Spaced Learning Solution in the e-Learning Environment
Janis Kapenieks senior
a
and Janis Kapenieks junior
b
Distance Education Study Centre, Riga Technical University, Kronvalda bul. 1, Riga, Latvia
Keywords: e-Learning, Spaced Learning, Learning Management System, Personalization.
Abstract: The objective of the transdisciplinary research is to find the most effective solutions for spaced learning in
the e-learning environment and to create an information system for the implementation of spaced e-learning
in the learning management system (LMS). The method is based on short breaks (spaces) between repetitions
acquiring the learning content in the e-environment. During breaks, students disconnect from the learning by
watching engaging alternative content. During the research, the first prototype of spaced e-learning solution
was implemented in the LMS OpenEdX and brought into action with bachelor level students. Experience
from the first prototype showed the effectiveness of the method and advantages of personalization of the
content of spaces. Research showed the need to take personal interests into account for spaces’ content
personalization to motivate students to use the method in the learning process. In the light of the data obtained,
an information system (IS) for the personalization of the method was developed for use in several kinds of
LMS.
1 INTRODUCTION
The contemporary paradigm of education has
demonstrated serious changes during the last decades.
Increase of the importance of e-learning and blended
learning takes place during COVID-19 crisis. These
changes have caused serious technological
developments, challenges for motivation, and
improvements of cognitive solutions by new
pedagogical approaches to e-learning. The creation of
the “charisma” of learning management systems
(LMS) has become one of the most pressing needs for
e-learning designers, leading to the search for new
learning methods in digitalized education. One of
such methods is spaced e-learning, based on the use
of repetition effect.
Spaced learning is a pedagogical approach based
on the positive learning effect from spaced repeating
the learning content in different forms several times -
as text, video, multimedia, exercises, educational
games, and others. The first research on the spacing
effect was published by psychologist H. Ebbinghaus
(Ebbinghaus, 1885). Delays between repetition in
Ebbinghaus’s research increased as follows: the first
repetition was included after 1 hour, the second after
a
https://orcid.org/0000-0001-6244-2355
b
https://orcid.org/0000-0001-6067-0688
5 hours, the third after 1 day, the fourth after 3 days,
and so on, the tenth repetition after eight months.
Ebbinghaus found the spaced approach more
effective than massive repetition of the learning
content (Ebbinghaus, 1885). Many studies support
these findings (Pashler, Rohrer, Cepeda, & Carpenter,
2007; Quinn, 2011; Carpenter, Cepeda, Rohrer,
Kang, & Pashler, 2012; Kang, 2016). Typically, the
spacing approach takes a long time for learning.
Research showed a strong relationship between
duration of spaces and knowledge retention time
(Cepeda, Vul, Rohrer, Wixted, & Pashler, 2008).
Suspending the spaced learning study time by
shortening the duration of breaks becomes as
essential challenge for spaced e-learning design. The
latest research showed the effectiveness of short
spaces (Kelley & Whatson, 2013). It is important that
during spaces learners are offered with alternative
engaging content allowing to disconnect from the
study subject.
Implementation of the spaced learning e-learning
practice has created new challenges for learning
methods and the design of LMS.
senior, J. and Kapenieks junior, J.
Spaced Learning Solution in the e-Learning Environment.
DOI: 10.5220/0010403901690176
In Proceedings of the 13th International Conference on Computer Supported Education (CSEDU 2021) - Volume 2, pages 169-176
ISBN: 978-989-758-502-9
Copyright
c
2021 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
169
2 EFFECTIVENESS OF THE
SPACED LEARNING
2.1 Neuroscience Considerations on the
Spaced Learning
Neuroscience findings support the spaced learning
methodology. Research shows interconnections
between the acquisition of new information and the
activation of several brain systems. Initially it was
considered that the dopamine system is a transmitter
for good feelings and euphoria, because the use of
drugs causes an increase of the dopamine level in
particular segments of the brain. In general, the
dopamine system is a group of nerve cells, most of
which are located deep in the midbrain. The
neurotransmitter dopamine is sent across the brain.
