08 Chapter
08 Chapter
116
CHAPTER 4
4.1 INTRODUCTION
collecting data, analyzing, drawing meaningful interpretation and reporting of the research
findings. The statistical analysis gives meaning to the meaningless numbers, thereby
breathing life into a lifeless data. Analysis means the categorizing, ordering, manipulating,
used to reduce data to negligible and interpretable form so that the relations of research
Interpretation takes the result of analysis, makes inference pertinent to the research
ii. To what extent, the results are significant and match to the objectives of the study.
iv. Are they able to open and new avenues of research in the field?
All these things clarify that interpretation of results is not a mechanical process, it
requires careful, logical, and critical thinking and evaluative power on the part of researcher.
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1. Descriptive Analysis
2. Differential Analysis
3. Correlation Analysis
4. Regression Analysis
individuals. It describes the characteristics of group without drawing inferences about the
population and it also helps to describe, show or summarize data in a meaningful way.
Table 4.1 show the mean scores of digital literacy, computational thinking, and
Table 4.1
Digital literacy - (Low= <90; Moderate= > 91 &< 180; High= ≥ 181)
Computational Thinking - (Low= ≤ 54; Moderate= > 55 &< 108; High= ≥ 109)
Professional commitment- (Low= ≤ 70; Moderate= > 71 &< 140; High= ≥ 141)
118
The above table 4.1 reveals that the mean value of primary school teachers of
Coimbatore has moderate level of digital literacy (165.35), computational thinking (99.37)
Table 4.2 shows the level of digital literacy, computational thinking, and professional
Table 4.2
school teachers
N % N % N %
Digital literacy
21 2.75% 519 68.19% 221 29.04%
The above table 4.2 reveals that 2.75% of primary school teachers have low level,
68.19% of them have moderate level, and 29.04% of teachers have high level of digital
literacy. Also 1.70% of teachers have low level, 73.19% have moderate level, and 25.13%
have high level of computational thinking. This table further reveals that 2.10% of
teachers have low level, 43.23% have moderate level, and 54.66% have high level of
professional commitment.
119
80
73.19
68.19
70
60 54.66
50
43.23
40
29.04
30 25.13
20
10
2.75 1.7 2.1
0
Digital literacy Com.Thinking Professional
commitment
Fig 4.1 Bar Diagram shows the level of digital literacy, computational thinking, and
Table 4.3 shows that the Percentage of low, moderate and high level in digital
Table 4.3
Percentage of low, moderate and high level in digital literacy and its dimensions of the
Dimensions of Digital %
N % N % N
literacy
The table 4.3 shows percentage of low, moderate and high level in digital literacy
and its dimensions of the primary school teachers. According to the table, 26 (3.41%)
teachers have low level, 297 (39.02%) teachers are moderate and 438 (57.55%) teachers
have high level in comprehension of digital literacy. The above table further reveals that
22(2.89%) teachers have low level, 620(81.4%) teachers are moderate and 119(15.63%)
teachers have high level in Interdependence of digital literacy,22(2.89%) teachers have low
level, 488(64.12%) teachers are moderate and 251 (32.98%) teachers have high level in
Table 4.4 shows that the Percentage of low, moderate and high level in computational
Table 4.4
Percentage of low, moderate and high level in computational thinking and its dimensions
Dimensions of %
N % N % N
Computational thinking
The table 4.4 shows percentage of low, moderate and high level in computational
thinking and its dimensions of the primary school teachers. According to the table,
18 (2.36%) teachers have low level, 524 (68.8%) teachers are moderate and 219 (28.77%)
teachers have high level in abstraction of computational thinking. The above table further
reveals that 12 (1.57%) teachers have low level, 434 (57.03%) teachers are moderate and
Table 4.5 shows that the Percentage of low, moderate and high level in professional
Table 4.5
Percentage of low, moderate and high level in professional commitment and its dimensions
Dimensions of Professional
N % N % N %
Commitment
Commitment to Achieving
17 2.23% 368 48.35% 377 49.54%
Excellence
The table 4.5 shows percentage of low, moderate and high level in professional
commitment and its dimensions of the primary school teachers. According to the table,
21(2.75%) teachers have low level, 350 (45.99%) teachers are moderate and 390 (51.24%)
teachers have high level in commitment to student of Professional Commitment. The above
table further reveals that 18(2.36%) teachers have low level,349(45.86%) teachers are
moderate and 377 (49.54%) teachers have high level in commitment to achieving
Inferential analysis is used to draw and assess the reliability of conclusions about
a population based on data collected from a sample of the population. Because inferential
analysis does not sample everyone in a population, the results will always be uncertain.
