Relationship of Student Participation and Punctuality in Their
Performance in E-Learning Sessions in the Current COVID-19
Context
Ernesto Hernández-Martínez
1a
, Zury Sócola
2b
, Luz Atoche
2c
,
Vicente Amirpasha Tirado Kulieva
2d
, Lucia Pantoja-Tirado
3e
and Walter Hernández
4f
1
Universidad Nacional de Jaén, Jaén 06801, Peru
2
Universidad Nacional de Frontera, Sullana 20103, Peru
3
Universidad Nacional Autónoma de Tayacaja Daniel Hernández Morillo, Tayacaja 09156, Peru
4
Notaría Hernández, Jr. Ricardo Palma 680, Bagua 01621, Peru
walter@notariahernandez.com.pe
Keywords: Tardiness, Final Grade, Synchronous Virtual Teaching, Food Industry Engineering, Food Technology Course.
Abstract: The attitudes of the students of the Food Technology course of the Faculty of Food Industry Engineering of
the National University of Frontier were evaluated (Universidad Nacional de Frontera, 2021). This study
conducted during the current health crisis by COVID- 19 covered all 32 synchronous virtual classes of the
2020-I academic semester. It was determined that, although internal motivation is not considered in the
development of the subject, it does influence the final grade. It was hypothesized that the independent variable
"Cognitive behavior", considered as the number of participations minus the number of tardies, which were
grouped in three levels: positive, neutral or negative, influences the dependent variable "Student performance"
whose results were grouped in two levels: pass or fail. According to the results obtained with the chi-square
test with a contingency value of 0.02 lower than 0.05, it was determined that the students's.
1 INTRODUCTION
The transition of the educational era to a completely
digital system due to the current global health crisis
generated by COVID-19 (IESALC, 2020) has
produced the need for evaluations of teaching and
learning through synchronous virtual sessions using
various video call services, being Google Meet one of
the most common, allowing, in addition, follow up on
student participation and attendance.
To facilitate the visualization of these
synchronous sessions, but asynchronously, they are
recorded on platforms such as Moodle, however, this
technique was not considered in this study.
a
https://orcid.org/0000-0003-3839-3244
b
https://orcid.org/0000-0002-5814-6497
c
https://orcid.org/0000-0002-2901-2326
d
https://orcid.org/0000-0001-8534-9153
e
https://orcid.org/0000-0001-9157-6088
f
https://orcid.org/0000-0001-9204-3814
The "Cognitive behavior" of the students,
considered as the independent variable, is an indicator
obtained from the difference between the number of
student participations (Alqahtani and Rajkhan, 2020)
and tardiness (Davis, 2006) during the development
of the subject, acquired through the record registry in
Excel during each session and whose levels of the
variable were: positive, neutral or negative. The
participations were evaluated by means of the
interpretative reading methodology applied by the
teacher based on lessons of 15 to 20 minutes, in
addition to the interventions in each learning session,
but in a smaller proportion. On the other hand,
unpunctuality was evaluated by noting the absence of
students up to 15 minutes after the class had started.
Hernández-Martínez, E., Sócola, Z., Atoche, L., Kulieva, V., Pantoja-Tirado, L. and Hernández, W.
Relationship of Student Participation and Punctuality in Their Performance in E-Learning Sessions in the Current COVID-19 Context.
DOI: 10.5220/0011825100003612
In Proceedings of the 3rd International Symposium on Automation, Information and Computing (ISAIC 2022), pages 27-30
ISBN: 978-989-758-622-4; ISSN: 2975-9463
Copyright
c
2023 by SCITEPRESS Science and Technology Publications, Lda. Under CC license (CC BY-NC-ND 4.0)
27
The "Student performance" established as the
dependent variable (Perveen, 2016) and whose two
levels were: pass and fail, was obtained from the
evaluation of the two partial exams, two graded
practices and a formative research work during the
development of the two units of the semester.
Adding the previous contributions to the
consideration that participation and punctuality are
not evaluated in the course, but it is intended to
demonstrate that they do represent a cognitive
influence for the determination of the performance.
2 METHODOLOGY
2.1 Type of Research
Applied, given that during the 32 sessions all students
were evaluated in an auxiliary excel register. During
all the sessions of the semesters, the independent
variable was evaluated, forming its result.
2.2 Hypothesis
Null hypothesis (Ho): Cognitive behavior does
not significantly influence student performance
on the subject evaluation.
