different cases in comparative systems designs)
- Therefore, do not fill up pages of your thesis with tons of Excel diagrams !!
Some popular summary statistics for interval variables
- Mean
- Median: the data point that is in the middle of "low" and "high" values
- Standard deviation: the mean deviation from the mean, i.e. how far a typical data point
is away from the mean.
- High and Low value: extremes a both end
- Quartiles: same thing as median for 1/4 intervals
Which data analysis for which data types?
Popular bi-variate analysis
Dependant variable Y | |||
---|---|---|---|
Quantitative(interval) |
Qualitative(nominal or ordinal) | ||
Independent(explaining) |
Quantitative |
Correlation and Regression |
Transform X into a qualitative variable and see below |
Qualitative |
Analysis of variance |
Crosstabulations |
Popular multi-variate anaylsis
Dependant variable Y | |||
---|---|---|---|
Quantitative(interval) |
Qualitative(nominal or ordinal) | ||
Independent(explaining) |
Quantitative |
Factor Analysis, |
Transform X into a qualitative variable and see below |
Qualitative |
Anova |
Multidimensional scaling etc. |
Types of statistical coefficients:
- First of all make sure that the coefficient you use is more or less appropriate for you
data
The big four:
- Strength of a relation
- Coefficients usually range from -1 (total negative relationship) to +1 (total
positive relationship). 0 means no relationship.
- Structure (tendency) of a relation
- Percentage of variance explained
- Signification level of your model
- Gives that chance that you are in fact gambling
- Typically in the social sciences a sig. level lower than 5% (0.05) is acceptable
- Do not interpret data that is above !
These four are mathematically connected:
E.g. Signification is not just dependent on the size of your sample, but also on the strength of a relation.
Crosstabulation
- Crosstabulation is a popular technique to study relationships between normal
(categorical) or ordinal variables
Computing the percentages (probabilities)
- See the example on the next slides
- For each value of the explaining (independent) variable compute de percentages
- Usually the X variable is put on top (i.e. its values show in columns). If you don’t
you have to compute percentages across lines !
- Remember this: you want to know the probability (percentage) that a value of X leads to
a value of Y
- Compare (interpret) percentages across the dependant (to be explained) variable
Statistical association coefficients (there are many!)
- Phi is a chi-square based measure of association and is usually used for 2x2 tables
- The Contingency Coefficient (Pearson's C). The contingency coefficient is an adjustment
to phi, intended to adapt it to tables larger than 2-by-2.
- Somers' d is a popular coefficient for ordinal measures (both X and Y). Two variants:
symmetric and Y dependant on X (but less the other way round).
Statistical significance tests
- Pearson's chi-square is by far the most common. If simply "chi-square" is mentioned, it
is probably Pearson's chi-square. This statistic is used to text the hypothesis of no association of columns and rows in tabular data. It can be used with nominal data.
=== Crosstabulation Avez-vous reçu une formation à l'informatique ?* Créer des documents pour afficher en classe ===
X= Avez-vous reçu une formation à l'informatique ? |
Total | ||||
Non |
Oui |
||||
Y= Utilisez-vous l’ordinateur pour créer des documents pour afficher en classe ? |
Régulièrement |
Effectif |
4 |
45 |
49 |
% dans X |
44.4% |
58.4% |
57.0% | ||
Occasionnellement |
Effectif |
4 |
21 |
25 | |
% dans X |
44.4% |
27.3% |
29.1% | ||
2 Jamais |
Effectif |
1 |
11 |
12 | |
% dans X |
11.1% |
14.3% |
14.0% | ||
Total |
Effectif |
9 |
77 |
86 | |
% dans X |
100.0% |
100.0% |
100.0% |
- The probability that computer training ("oui") leads to superior usage of the computer
to prepare documents is very weak (you can see this by comparing the % line by line.
Statistics:
- Pearson Chi-Square = 1.15 with a signification= .562
- This means that the likelihood of results being random is > 50% and you have to
reject relationship
- Contingency coefficient = 0.115, significance = .562
- Not only is the relationship very weak (but it can’t be interpreted)
=== Crosstabulation: Pour l'élève, le recours aux ressources de réseau favorise l'autonomie dans l'apprentissage * Rechercher des informations sur Internet ===
X= Pour l'élève, le recours aux ressources de réseau favorise l'autonomie dans l'apprentissage |
|||||||
0 Tout à fait en désaccord |
1 Plutôt en désaccord |
2 Plutôt en accord |
3 Tout à fait en accord |
Total | |||
Y= Rechercher des informations sur Internet |
0 Régulièrement |
Count |
0 |
2 |
9 |
11 |
22 |
% within X |
.0% |
18.2% |
19.6% |
42.3% |
25.6% | ||
1 Occasionnellement |
Count |
1 |
7 |
23 |
11 |
42 | |
% within X |
33.3% |
63.6% |
50.0% |
42.3% |
48.8% | ||
2 Jamais |
Count |
2 |
2 |
14 |
4 |
22 | |
% within X |
66.7% |
18.2% |
30.4% |
15.4% |
25.6% | ||
Total |
Count |
3 |
11 |
46 |
26 |
86 | |
% within X |
100.0% |
100.0% |
100.0% |
100.0% |
100.0% |
- We have a weak significant relationship: the more teachers agree that students will
increase learning autonomy from using Internet resources, the more they will let students do so.
Statistics: Directional Ordinal by Ordinal Measures with Somer’s D
Values |
Somer’s D |
Significance |
---|---|---|
Symmetric |
-.210 |
.025 |
Y = Rechercher des informations sur Internet Dependent |
-.215 |
.025 |
Simple analysis of variance
- Analysis of variance (and it’s multi-variate variant Anova) are the favorite tools of
the experimentalists.