H0- 1-(i) There is no significant difference between male and female of primary
Table 4.6
Significant difference between male and female of primary school teachers in digital
t- p-
Dimension Variables N Mean Std Remark
value value
Male 140 46.27 7.213
Comprehension 2.352 0.019 S
Female 620 44.62 8.650
Male 140 82.25 13.448
Interdependence 2.728 0.007
Female 620 78.71 15.666 S
Male 140 40.89 6.270
Curation 0.373 0.709 NS
Female 620 41.12 8.704
Over all Male 140 169.41 24.293
2.081 0.038 S
Digital literacy Female 620 164.44 30.283
(S-Significant, NS-Not Significant, Significant at 0.05 level)
It is inferred from the table 4.6 that the calculated t-values for dimensions of digital
literacy such as comprehension and Interdependence are (2.35) and (2.72) respectively,
which are greater than the table value (1.96) at 0.05 level of significance. Hence there is
124
a significant difference between male and female teachers in dimensions of digital literacy
such as comprehension and Interdependence. Also, the calculated t- value (0.373) for
dimension of digital literacy such as curation is less than the table value (1.96) at 0.05 level
of significance. Hence there is no significant difference between male and female teachers
The above table also reveals that the calculated t-value for overall digital literacy is
(2.08) which is greater than the table value (1.96) at 0.05 level of significance. Hence the
Table 4.7
t- p-
Dimension Variables N Mean Std Remark
value value
UG 293 44.09 7.615
Comprehension 2.244 0.025 S
PG 468 45.45 8.852
UG 293 77.19 14.806
Interdependence 3.140 0.002 S
PG 468 80.72 15.502
UG 293 39.85 7.784
Curation 3.299 0.001 S
PG 468 41.84 8.533
Over all UG 293 161.12 27.499
3.240 0.001 S
Digital literacy PG 468 168.00 30.103
(S-Significant, NS-Not Significant, Significant at 0.05 level)
125
It is inferred from the table 4.7 that the calculated t-values for dimensions of digital
literacy such as comprehension, Interdependence and curation are (2.24), (3.14) and (3.29)
respectively, which are greater than the table value (1.96) at 0.05 level of significance.
Hence there is a significant difference between undergraduate and post graduate teachers
The above table also reveals that the calculated t-value for overall digital literacy is
(3.24) which is greater than the table value (1.96) at 0.05 level of significance. Hence the
formulated null hypothesis H0 1 (ii) is rejected and that there is a significant difference
between undergraduate and postgraduate teachers in digital literacy and its dimensions.
Table 4.8
Significant difference between arts and science of primary school teachers in digital
t- p-
Dimension Variables N Mean Std Remark
value value
Arts 395 44.11 8.955
Comprehension 2.803 0.005 S
Science 366 45.81 7.713
Arts 395 78.48 15.84
Interdependence 1.650 0.099 NS
Science 366 80.31 14.709
Arts 395 40.91 8.592
Curation 0.570 0.569 NS
Science 366 41.25 7.989
Over all Arts 395 163.49 30.426
1.825 0.068 NS
Digital literacy Science 366 167.36 27.941
(S-Significant, NS-Not Significant, Significant at 0.05 level)
126
It is inferred from the table 4.8 that the calculated t-values for dimension of digital
literacy such as comprehension (2.80) which is greater than the table value (1.96) at 0.05
level of significance. Hence there is a significant difference between arts and science
t- value for dimension of digital literacy such as Interdependence and curation are (1.65)
and (0.57) respectively, which are less than the table value (1.96) at 0.05 level of
significance. Hence there is no significant difference between arts and science teachers in
The above table also reveals that the calculated t-value for overall digital literacy is
(0.068) which is less than the table value (1.96) at 0.05 level of significance. Hence the
formulated null hypothesis H0 1 (iii) is accepted and that there is no significant difference
Table 4.9
Significant difference in digital literacy and its dimensions of primary school teachers with
t- p-
Variable Dimension Category N Mean Std Remark
value value
Yes 559 45.52 8.500
Comprehension 3.337 0.001 S
No 202 43.29 7.982
Yes 559 80.04 15.856
Interdependence 2.177 0.030 S
Online No 202 77.49 13.611
Teaching
Experience Yes 559 41.66 8.566
Curation 3.529 0.000 S
No 202 39.44 7.306
Over all Yes 559 167.20 30.235
3.133 0.002 S
Digital literacy No 202 160.22 25.935
(S-Significant, NS-Not Significant, Significant at 0.05 level)
It is inferred from the table 4.9 that the calculated t-values for dimension of digital
(3.529) respectively, which are greater than the table value (1.96) at 0.05 level of
significance. Hence there is a significant difference in digital literacy and its dimensions of
The above table also reveals that the calculated t-value for overall digital literacy is
(3.133) which is greater than the table value (1.96) at 0.05 level of significance. Hence the
formulated null hypothesis H0 1 (iv) is rejected and that there is a significant difference in
digital literacy and its dimensions of primary school teachers with respect to their online
teaching experience.