Alternative hypothesis (Ha): Cognitive
behavior significantly influences student
performance on the subject evaluation.
2.3 Experimental Group
Seventy-six students of the Food Technology course
of the Faculty of Food Industry Engineering of the
National University of Frontier, Sullana, Piura, Peru,
during the 2020-I virtual academic semester.
2.4 Variables
2.4.1 Independent Variable: Cognitive
Behavior
The independent variable was obtained through the
difference between student participation in class
(considering voluntary readings during the teacher's
interpretive reading methodology and significant
interventions during class) and tardiness, considering
a tolerance of 15 minutes after the start of class.
Student tardiness was counted before the end of the
class, in order to eliminate absent students to avoid
possible errors and to ensure the accuracy of the
values. The operationalization of the cognitive
behavior (CB) is detailed in Table 1.
Table 1: Levels of the independent variable cognitive
behavior.
Level of variable Decision criterion
Positive CB>0
Neutral CB=0
Ne
g
ative CB<0
2.4.2 Dependent Variable: Student
Performance
The two levels of this dependent variable were: pass
or fail. The value can range from 0 to 20, and a student
is considered to have passed if his or her final grade
is greater than or equal to 10.5, and if it is lower, he
or she is considered to have failed the course. Table 2
shows the levels of the dependent variable.
Table 2: Levels of the dependent variable student
performance.
Level of variable Decision criterion
Pass Values greater than or
e
q
ual to 10.5 u
p
to 20
Fail Values less than 10.5 to 0
2.5 Experimental Procedure
Using a cross-check table, the students were counted
numerically and as a percentage, classifying the
independent variable “Cognitive behavior” and its
levels: positive, neutral and negative, as well as the
dependent variable “Student performance” with its
levels: pass and fail. In this sense, there are six
different response options.
2.6 Data Analysis
In order to verify that between the two variables under
study, which are cognitive behavior and student
performance, there is a significant relationship at the
95% confidence level, a chi-square test was
performed (Kuehl, 2001).
3 RESULTS
About the evaluated results shown in Table 3, we
have that in the first column are groups 1 and 2 that
correspond to two groups (morning and afternoon) of
the Food Technology I subject and while those in
group 3 correspond to Food Technology II.
Among the three groups there is a sample of
seventy-six students, in which the calculation of the
difference between participation and tardiness is
shown in order to determine the cognitive behavior,
ISAIC 2022 - International Symposium on Automation, Information and Computing
28
as well as the grades obtained corresponding to
student performance.
Table 3: Values obtained for cognitive behavior and student
performance.
T.G. S. P. T. C.B. S.P.
1
1
1
6
-5 10.0
1 2 2 4 -2 10.8
1 3 2 0 2 8.8
1 4 1 3 -2 11.4
1 5 2 7 -5 11.8
1 6 2 7 -5 8.2
1 7 1 0 1 13.4
1 8 2 3 -1 11.6
1 9 1 0 1 14.3
1 10 2 1 1 12.7
1 11 3 1 2 12.7
1 12 1 1 0 7.8
1 13 3 0 3 12.3
1 14 0 2 -2 1.8
1 15 0 7 -7 7.9
1 16 1 2 -1 11.8
1 17 1 6 -5 8.1
1 18 1 3 -2 9.6
1 19 3 0 3 12.6
1 20 1 1 0 9.7
1 21 2 1 1 11.2
1 22 5 1 4 10.1
1 23 0 4 -4 9.5
1 24 1 2 -1 9.3
1 25 3 4 -1 13.2
1 26 2 0 2 12.2
1 27 1 1 0 10.9
1 28 0 3 -3 10.5
1 29 1 0 1 8.1
1 30 2 4 -2 10.4
1 31 0 0 0 13.6
1 32 5 0 5 17.7
1 33 1 3 -2 8.5
1 34 1 4 -3 9.7
2 35 2 5 -3 9.7
2 36 6 1 5 12.9
2 37 0 2 -2 10.7
2 38 3 7 -4 8.6
2 39 0 2 -2 11.8
2 40 8 3 5 14.0
2 41 3 2 1 11.5
2 42 5 1 4 11.2
2 43 6 5 1 11.2
2 44 3 4 -1 10.4
2 45 1 8 -7 10.5
2 46 2 0 2 10.3
2 47 2 2 0 11.4
2 48 3 1 2 10.3
2 49 6 0 6 10.6
2 50 5 0 5 11.5
2 51 1 2 -1 12.1
3 52 0 0 0 10.7
3 53 2 4 -2 9.9
3 54 7 0 7 15.6
3 55 0 1 -1 11.9
3 56 1 5 -4 7.3
3 57 0 2 -2 9.9
3 58 3 1 2 11.2
3 59 2 3 -1 10.5
3 60 0 1 -1 6.8
3 61 2 4 -2 8.3
3 62 4 1 3 17.6
3 63 0 0 0 10.6
3 64 0 0 0 9.0
3 65 3 4 -1 10.7
3 66 3 7 -4 9.4
3 67 0 0 0 12.3
3 68 0 7 -7 8.0
3 69 0 1 -1 11.7
3 70 0 0 0 7.6
3 71 1 0 1 13.5
3 72 0 0 0 10.5
3 73 6 1 5 10.6
3 74 0 10 -10 9.7
3 75 0 4 -4 8.3
3 76 0 1 -1 10.8
Note: T.G. (Technology Group), S. (Student), P.