Following research shows that dopamine’s presence
in the brain cells is essential for the regulation of
movement, attention, motivation and emotional
responses (Roediger & Karpicke, 2006), including
learning and memory (Poldrack, 2010). Dopamine
secretions help to improve the function of the
working memory, because the main part of the brain
– the prefrontal cortex is associated with higher-
ordered thinking. The dopamine level in the
prefrontal cortex is extremely delicate and slight
increases or decreases of the level comparing to the
normal level may cause a significant impact on the
memory (Roffman et al., 2016).
2.2 Cognitive Sciences on the Spaced
Learning
The positive cognitive effect of spaced e-learning is
supported by cognitive neuroscience findings.
Repetition of the stimuli, separated by timed spaces
without stimuli can initiate long-term potentiation
and long-term memory encoding in the human brain
(Kelley & Whatson, 2013). Long-term potentiation in
neuroscience is defined as persistent strengthening of
synapses, based on recent patterns of activity. These
are patterns of synaptic activity that produce a long-
lasting increase in signal transmission between two
neurons. Long-term potentiation is widely considered
as one of the major cellular mechanisms that underlie
learning and memory (Cooke & Bliss, 2006).
According to the Atkinson-Siffrin memory model
(Atkinson & Shiffrin, 1968), at the beginning of the
learning process information is processed by the
sensory memory something is perceived through
senses, as sight, hearing, sensations. Then it is
transferred to the short-term memory or forgotten,
depending on how much attention this information is
given. From the short-term memory, information is
encoded to long-term memory or forgotten, if the
encoding is not carried out. Continued rehearsal of
information strengthens the memory trace and
prevents from forgetting.
P. Smolen et.al. (Smolen, Zhang, & Byrne, 2016)
summarizes traditional cognitive theories – encoding
variability theory, study-phase retrieval theory, and
deficient-processing theory in the context of spaced
learning. Encoding variability theory interprets the
effect of spacing so that a variety of information,
stored with spaced presentations, results in a bigger
variety of information retrieval routes, considering,
that, as the lag between repetitions increases, the
memorial representations approach obtains more
independence (Bray, Robbins, & Witcher, 1976).
Contextual-variability theory explains the spacing
effect as a repeated representation in the different
contexts additionally to the representations of the
information item itself in the learner’s memory. The
effectiveness of the spacing effect is realized as the
function of the number of contexts, available in the
memory trace of spaced repetitions (Verkoeijen,
2005). Deficient processing theory predicts longer
time intervals between learning sessions, deactivating
of the item in the memory of the learner. Learners pay
more attention to spaced repetitions of an item
because the content item is not as active in memory
(Smolen et al., 2016). In the consolidation theory,
creative thinking and reflection on the previous
information are essential. Consolidation theory is
closely linked to the constructivist epistemological
approach in the spaced face-to-face learning as well,
as to the spaced e-learning methodology (Verkoeijen,
2005). Most of the theories support the viewpoint that
effectiveness of the spaced learning is related to the
duration of spaces between repeated content items.
Several experiments support this consideration
(Schimanke, Ribbers, Mertens, & Vornberger, 2016;
Kerfoot et al., 2010; Cepeda et al., 2008).
Experiments of Kelley and Whatson (Kelley &
Whatson, 2013) showed that short-spaced learning
with spaces of 10 to 20 minutes is optimal for forming
long-term memory. This approach is the most
appropriate for e-learning, so it is used in our study.
3 CONTENT OF REPETITIONS
AND SPACES
C. Pappas (Pappas, 2016) emphasizes improvement
of knowledge retention, the involvement of real-
CSEDU 2021 - 13th International Conference on Computer Supported Education
170
world applications in the learning process, and
reduction of cognitive overload as the most
significant advantages of the spaced e-learning
pedagogical approach. The author proposes the
following five tips for the design of the spaced e-
learning courses: (1) the use of reminders or memory
aids, (2) building knowledge on the previously
learned, encouraging learners to active recall of
knowledge, (4) integration of spaces “disconnecting”
from the learning content into course design and (5)
to find new ways of information delivery. Prasad and
Omer (Prasad & Omer, 2019) found that branched
scenarios, simulations, and game-based designs make
learners willing and active participants in the learning
experience. Branched scenarios include contexts in
real-life situations, forcing intelligent decisions.