128
H0 2 (i) There is no significant difference among primary school teachers’ digital literacy and its dimensions with respect to
Table 4.10
Significant difference among primary school teachers’ digital literacy and its dimensions with respect to their offline teaching experience
Sum of Mean
Variable Dimension Groups df F-value Sig Remark
squares square
Between groups 72.523 2 36.262
Comprehension Within groups 53785.356 758 0.511 0.600 NS
70.957
Total 53857.879 760
Between groups 2449.452 2 1224.726
Interdependence Within groups 176031.89 758 5.274 0.005 S
Offline 232.232
Total 178481.34 760
Teaching
Between groups 151.273 2
Experience 75.637
Curation Within groups 52250.895 758 1.097 0.334 NS
Total 52402.168 760 68.933
Between groups 4815.188 2 2407.594
Over all
Within groups 647718.13 758 2.818 0.060 NS
Digital literacy 854.509
Total 652533.32 760
(S-Significant, NS-Not Significant, Significant at 0.05 level)
129
It is inferred from the above table 4.10 that the calculated F-values for dimension
of digital literacy such as comprehension and curation are (0.600) and (0.334) respectively,
which are less than the critical F-distribution value (3.00) at 0.05 level of significance.
digital literacy such as comprehension and curation with respect to their years of teaching
experience. Also, the calculated critical F-distribution value for dimension of digital
literacy such as Interdependence (5.274) is greater than the critical F-distribution value
digital literacy such as Interdependence of primary school teachers with respect to their
The above table also reveals that the calculated F-value for overall digital literacy
is (2.818) which is less than the table value (3.00) at 0.05 level of significance. Hence
the formulated null hypothesis H0 2 (i) is accepted and that there is no significant difference
among primary school teachers’ digital literacy with respect to their years of teaching experience.
scheffe’s post hoc test for difference among primary school teachers’ digital literacy and
The above scheffe’s post hoc analysis reveals that the mean difference between
teachers have 0-5yrs and 5-10yrs of experience is 4.593 for dimension of digital literacy
the other two combinations did not show any significant difference. Hence it is concluded
that, primary school teachers are significantly differed in digital literacy and its dimensions
While comparing the mean scores, primary school teachers have 0-5years of
experience (80.56) are better than the teachers having 5-10years (75.97) and above 10years
H0 2(ii) There is no significant difference among primary school teachers’ digital literacy and its dimensions with respect to their locality.
Table 4.11
Significant difference among primary school teachers’ digital literacy and its dimensions with respect to their locality
Sum of Mean F-
Variable Dimension Groups df Sig Remark
squares square value
Between groups 531.646 2 265.823
Comprehension Within groups 53326.233 758 3.779 0.023
70.351 S
Total 53857.879 760
Between groups 770.910 2 385.455
Interdependence Within groups 177710.43 758 1.644 0.194 NS
234.446
Total 178481.34 760
Locality
Between groups 354.084 2
Curation 177.042
Within groups 52048.084 758 2.578 0.077 NS
Total 52402.168 760 68.665
Between groups 4354.413 2 2177.207
Over all NS
Within groups 648178.90 758 2.546 0.079
Digital literacy 855.117
Total 652533.32 760
(S-Significant, NS-Not Significant, Significant at 0.05 level)
132
It is inferred from the above table 4.11 that the calculated F-values for dimension
of digital literacy such as Interdependence and curation are (1.644) and (2.578)
respectively, which are less than the critical F-distribution value (3.00) at 0.05 level of
dimension of digital literacy such as Interdependence and curation with respect to their
locality. Also, the calculated critical F-distribution value for dimension of digital literacy
such as comprehension (3.779) is greater than the critical F-distribution value (3.00) at 0.05
level of significance. Hence there is a significant difference in dimension for digital literacy
such as comprehension among primary school teachers with respect to their locality.
The above table also reveals that the calculated F-value for overall digital literacy
is (2.546) which is less than the table value (3.00) at 0.05 level of significance. Hence the
formulated null hypothesis H0 2 (ii) is accepted and that there is no significant difference
among primary school teachers’ digital literacy with respect to their locality.
scheffe’s post hoc test for difference among primary school teachers’ digital literacy and
Locality Mean
Difference Sig Remark
Dimension Rural Urban Semi-Urban (I-J)
The above scheffe’s post hoc analysis reveals that the mean difference between
teachers from rural and urban is 1.667 for dimension of digital literacy such as
comprehension and it is significant at 0.05 level of significance. And also, the other two
combinations did not show any significant difference. Hence it is concluded that, primary
While comparing the mean scores, primary school teachers from urban (45.14)
are better than the teachers from rural (44.14) and semi urban (44.11) in digital literacy and
its dimensions.
134
H0- 2(iii) There is no significant difference among primary school teachers’ digital literacy and its dimensions with respect to their type
of school
Table 4.12
Significant difference among primary school teachers’ digital literacy and its dimensions with respect to their type of school
Sum of Mean F-
Variable Dimension Groups df Sig Remark
Squares Square Value
Between groups 1408.456 2 704.228
Comprehension Within groups 52449.423 758 10.178 0.000
69.194 S
Total 52449.423 760
Between groups 2133.863 2 1066.932
Interdependence Within groups 176347.48 758 4.586 0.010 S
232.648
Type of Total 178481.34 760
School Between groups 530.008 2 265.004
Curation
Within groups 51872.161 758 3.872 0.021 S
68.433
Total 52402.168 760
Between groups 9658.703 2 4829.352
Over all
Within groups 642874.61 758 5.694 0.004 S
Digital literacy 848.120
Total 652533.32 760
(S-Significant, NS-Not Significant, Significant at 0.05 level)
135
It is inferred from the above table 4.12 that the calculated F-values for dimensions
of digital literacy are (10.178), (4.586), (3.872), respectively, which are greater than the
critical F-distribution value (3.00) at 0.05 level of significance. Hence there is a significant
difference among primary school teachers in dimensions of digital literacy with respect to
The above table also reveals that the calculated F-value for digital literacy is (5.694)
which is greater than the table value (3.00) at 0.05 level of significance. Hence the
formulated null hypothesis H0 2 (iii) is rejected and that there is a significant difference
among primary school teachers’ digital literacy with respect to their type of school.