(Participation), T. (Tardiness), C.B. (Cognitive
Behavior), S.P. (Student Performance).
After interpreting the data shown in Table 3, the
data were grouped in a double-entry table according
to the levels of the variables. The results are shown in
Table 4.
Table 4: Double-entry results on students' final grades and
cognitive behavior.
Cognitive
Behavio
r
Student
Performance
Total
Level Pass Faile
d
Ne
g
ative Count 14 24 38
Total 18.4% 31.6% 50.0%
Neutral Count 7 5 12
Total 9.2% 6.6% 15.8%
Positive Count 21 5 26
Total 27.6% 6.6% 34.2%
Total Count 42 34 76
Total 55.3% 44.7% 100%
The Table 4 shows that in the negative assessment
the majority obtained a "failed" grade (31.6%), in the
positive assessment the majority obtained a "passed"
grade (27.6%) and the neutral attitudinal assessment
(0) out of 12 students, 7 obtained a "passed" grade and
5 obtained a "disapproved" grade.
Relationship of Student Participation and Punctuality in Their Performance in E-Learning Sessions in the Current COVID-19 Context
29
4 DISCUSSION
Table 5 shows the results of the Chi-square test, used
to determine if there is a significant relationship
between the independent and dependent variable.
As shown in Table 5, since the asymptotic
significance value of the obtained Chi-square of
0.002 is lower than the established significance level
of 0.05, it is established that the independent variable
"Cognitive behavior" significantly influences the
dependent variable "Student performance".
Likewise, since the asymptotic significance value
of the contingency coefficient (0.002) is also lower
than the significance level (0.05), it is ratified that
there is a significant relationship between the two
variables mentioned.
Table 5: Chi-square test.
Origin Value Degrees of
freedmon
Sig. asymp-
totic (2
sides)
Pearson's
Chi s
q
uare
12.103 2 0.002
Plausibility
ratio
12.741 2 0.002
Contingency
Coefficient
0.371 0.002
No. of valid
cases
76
5 CONCLUSIONS
The validity of the alternative hypothesis was
demonstrated, which proposed the existence of a
significant relationship between the independent
variable "Cognitive behavior" of the students and the
dependent variable "Students' performance" during
the development of the subject.
According to the results obtained through the chi-
square test, it was determined that, during
synchronous virtual teaching in the 2020-I academic
semester, cognitive behavior, represented by
participation and tardiness of students, has a
significant influence on their performance in the
courses evaluated.
REFERENCES
Alqahtani, A. Y., Rajkhan, A. A., 2020. E-Learning Critical
Success Factors during the COVID-19 Pandemic: A
Comprehensive Analysis of E-Learning Managerial
Perspectives. Education Sciences, 10(9), 216.
Davis, M., 2006. Group dynamics in the e-learning context:
online or off track? The East Asian Learner, 2, 1-11.
IESALC, 2020. COVID-19 and higher education: Today
and Tomorrow. Impact Analysis, Policy Responses and
Recommendations. UNESCO.
Perveen, A., 2016. Synchronous and Asynchronous E-
Language Learning: A Case Study of Virtual University
of Pakistan. Open Praxis, 8(1), 21-39.
Kuehl, R., 2001. Design of Experiments, Statistical
Principles of Research Design and Analysis, Thomson
Learning. Mexico, 2
nd
edition.
Universidad Nacional de Frontera, 2021.
http://www.unf.edu.pe/unf/
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