Educational games serve for the activation of the
competitive spirit of learners, motivating to active
application of knowledge. Hanson and Brown
(Hanson & Brown, 2020) tested flashcards as an
effective application for spaced e-learning. “These
strategies can be incorporated in microlearning
modules and “pushed” to learners at regular intervals
to promote spaced learning” (Prasad & Omer, 2019).
Melamed (Malamed, 2019) emphasizes the
importance of the diversification of the content
delivery forms and design, as well as content
generated by users.
Most often the spaced e-learning was
implemented in foreign language learning (Seabrook,
Brown, & Solity, 2005; Sobel, Cepeda, & Kapler,
2011) and medical studies (Shaw, Long, Chopra, &
Kerfoot, 2011)., learning content delivery by e-mail
was used for repetitions in most cases. Our research
tested the applicability of the method in STEM and e-
pedagogy course, where it is necessary to acquire a
large amount of theory or instructions. The content of
spaces was placed in the e-learning environment. A
methodology and information system for spaced
learning in the business course also has been
designed.
4 THE FIRST PROTOTYPE OF
SPACED E-LEARNING
The first prototype of spaced e-learning was
implemented in the OpenEdX LMS, designed for the
massive online open courses approach (MOOC).
There are three essential questions to answer for
successful implementation of the method:
1. What form of repetitions’ content do students
prefer?
2. Do students prefer mandatory or voluntary
breaks?
3. What content of spaces do students prefer?
The content was delivered as text, graphics, video,
simulations, and exercises with feedback.
The content of spaces is voluntary and designed as
engaging material in different forms:
1. "Space" without offered content.
2. "Space" with a YouTube music video
3. "Space" with a YouTube video about attractive
adventures and events
4. "Space" with a YouTube beautiful nature video
5. "Space" with an easy-to-understand additional
course material video
6. "Space" with an easy-to-understand additional
course material with interactivities
7. "Space" with an interactive educational game or
interactive model
8. "Space" with a talking head on an easy-to-
understand attractive topic
9. "Space" with an optional additional material on
the subject of the course
10. "Space" with videos on topics identified in the
student survey
The prototype was implemented in two blended
learning master-level courses for Digital Humanities
program students during the first and second
semesters 2018/2019 and 2019.2020. The bachelor
level background for most students was foreign
language studies, STEM or social sciences. Spaced e-
learning was realized in the MOOC type e-learning
environment OpenEdX design of Natural Science
modelling (14 and 20 students) and E-pedagogy (13
and 17 students) courses. The blended learning
process included face-to-face classes for introduction
to the topic and discussions, and acquirement of
theory in LMS OpenEdX. During the second year of
the research learning was heavily affected by the
COVID-19 crisis and face-to-face classes replaced by
the ZOOM webinars.
5 STUDENTS’ OPINIONS
After the first study year, students were asked to
evaluate spaced e-learning solution. Most of students
- 73 % preferred voluntary spaces.
The diagram in Figure 2 shows that only 73% of
the students take the choose to discontinue learning
by the recommended built-in content of the spaces.
Spaces must “disconnect” learners from learning
content for short time, but prevent them from
distracting from the acquisition of the learning
content. 64 % of the surveyed students admitted that
Spaced Learning Solution in the e-Learning Environment
171
Figure 2: First action research cycle, students' answers
about the use of spaces.
sometimes they stopped learning after watching
content of space.
All second year students admitted that they would
be engaged to watch personalized material, suitable
to their interests.
The lecturer’s experience showed the high
importance of face-to-face interaction with students
for the explanation of the advantages of the spaced
learning method and encouraging them to use it.
Metacognitive skills of students allow to increase
effectiveness of the method. After successful
finishing of the course, students expressed
controversial opinions on the method – ranging from
“It's good to have a space!to a desire to learn the
material without breaks. However, the vast majority
rated the learning method positively.