scheffe’s post hoc test for difference among primary school teachers’ digital literacy and
The above scheffe’s post hoc analysis reveals that the mean difference between
government school teachers and self- finance school teachers is (2.899) for comprehension
The mean difference between government school teachers and aided school
teachers is (5.111), also government school teachers and self-finance school teachers is
The mean difference between government school teachers and self-finance school
teachers is (1.718) for curation of digital literacy and it is significant at 0.05 level.
The scheffe’s post hoc analysis also reveal that the mean difference between
government school teachers and self-finance school teachers is (7.810) for digital literacy
While comparing the mean scores of digital literacy and its dimensions, self-finance
school teachers (46.02), (80.11) (41.52) (167.65) and aided school teachers (43.63),
(82.03), (42.08), (167.69) are better than the government school teachers (43.12), (76.92),
(39.80), (159.83). Hence it is concluded that self-finance school teachers and aided school
H0 3(i) There is no significant difference between male and female of primary school
H0 3(i) There is no significant difference between male and female of primary school
Table 4.13
t- p-
Dimension Variables N Mean Std Remark
value value
It is inferred from the table 4.13 that the calculated t-values for dimension of
computational thinking such as abstraction and analysis are (0.576) and (0.781)
respectively, which are less than the table value (1.96) at 0.05 level of significance. Hence
computational thinking.
The above table also reveals that the calculated t-value for overall computational
thinking is (0.100) which is less than the table value (1.96) at 0.05 level of significance.
Hence the formulated null hypothesis H0 3 (i) is accepted and that there is no significant
Table 4.14
t- p-
Dimension Variables N Mean Std Remark
value value
It is inferred from the table 4.14 that the calculated t-values for dimension of
computational thinking such as abstraction (2.062) which is greater than the table value
(1.96) at 0.05 level of significance and that there is a significant difference in dimension of
Also, the calculated t-value for dimension of computational thinking such as analysis is
(1.392) which is less than the table value (1.96) at 0.05 level of significance. Hence there
The above table also reveals that the calculated t-value for overall computational
thinking is (1.812) which is less than the table value (1.96) at 0.05 level of significance.
Hence the formulated null hypothesis H0 3 (ii) is accepted and that there is no significant
H0-3(iii) There is no significant difference between arts and science subjects of primary
Table 4.15
Significant difference between arts and science subjects of primary school teachers in
t- p-
Dimension Variables N Mean Std Remark
value value
It is inferred from the table 4.15 that the calculated t-values for dimension of
computational thinking such as abstraction (1.274) which is less than the table value (1.96)
of computational thinking such as abstraction with respect to their subject. Also, the
which is greater than the table value (1.96) at 0.05 level of significance. Hence there is
The above table also reveals that the calculated t-value for overall computational
thinking is (1.842) which is less than the table value (1.96) at 0.05 level of significance.
Hence the formulated null hypothesis H0 3 (iii) is accepted and that there is no significant
school teachers.
Table 4.16
t- p-
Variable Dimension Category N Mean Std Remark
value value
It is inferred from the table 4.16 that the calculated t-values for dimension of
computational thinking such as abstraction and analysis are (4.408) and (2.705)
respectively, which are greater than the table value (1.96) at 0.05 level of significance.
The above table also reveals that the calculated t-value for overall computational
thinking is (3.732) which is greater than the table value (1.96) at 0.05 level of significance.
Hence the formulated null hypothesis H0 3 (iv) is rejected and that there is a significant
difference in computational thinking of primary school teachers with respect to their online
teaching experience.
142
H0 4(i) There is no significant difference among primary school teachers computational thinking and its dimensions with respect to
Table 4.17
Significant difference among primary school teacher’s computational thinking and its dimensions with respect to their years of teaching
experience
Sum of Mean F-
Variable Category groups df Sig Remark
Squares Square Value
Between groups 501.005 2 250.502
Abstraction Within groups 56695.484 758 3.349 0.036 S
74.796
Total 57196.489 760
Between groups 311.344 2 155.672
Teaching
Analysis Within groups 55106.482 758 2.141 0.118 NS
Experience 72.700
Total 55417.827 760
Between groups 1596.688 2 798.344
Overall
Computational Within groups 204607.57 758 2.958 0.053 NS
thinking 269.931
Total 206204.26 760
(S-Significant, NS-Not Significant, Significant at 0.05 level)
143
It is inferred from the above table 4.17 that the calculated F-values for dimension
of computational thinking such as Abstraction is (3.349) which is greater than the critical
teachers with respect to their years of teaching experience. Also, the calculated critical
less than the critical F-distribution value (3.00) at 0.05 level of significance. Hence there
The above table also reveals that the calculated F-value for overall computational
thinking is (2.958) which is less than the table value (3.00) at 0.05 level of significance.