- X is an experimental condition (therefore a nominal variable) and Y usually is an
interval variable.
- E.g. Does presence or absence of ICT usage influence grades ?
- You can show that X has an influence on Y if means achieved by different groups (e.g.
ICT vs. non-ICT users) are significantly different.
- Significance improves when:
- means of the X groups are different (the further apart the better)
- variance inside X groups is low (certainly lower than the overall variance)
Differences between teachers and teacher students
Population |
COP1 Fréquence de différentes manières de travailler des élèves |
COP2 Fréquence des activités d'exploration à l'extérieur de la classe |
COP3 Fréquence des travaux individuels des élèves | |
---|---|---|---|---|
1 Etudiant(e) LME |
Mean |
1.528 |
1.042 |
.885 |
N |
48 |
48 |
48 | |
Std. Deviation |
.6258 |
.6260 |
.5765 | |
2 Enseignant(e) du primaire |
Mean |
1.816 |
1.224 |
1.224 |
N |
38 |
38 |
38 | |
Std. Deviation |
.3440 |
.4302 |
.5893 | |
Total |
Mean |
1.655 |
1.122 |
1.035 |
N |
86 |
86 |
86 | |
Std. Deviation |
.5374 |
.5527 |
.6029 |
- COP1, COP2, COP3 sont des indicateurs composé allant de 0 (peu) et 2 (beaucoup)
- The difference for COP2 is not significant (see next slide)
- Standard deviations within groups are rather high (in particular for students), which is
a bad thing: it means that among students they are highly different.
Anova Table and measures of associations
Sum of Squares |
df |
Mean Square |
F |
Sig. | ||
---|---|---|---|---|---|---|
Var_COP1 Fréquence de différentes manières de travailler des élèves * Population_bis Population |
Between Groups |
1.759 |
1 |
1.759 |
6.486 |
.013 |
Within Groups |
22.785 |
84 |
.271 |
|||
Total |
24.544 |
85 |
||||
Var_COP2 Fréquence des activités d'exploration à l'extérieur de la classe * Population_bis Population |
Between Groups |
.703 |
1 |
.703 |
2.336 |
.130 |
Within Groups |
25.265 |
84 |
.301 |
|||
Total |
25.968 |
85 |
||||
Var_COP3 Fréquence des travaux individuels des élèves * Population_bis Population |
Between Groups |
2.427 |
1 |
2.427 |
7.161 |
.009 |
Within Groups |
28.468 |
84 |
339 |
|||
Total |
30.895 |
85 |
Measures of Association
Eta |
Eta Squared | |
---|---|---|
Var_COP1 Fréquence de différentes manières de travailler des élèves * Population |
.268 |
.072 |
Var_COP2 Fréquence des activités d'exploration à l'extérieur de la classe * Population |
.164 |
.027 |
Var_COP3 Fréquence des travaux individuels des élèves * Population |
.280 |
.079 |
- associations are week and explained variance very weak
Regression Analysis and Pearson Correlations
Does teacher age explain exploratory activities outside the classroom ?
- Independant variable: AGE
- Dependent variable: Fréquence des activités d'exploration à l'extérieur de la classe
Model Summary
R |
R Square |
Adjusted R Square |
Std. Error of the Estimate |
Pearson Correlation |
Sig. (1-tailed) |
N |
---|---|---|---|---|---|---|
.316 |
.100 |
.075 |
.4138 |
.316 |
.027 |
38 |
Model Coefficients
Coefficients |
Stand. coeff. |
t |
Sig. |
Correlations | ||
---|---|---|---|---|---|---|
B |
Std. Error |
Beta |
Zero-order | |||
(Constant) |
.706 |
.268 |
2.639 |
.012 |
||
AGE Age |
.013 |
.006 |
.316 |
1.999 |
.053 |
.316 |
Dependent Variable: Var_COP2 Fréquence des activités d'exploration à l'extérieur de la classe |
All this means:
- We have a week relation (.316) between age and exploratory activities. It is significant
(.027)
- Formally the relation is:
exploration scale = .705 + 0.013 * AGE
(roughly: only people over 99 are predicted a top score of 2)
Here is a scatter plot of this relation
- No need for statistical coefficients to see that the relation is rather week and why the
prediction states that it takes a 100 years ... :)
File:Book-research-design-195.png
Exploratory Multi-variate Analysis
There many techniques, here we just introduce cluster analysis, e.g. Factor Analysis (principal components) or Discriminant analysis are missing here
Cluster Analysis
- Cluster analysis or classification refers to a set of multivariate methods for grouping
elements (subjects or variables) from some finite set into clusters of similar elements (subjects or variables).
- There 2 different kinds: hierarchical cluster analysis and K-means cluster.
- Typical examples: Classify teachers into 4 to 6 different groups regarding ICT usage
Gonzalez classification of teachers
- A hierarchical analysis allow to identify 6 major types of teachers
- Type 1 : l’enseignant convaincu
- Type 2 : les enseignants actifs
- Type 3 : les enseignants motivés ne disposant pas d’un environnement favorable
- Type 4 : les enseignants volontaires, mais faibles dans le domaine des technologies
- Type 5 : l’enseignant techniquement fort mais peu actif en TIC
- Type 6 : l’enseignant à l’aise malgré un niveau moyen de maîtrise
Dendogram (tree diagram of the population)
File:Book-research-design-196.png
Statistics of a subset of the 36 variables used for analysis:
File:Book-research-design-197.png
- Final note: confirmatory multivariate analysis (e.g. structural equation modelling) is
not even mentionnend in this document