The small number of students does not allow to
consider the results of the survey as statistically
significant, however, it helps to draw conclusions
about the principles of using the method in a
particular group. Individual discussions with students
supports conclusions as well.
6 CONCEPTUAL DESIGN
PERSONALIZED SPACED
E-LEARNING LMS
6.1 Design of the Information System
The design of the personalized LMS is based on the
experience and students’opinions from the first
implementation of the prototype.
Figure 3 shows a flowchart of the information
system for the implementation of personalized spaced
e-Learning. Content of spaces is related to the
interests of each learner.
The system includes
A dataset of user profiles, described by
metadata, characterizing personal interests of
the learners.
A dataset of the content of spaces, characterized
by metadata.
Assessment of learners’ interests is carried out by
a poll at the beginning of the course and users’
behavior data from the e-learning environment.
Personal interest’s metadata are added to the profile
of each learner and stored in the database.
The content of the spaces is created by the
educator and learners and uploaded to the database.
Metadata, characterizing the content of every space,
is added to the spaces’ content database.
Figure 3: Flowchart of information system for
implementation of personalized spaced e-Learning.
The information system provides the most
appropriate choice of content of spaces during the
learning process in the e-learning environment for
each learner personally. The information system
analyses user behavior data of every learner while
browsing spaces, to improve the choice of the content
for the space by personalization or spaced e-learning.
6.2 Linking Users’ Interests with the
Content of Spaces
It is essential that the spaced learning information
system can be used in various LMS. Because of this,
an application for the personalization of the content
of spaces was designed using Google Drive tools.
The following stages of personalization were
implemented:
1. Assessment of the students’ interests and
uploading this data in the user profiles database,
2. Creation of engaging content of spaces such as
YouTube video, Prezi presentation or other,
3. Adding metadata to the content of spaces and
uploading this data to the of Spaces’ content
database,
4. Identification of the most relevant spaces’
content to the interests of each student.
5. Creation of a database for implementation of
personalized spaces’ content in the LMS.
CSEDU 2021 - 13th International Conference on Computer Supported Education
172
Google form is used for assessment of students’
interests. Interests are clustered as follows:
1. Educational interests information
technologies, humanities, history, geography,
social sciences, ecology, arts, research
activities, engineering.
2. Professional interests: technologies, marketing,
service, organization of events.
3. Entertainment: fiction, science fiction,
traveling, participation in mass events, social
networking, driving, and tuning, hunting, fish-
catching, sports, computer gaming.
Each student rates the level of every interest on
the levels one to five points (1- not interested, 5- very
interested). The students are identified in accordance
with ID number. At the beginning of the course,
students are asked to create a five to ten minutes long
engaging material video, Prezi presentation, Google
slides or other corresponding to their individual
interests. An attractive form of the design of the
content is strongly recommended. In some cases, this
material can be related to the topic of the course. Each
students shares created material with others. Then
each student fills out Google form, providing a link to
it, describing the content and adding metadata.
Metadata consists of the same keywords and rating
levels as the characterization of the student’s
interests. The student’s ID, evaluation of interests,
links to engaging material, and keywords are
uploaded to the Google spreadsheet for further
processing and creation of the content personalization
database.
The relevance of a particular material (identified
by i) to the interests of each student is characterized
by coefficient C
s
C
si
=I
s1
*K
mi1
+I
s2
*K
mi2
+…+I
sn
*K
min
Where
I
s1
is a self-evaluation level of the first
interest (1 to 5) by the student,
K
mi1
is the first
keywords “rating” level (rated from 1 to 5) of the
engaging material, identified with i. If each student
created an engaging material, the maximal value of i
corresponds to the number of students. If the method
is used in other courses, groups, or the next year – the
number of engaging materials increases, making the
choice richer.
An example of the calculated coefficients C
si
for
materials created by 13 students for the student Jānis
Bērziņš (virtual personality) is shown in Table 1. The
coefficients are listed in descending order. The
engaging YouTube video or Prezi presentations will
be placed in the course as content of spaces for the
student, starting from the second row.
For example, the course “Business
Fundamentals” includes 8 spaces, and the student
Jānis Bērziņš will watch the materials listed on rows
2 to 9.