Hence the formulated null hypothesis H0 3 (i) is accepted and that there is no significant
difference among primary school teachers’ computational thinking with respect to their
Table 4.17(a)
scheffe’s post hoc test for difference among primary school teachers’ computational
thinking and its dimensions with respect to their years of teaching experience
The above scheffe’s post hoc analysis reveals that the mean difference between
teachers have 0-5yrs and 5-10yrs of experience is (2.040) for dimension in computational
thinking such as abstraction and it is significant at 0.05 level of significance. And also,
the other two combinations did not show any significant difference. Hence it is concluded
that, primary school teachers are significantly differed in computational thinking and its
While comparing the mean scores, primary school teachers have 0-5years of
experience (49.04) are better than the teachers having 5-10years of experience (47.00) and
Table 4.18
Significant difference among primary school teacher’s computational thinking and its
Sum of Mean F-
Variable Category groups df Sig Remark
Squares Square Value
Between
287.887 2 143.944
groups
Abstraction Within 1.958 0.142 NS
55641.690 758
groups 73.503
Total 55929.578 760
Between
127.360 2 63.680
groups
Locality Analysis Within 0.873 0.418 NS
55290.466 758
groups 72.943
Total 55417.827 760
Between
704.534 2 352.267
Overall groups
Computational Within 1.299 0.273 NS
205499.73 758
thinking groups 271.108
Total 206204.26 760
(S-Significant, NS-Not Significant, Significant at 0.05 level)
It is inferred from the above table 4.18 that the calculated F-values for dimension
of computational thinking such as Abstraction and Analysis is (1.958) and (0.873) which
is less than the critical F-distribution value (3.00) at 0.05 level of significance. Hence there
The above table also reveals that the calculated F-value for overall computational
thinking is (1.299) which is less than the table value (3.00) at 0.05 level of significance.
Hence the formulated null hypothesis H0 4 (ii) is accepted and that there is no significant
difference among primary school teachers’ computational thinking with respect to their locality.
146
H0 4(iii) There is no significant difference in computational thinking and its dimensions of primary school teachers with respect to their
type of school
Table 4.19
Significant difference among primary school teacher’s computational thinking and its dimensions with respect to their type of school
Sum of Mean F-
Variable Category groups df Sig Remark
Squares Square Value
It is inferred from the above table 4.19 that the calculated F-values for dimensions
of computational thinking are (7.766), (4.535), respectively, which are greater than
the critical F-distribution value (3.00) at 0.05 level of significance. Hence there is
The above table also reveals that the calculated F-value for computational thinking
is (6.589) which is greater than the table value (3.00) at 0.05 level of significance. Hence
the formulated null hypothesis H0 4 (iii) is rejected and that there is a significant difference
among primary school teachers’ computational thinking with respect to their type of school.
scheffe’s post hoc test for difference among primary school teachers’ computational
The above scheffe’s post hoc analysis reveals that the mean difference between
government school teachers and self-finance school teachers is (1.569) for dimension of
The mean difference between government school teachers and aided school
teachers is (1.529), also government school teachers and self-finance school teachers
at 0.05 level.
The scheffe’s post hoc analysis also reveal that the mean difference between
government school teachers and self-finance school teachers is (4.776) for computational
While comparing the mean scores of computational thinking and its dimensions,
self-finance school teachers (49.39), (51.47) (100.86) and aided school teachers (49.24),
(50.93), (100.86), are better than the government school teachers (46.69), (49.40), (96.09).
Hence it is concluded that private school teachers and aided school teachers are
H0 5 (i) There is no significant difference between male and female teachers of primary
Table 4.20
Significant difference between male and female teachers of primary school teachers in
t- p-
Dimension Variables N Mean Std Remark
value value
Commitment to Male 141 39.26 6.501
0.703 0.483 NS
students Female 620 39.69 6.920
Commitment to Male 141 35.61 5.811
0.552 0.582 NS
Profession Female 620 35.91 6.195
Commitment to Male 141 63.18 10.602
Achieving 0.452 0.651 NS
Excellence Female 620 63.63 10.859
Overall Male 141 138.05 21.441
Professional 0.587 0.558 NS
Commitment Female 620 139.23 22.494
It is inferred from the table 4.20 that the calculated t-values for dimensions
commitment to achieving excellence are (0.703), (0.552) and (0.452) respectively, which
are less than the table value (1.96) at 0.05 level of significance. Hence there is no significant
difference between male and female teachers in professional commitment and its dimensions.
The above table also reveals that the calculated t-value for overall professional
commitment is (0.587) which is less than the table value (1.96) at 0.05 level of significance.