Implementation of the spaces’ content in the
course is provided by the personalization function of
LMS. In our research, it is designed in the Moodle e-
learning environment.
Table 1: Example of the calculated coefficients C
si
for
materials created by 13 students for the student Jānis
Bērziņš (virtual personality) in the Google spreadsheet.
6.3 Spaces’ Content Personalization in
the Moodle LMS
In base use case Moodle LMS generates static content
from data stored in Moodle database. Content is
generated and presented to Moodle user upon content
page request. This content generation approach
provides limited options for content personalization.
The following personalization are approaches
currently available on Moodle LMS:
1) Moodle plugin FilterCodes (Moodle, 2020a)
provides customization and personalisation
options for Moodle LMS site and course content
using predefined text tags. This allows Moodle
content creator insert specific values from user
profile data such as student ID, firstname,
lastname, country, etc. This provides learning
content personalization limited to personalized
welcome messages.
2) Second approach provides more extended
personalization options. This is achieved
through "Restrict Access” feature. This feature
enables content creator to restrict access to
Moodle activities, content according to
conditions specified. The conditions can be date,
student group id, grade, etc. (Moodle, 2020b).
This feature allows creation of multiple
content/activities assigned to specific student
Spaced Learning Solution in the e-Learning Environment
173
groups and/or based on student’s level of
knowledge.
The methods mentioned above provide limited
personalization options for spaced learning approach.
"Restrict Access” feature could provide required
functionality but requires extra manual work and
scalability options are limited for large number of
students.
Moodle LMS FilterCodes plugin provides limited
personalization options but we will use it for spaced
learning content personalization tool.
Moodle LMS personalized spaced learning
content injection tool has three main components:
1) EMBED TAG in Moodle LMS content,
2) HTML Content generation script,
3) External data repository.
The first component of spaced learning content
injection tool is HTML EMBED TAG (W3schools,
2020). The EMBED TAG is included in Moodle
content page as placeholder for personalized content
and it contains all the information required for the
content generation. The current setup (spaced
learning content) requires two variables: student ID
and section ID. Any other student specific variables
can be included such as student ID, firstname,
lastname, group ID, etc. EMBED TAG calls a PHP
script located on Moodle server. This generates
content using parameters included and embeds it in
the content area enclosed by the TAG. Technically
embedded content is created externally in injected
into Moodle content.
A preinstalled Moodle plugin FilterCodes
(Moodle, 2020a) is required for the EMBED TAG
functionality. As described before FilterCodes plugin
is the first step in content personalization enabling
insertion of plain text tags in Moodle content site. The
inserted plain text tags are translated into requested
values such as students firstname, lastname, Id, and
other data from student’s profile. EMBED TAG is
inserted in Moodle learning content (by switching
Wysiwyg editor into HTML mode) in format
displayed below:
<embed frameborder="0"
src="https://artss.mii.lv/local/customc
ontent.php?firstname={firstname}&lastna
me={lastname}&userid={userid}&spaceid=3
" width="900 " height="500">
All the values included in the TAG are sent to the
content generation script (firstname, lastname, user
id, space id). Width and height variables provide extra
formatting options. Personalized content generation
will be based on these values only. The content
generation script will not be able to access any other
information from Moodle site.
This is the script written in PHP7 (PHP, 2020)
generates personalized content in HTML based on
parameters included in the EMBED TAG. Any other
programming language or online service can be used
for this task. The only requirement is the
script/service has to be able accept variables from the
EMBED TAG and return content in HTML format.
The content generation script performs the following
tasks:
1) Content generation script receives variables
from the EMBED TAG and validates them.
2) It requests personalized data from Google
Sheets using PHP library Google PHP API
Client Services (“Github,” 2020). Data request
includes an authorization request and a data
query after.
3) It generates HTML content using data from
Google Sheets and returns it to EMBED TAG
located in learning content.
All personalized data is stored and managed by an
external data repository. We use Google Sheets as it
provides flexible environment for testing different
algorithms using formulas and data analysis tools.