Hence the formulated null hypothesis H0 5 (i) is accepted and that there is no significant
Table 4.21
t- p-
Dimension Variables N Mean Std Remark
value value
It is inferred from the table 4.21 that the calculated t-values for dimensions of
commitment to achieving excellence are (0.053), (1.456) and (1.730) respectively, which
are less than the table value (1.96) at 0.05 level of significance. Hence there is no significant
The above table also reveals that the calculated t-value for overall professional
commitment is (1.247) which is less than the table value (1.96) at 0.05 level of significance.
151
Hence the formulated null hypothesis H0 5 (ii) is accepted and that there is no
educational qualification.
Table 4.22
Significant difference between arts and science subject of primary school teachers in
t- p-
Dimension Variables N Mean Std Remark
value value
Commitment to Arts 393 39.54 7.056
0.237 0.813 NS
students Science 367 39.66 6.615
Commitment to Arts 393 35.75 6.179
0.481 0.631 NS
Profession Science 367 35.96 6.073
Commitment to Arts 393 63.03 11.306
Achieving 1.349 0.178 NS
Excellence Science 367 64.08 10.227
Overall Arts 393 138.32 22.972
Professional 0.857 0.391 NS
Commitment science 367 139.70 21.550
It is inferred from the table 4.22 that the calculated t-value for dimensions of
commitment to achieving excellence are (0.237), (0.481) and (1.349) respectively, which
are less than the table value (1.96) at 0.05 level of significance. Hence there is no significant
difference in primary school teachers in professional commitment and its dimensions with
respect to subject.
152
The above table also reveals that the calculated t-value for overall professional
commitment is (0.847) which is less than the table value (1.96) at 0.05 level of significance.
Hence the formulated null hypothesis H0 5 (iii) is accepted and that there is no significant
difference in professional commitment and its dimensions with respect to their subject.
Table 4.23
t- p-
Variable Dimension Category N Mean Std Remark
value value
It is inferred from the table 4.23 that the calculated t-values for dimensions of
commitment to achieving excellence are (3.037), (3.337) and (4.339) respectively, which
are greater than the table value (1.96) at 0.05 level of significance. Hence there is a
153
The above table also reveals that the calculated t-value for overall professional
commitment is (3.968) which is greater than the table value (1.96) at 0.05 level of
significance. Hence the formulated null hypothesis H0 5 (iv) is rejected and that there is
H0 6 (i) There is no significant difference among primary school teachers’ professional commitment and its dimensions with respect to
Table 4.24
Significant difference among primary school teachers’ professional commitment and its dimensions with respect to their years of
teaching experience
Sum of Mean F-
Variables Category groups df Sig Remark
Squares Square Value
Between groups 23.321 2 11.661
Commitment to
Within groups 35513.278 758 0.249 0.780 NS
students 46.913
Total 35536.599 760
Between groups 144.885 2 72.442
Commitment to
Within groups 28329.314 758 1.936 0.145 NS
Profession 37.423
Teaching Total 28474.199 760
Experience Between groups 421.647 2 210.824
Commitment to
Achieving Within groups 88177.463 758 1.810 0.164 NS
Excellence 116.483
Total 88599.111 760
Overall Between groups 1218.763 2 609.382
Professional Within groups 375977.04 758 1.227 0.294 NS
Commitment 496.667
Total 377195.81 760
(S-Significant, NS-Not Significant, Significant at 0.05 level)
155
It is inferred from the above table 4.24 that the calculated F-values for dimensions
commitment to achieving excellence are (0.249), (1.936) and (1.810) respectively which is
less than the critical F-distribution value (3.00) at 0.05 level of significance. Hence there
The above table also reveals that the calculated F-value for overall professional
commitment is (1.297) which is less than the table value (3.00) at 0.05 level of significance.
Hence the formulated null hypothesis H0 6 (i) is accepted and that there is no significant
difference among primary school teachers’ professional commitment and its dimensions
H0 6 (ii) There is no significant difference in professional commitment and its dimensions of primary school teachers with respect to
their locality
Table 4.25
Significant difference among primary school teacher’s professional commitment and its dimensions with respect to their years of locality
Sum of Mean F-
Variable Category Groups df Sig Remark
Squares Square Value
Between groups 88.183 2 44.092
Commitment to
Within groups 35489.339 758 0.942 0.390 NS
students 46.820
Total 35577.522 760
Between groups 108.432 2 54.216
Commitment to
Within groups 28382.955 758 1.448 0.236 NS
Profession 37.445
Total 28491.388 760
locality
Between groups 441.964 2 220.982
Commitment to
Achieving Within groups 88312.339 758 1.897 0.151 NS
Excellence 116.507
Total 88754.302 760
It is inferred from the above table 4.25 that the calculated F-values for dimensions
commitment to achieving excellence are (0.942), (1.448) and (1.897) respectively, which
is less than the critical F-distribution value (3.00) at 0.05 level of significance. Hence there
The above table also reveals that the calculated F-value for overall professional
commitment is (1.670) which is less than the table value (3.00) at 0.05 level of significance.
Hence the formulated null hypothesis H0 6(ii) is accepted and that there is no significant
difference among primary school teachers’ professional commitment and its dimensions
H0 6(iii) There is no significant difference in professional commitment and its dimensions of primary school teachers with respect to
Table 4.26
Significant difference among primary school teachers’ professional commitment and its dimensions with respect to their type of school
Sum of Mean F-
Variables Category groups df Sig Remark
Squares Square value
Between groups 807.900 2 403.950
Commitment to
Within groups 34769.622 758 8.806 0.000 S
students 45.870
Total 35577.522 760
Between groups 587.208 2 293.604
Commitment to
Within groups 27904.180 758 7.976 0.000 S
Profession 36.813
Type of Total 28491.388 760
School Between groups 1687.203 2 843.602
Commitment to
Achieving Within groups 87067.099 758 7.344 0.001 S
Excellence 114.864
Total 88754.302 760
It is inferred from the above table 4.26 that the calculated F-values for dimensions
commitment to achieving excellence are (8.806), (7.976) and (7.344) respectively, which
is greater than the critical F-distribution value (3.00) at 0.05 level of significance. Hence
The above table also reveals that the calculated F-value for overall professional
commitment is (9.021) which is greater than the table value (3.00) at 0.05 level of
significance. Hence the formulated null hypothesis H0 6 (iii) is rejected and that there is
a significant difference among primary school teachers’ professional commitment and its
scheffe’s post hoc test for difference among primary school teachers’ professional
The above scheffe’s post hoc analysis reveals that the mean difference between
government school teachers and self-finance school teachers is (2.311), (1.970), (3.340),
(7.621) for professional commitment and its dimension such as commitment to students,
level of significance.
While comparing the mean scores of professional commitments and its dimensions,
self-finance school teachers (40.37), (36.51) (64.64), (141.52) and aided school teachers
(39.53), (35.77), (63.63), (138.93) are better than the government school teachers (38.06),
161
(34.54), (61.30), (133.90). Hence it is concluded that self-finance school teachers and aided
school teachers are significantly differed at professional commitment and its dimensions
H0 7 There is no significant difference among three types of schools in digital literacy with
respect to (i) gender (ii) educational qualification (iii) subject (iv) online teaching experience
Table 4.27
A two-way ANOVA analysis for significant difference among three types of schools in
digital literacy with respect to (i) gender (ii) educational qualification (iii) subject (iv)
Type III
Mean
variable category Sum of df F Sig Result
square
squares
type of school * 2
863.214 1124.77 0.506 0.603 NS
gender 760
type of school* 2
243.926 121.963 0.145 0.865 NS
edu.quali 760
2
type of school*subject 1540.009 848.347 0.908 0.404 NS
Digital 760
Literacy type of school*online 2
636.148 845.845 0.376 0.687 NS
te.ex 760
4
type of school*locality 3562.306 848.479 1.050 0.381 NS
760
type of school*Years 4
4881.415 842.851 1.448 0.216 NS
of TE 760
(S-Significant, NS-Not Significant, Significant at 0.05 level)
162
The above table reveals that the calculated F-value for type of school * gender
school*years of teaching experience (1.448) are less than critical F-distribution value
(3.00) at 0.05 level of significance. Hence the formulated null hypothesis H0 7 is accepted
and there is no significant difference among three types of schools in digital literacy with
respect to (i) gender (ii) educational qualification (iii) subject (iv)online teaching experience
thinking with respect to (i) gender (ii) educational qualification (iii) subject (iv) online
Table 4.28
A two-way ANOVA analysis for significant difference among three types of schools in
computational thinking with respect to (i) gender (ii) educational qualification (iii) subject
type of school * 2
249.980 267.870 0.464 0.629 NS
gender 760
type of school* 2
44.372 267.329 0.083 0.920 NS
edu.quali 760
type of 2
443.977 268.421 0.827 0.438 NS
school*subject 760
Computational
type of 2
Thinking school*online 230.106 267.752 0.430 0.651 NS
te.ex 760
type of 4
1064.622 268.669 0.991 0.412 NS
school*locality 760
type of 4
school*years of 1449.107 266.518 1.359 0.246 NS
te.ex 760
The above table reveals that the calculated F-value for type of school * gender
school*years of teaching experience (1.359) are less than critical F-distribution value
164
(3.00) at 0.05 level of significance. Hence the formulated null hypothesis H0 8 is accepted
thinking with respect to (i) gender (ii) educational qualification (iii) subject (iv)online
commitment with respect to (i) gender (ii) educational qualification (iii) subject (iv) online
Table 4.29
A two-way ANOVA analysis for significant difference among three types of schools in
professional commitment with respect to (i) gender (ii) educational qualification (iii)
subject (iv) online teaching experience (v) locality (vi) years of experience
type of school * 2
374.718 487.588 0.384 0.681 NS
gender 760
type of school* 2
645.088 322.544 0.663 0.516 NS
edu.quali 760
type of 2
846.485 489.022 0.865 0.421 NS
school*subject 760
Professional
Commitment type of 2
715.301 488.134 0.733 0.481 NS
school*online te.ex 760
type of 4
2480.748 488.796 1.269 0.281 NS
school*locality 760
type of 4
school*years of 3068.018 486.595 1.576 0.179 NS
te.ex 760
The above table reveals that the calculated F-value for type of school * gender
of school*years of teaching experience (1.576) are less than critical F-distribution value
(3.00) at 0.05 level of significance. Hence the formulated null hypothesis H0 9 is accepted
commitment with respect to (i) gender (ii) educational qualification (iii) subject (iv)online
Correlation analysis is used to find out the relationship between two variables.