Google Sheets lists all the locations of spaced
learning personalized content and assigns it to a
specific student ID using a set of Google Sheets
functions. System can be adapted to use a database
instead of Google Sheets for complete integration in
Moodle LMS.
7 EVALUATION OF THE SPACED
E-LEARNING OUTCOMES
Two essential sections of the learning outcomes must
be evaluated to understand the success of the
personalization of the spaced learning method in the
e-course:
1. Fitness of the course to the individual needs of a
particular student.
2. Fitness of the course design to its objectives.
Most appropriate to for characterizing adequacy
of the course to the learners’ needs and course
objectives is TELECI method, created by the Riga
Technical University (Kapenieks et al., 2020).
Designed in accordance with spaced e-learning
method, a graphical representation named
“Telecides” is the appropriate way for evaluation of
the course effectiveness in the e-learning
environment. The authors split each unit into small
subunits, including indicative multiple-choice
questions at the beginning of the subunit and similar
diagnostic questions at the end of each subunit. The
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174
content of the subunit was available only after
submitting the appropriate indicative test. The design
of the subunit of the course in the e-learning
environment is shown in Figure 4.
Analysis of the results enabled recording,
tracking, and visualizing the students’ activity and
their answers to the questions after each subunit.
Analysis is conducted by the calculation of the
probability from retrieved user behavior data, as
shown in Table 2.
Figure 4: Structure of subunit for implementation of the
TELECI method in the LMS.
Table 2: Analysis from the calculation of the probability
from retrieved user behavior data.
Experimental
value
Answer to
indicative
question
Answer to final
question
N-P incorrect correct
P-P correct correct
N-N incorrect incorrect
P-N correct incorrect
The authors of the method provided the following
“ideal” experimental average probability values for
the characterization of the course, if each multiple-
choice question has three answers (Kapenieks et al.,
2020):
1. Too complicated: N-P =0.222; P-P=0.111;
N-N=0.444; P-N=0.222
2. Too easy: N-P =0; P-P=1; N-N=0; P-N=0
3. Perfectly matching to learners’ needs:
N-P =0.667; P-P=0.333; N-N=0.444; P-N=0
The method allows the data to be interpreted
graphically (Figure 5).
Figure 5: Graphical interpretation of “telecides” for
evaluating course content and design (Kapenieks et al.,
2020), author’s additions.
8 CONCLUSIONS
With the growing importance of online learning, the
introduction of pedagogical findings in the e-learning
environment is becoming increasingly important.
Neuroscience and cognitive sciences findings show
spaced e-learning method as an effective approach for
improvement of knowledge acquisition. After
implementation of the method in the LMS most
students rated spacing of the content positively. The
effectiveness of the method depends on the duration
of spaces. Short spaces 10 to 20 minutes between
repetitions of the learning content is implemented in
e-learning to improve the acquisition of the subject
matter. Metacognitive skills and face-to-face
communication with the lecturer are essential in the
spaced e-learning practice. Learning content will be
split into short units and repeated two or three times
in different forms – text, video, simulations. The way
the content is presented should be as attractive as
possible.
It is recommended to adapt the content to the
individual interests of each student. If students create
interesting content themselves, it is engaging for
other students with similar interests.
An information system for the implementation of
personalized spaced e-learning approach in the LMS
can substantially facilitate the use of the method in e-
courses. Google applications as a component of such
an information system enable using the method in
different e-learning environments.
TELECI method, implemented in the LMS, is
powerful approach for evaluation of the fitness of e-
course content and design to the needs of learner to
reach learning objectives. TELECI method is used for
testing of effectiveness of spaced learning in the e-
courses.
Proposed information system could serve as the
tool for creation of the adaptive learning content as
well. Such method for designing of adaptive learning
courses is the topic for future research.
This work has been supported by the European
Regional Development Fund within the Activity
1.1.1.2 “Post-doctoral Research Aid” of the Specific
Aid Objective 1.1.1 “To increase the research and
innovative capacity of scientific institutions of Latvia
and the ability to attract external financing, investing
in human resources and infrastructure” of the
Operational Programme “Growth and Employment”
(No.1.1.1.2/VIAA/1/16/156).
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175
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