The correlation co-efficient is valued in the field of education as the measure of relationship
between test scores and other measures of performance. In the present study, the correlation
analysis is used to find out the relationship between digital literacy and professional
Table 4.30
The above table reveals that there is positive significant relationship among primary
school teacher’s digital literacy and professional commitment. The calculated r value for
digital literacy and professional commitment is 0.878 at 0.01 significant level. Hence the
Table 4.31
Professional Commitment
Variables Commitment to
Commitment Commitment
achieving
to student to profession
excellence
Comprehension 0.785** 0.814** 0.835**
Digital
Interdependence 0.819** 0.862** 0.876**
literacy
Curation 0.811** 0.844** 0.861**
(S-Significant, NS-Not Significant), (** Significant at 0.01 level)
The above table reveals that there is positive significant relationship between
excellence (0.876), curation and commitment to student (0.811), curation and commitment
significant at 0.01 level. Hence the formulated null hypothesis H0 11 is rejected and there
Table 4.32
The above table reveals that there is positive significant relationship among primary
r value for computational thinking and professional commitment 0.923 significant at 0.01
level. Hence the formulated null hypothesis H0 12 is rejected and there is a significant
school teachers.
168
Table 4.33
Professional Commitment
Variables Commitment to
Commitment Commitment
achieving
to student to profession
excellence
The above table reveals that there is positive significant relationship between
r value for abstraction and commitment to student (0.843), abstraction and commitment
(0.889), analysis and commitment to achieving excellence (0.901), are significant at 0.01
level. Hence the formulated null hypothesis H0 13 is rejected and there is a significant
Table 4.34
From the above table, it is inferred that there is a significant correlation between
school teachers.
Multiple Linear Regression Analysis is used to find out the influence of digital
Table 4.35
Coefficients
Unstandardized Standardized
Coefficients Coefficients
Model t Sig.
B Std. Error Beta
a. Dependent Variable: PC
In this table 4.35 the Standardized beta indicates that the relative contribution of
Model Summary
Adjusted R
Model R R Square Std. Error of the Estimate
Square
a. Predictors: (Constant), DL
171
From the above table, it is inferred that 77.1% (adjusted R2 =0.771) of variation in
variable’s digital literacy. The remaining 22.9% can be explained by unknown, hidden
Table 4.36
Coefficients
Unstandardized Standardized
t Sig.
Model Coefficients Coefficients
B Std. Error Beta
(Constant) 15.051 1.304 11.538 .000
Comprehension .954 .041 .357 23.107 .000
Interdependence .645 .025 .439 26.069 .000
Curation .709 .050 .261 14.075 .000
a. Dependent Variable: PC
In this table 4.36 the Standardized beta indicates that the relative contribution of
Model Summary
From the above table, it is inferred that 92.5% (adjusted R2 =0.925) of variation in
of digital literacy. The remaining 7.5% can be explained by unknown, hidden variables, or
digital literacy and its dimensions in professional commitment of primary school teachers.
Table 4.37
Coefficients
Unstandardized Standardized
Model Coefficients Coefficients t Sig.
B Std. Error Beta
(Constant) 16.202 1.877 8.630 .000
CT 1.234 .019 .923 65.914 .000
a. Dependent Variable: PC
In this table 4.37 the Standardized beta indicates that the relative contribution
professional commitment.
Model Summary
Predictors: (Constant), CT
From the above table, it is inferred that 85.1% (adjusted R2 =0.851) of variation in
school teachers.
174
Table 4.38
Coefficients
Unstandardized Standardized
t Sig.
Model Coefficients Coefficients
B Std. Error Beta
(Constant) 8.225 1.485 5.537 .000
Abstraction 1.239 .050 .477 24.729 .000
Analysis 1.374 .051 .521 26.989 .000
Dependent Variable: PC
In this table 4.20 the standardized beta indicates that the relative contribution of
on percentage of Abstraction (47.7), and Analysis (52.1). Thus, these variables have
Model Summary
From the above table, it is inferred that 91.2% (adjusted R2 =0.912) of variation in
variable’s digital literacy. The remaining 8.8% can be explained by unknown, hidden
Table 4.39
Coefficients
Unstandardized Standardized
Model Coefficients Coefficients t Sig.
B Std. Error Beta
In this table 4.11 the Standardized beta indicates that the relative contribution of
based on percentage of digital literacy (30.4), computational thinking (65.7). Thus, these
Model Summary
b. Dependent Variable: PC
From the above table, it is inferred that 87.3% (adjusted R2 =0.873) of variation in
variable’s digital literacy and computational thinking. The remaining 12.7% can be
rejected and there is a significant influence of digital literacy and computational thinking
4.6 CONCLUSION
In this chapter, the investigator clearly described the results obtained from the
quantitative analysis of the data. A summary of the findings of the study, followed with
discussion, recommendation based on the present study, possible areas for the further