An Overview of Adaptive Learning Fee-based Platforms
Soukaina Hakkal, Ayoub Ait Lahcen
a
Engineering Sciences Laboratory, National School of Applied Science, Ibn Tofail University, Kenitra, Morocco
Keywords: Adaptive Learning, Adaptive E-learning Platforms, Personalized Knowledge.
Abstract: Because of the sanitary crisis created by the appearance of covid-19, the education system was forced to
change its system to a flexible online one; the adaptive e-learning has become the pedagogical model of the
first choice for successful education in the era of 2021. Adaptive e-learning platforms exist in abundance to
offer personalized knowledge to improve learners’ personal skills, respond to their needs, and satisfy their
interests, allowing them to master their learning. The core purpose of this paper is to provide the current state
of the art by reviewing the existing adaptive, fee-based learning platforms based on a survey that was
conducted to define the characteristics and features of each platform, with the vision to help learners choose
The most suitable adaptive e-learning platform.
1 INTRODUCTION
Everybody has the potential to learn; according to
Harold Pashler, different people learn information in
different ways, but the most successful way is to
provide learning depending on a student's individual
needs (Harold, McDaniel, Rohrer, & Bjork, 2008).
However, most of the learning models are based on a
standardized approach unsuitable for individualized
learning, ignoring the interests and abilities of each
learner; they present a course in the same way for
everyone. Benjamin Bloom (1984) has described the
effectiveness of individual “personalized” learning;
using it, we easily understand students' learning
experiences adapted to their individual needs, skills,
and interests. Therefore, to fill in the gaps in
traditional learning methods, the contemporary
education system has provided adaptive e-learning
methods; however it is difficult to apply them in
traditional education since it requires many resources,
and it is not practical to have one teacher for every
student. In addition, personalized learning is not yet
widespread in schools. Many aspects still need to be
researched. Nevertheless, this approach can help
reduce the stigma of adapted education and better suit
the needs of students with differences in learning
abilities.
Many e-learning platforms are available on the
internet; however, the provided material cannot solve
a
https://orcid.org/0000-0001-8739-3369
all learners’ problems due to the common syllabus
and monotonous learning styles (Abdalla & Dhupia,
Implementing Adaptive e-Learning Conceptual
Model : A Survey and Comparison with Open Source
LMS, 2019). At the same time, adaptive e-learning
platforms are among the technological innovations
that can effectively deal with this issue.
In adaptive education systems, the characteristics
of the learner are considered, and the learning
environment is appropriately adapted to provide
support and improvements to the learning process
(Khalid, Hagras, Alghazzawi, & Aldabbagh, 2017),
(Shute & Zapata-Rivera, 2012), (Oxman & Wong,
2014). These systems are attracting much attention
because of their capacity to deliver instructional
content and analysis by proactively adapting to
students' specific requirements and needs (Khalid,
Hagras, Alghazzawi, & Aldabbagh, 2017), (Shute &
Zapata-Rivera, 2012), (I., 2012).
This study will focus on evaluating some existing
adaptive fee-based learning platforms in higher and
secondary education, based on technical, pedagogical
features, and provided characteristics, as well as a
comparison between these adaptive e-learning
platforms. Therefore, twelve adaptive fee-based e-
learning platforms (Knewton, Smartsparrow,
Scootpad, Yokimi, Dreambox, Aleks, Claned, Lrnr,
Kinteract, Zzish, Embibe, Realizeit) were chosen to
complete this study.
222
Hakkal, S. and Ait Lahcen, A.
An Overview of Adaptive Learning Fee-based Platforms.
DOI: 10.5220/0010731400003101
In Proceedings of the 2nd International Conference on Big Data, Modelling and Machine Learning (BML 2021), pages 222-226
ISBN: 978-989-758-559-3
Copyright
c
2022 by SCITEPRESS Science and Technology Publications, Lda. All rights reserved
The rest of this paper is organized as follows. The
second section introduces similar works in emerging
systems, followed by a review and an analysis of the
platforms' pedagogical and organizational benefits
and drawbacks.
2 RELATED WORK
In the last few years, an immense need for adaptive
learning has been created, which has attracted the
attention of many researchers. Therefore, an amount
of effort has been made to review adaptive e-learning
systems outlined as follows. In (Akrivi, Christos, &
Maria, 2018), authors reviewed some learning
management systems (LMS), as well as content
management systems(CMS), namely Moodle,
ATutor, Drupal, Joomla and WordPress and
compared them based on many technical and
educational aspects such as ease to use, accessibility,
customization, interactions, usability, etc. the main
objective of their study is to provide useful
information to higher education to choose LMS or
CMS regarding their proper needs. In a similar
context, the study in (Abdalla & Dhupia,
Implementing Adaptive e-Learning Conceptual
Model : A Survey and Comparison with Open Source
LMS, 2019), provides a comparison among similar
LMS, for instance, EduBrite, TalentLMS, Edmods,
Sakai based on their features, practical feedback from
the students and instructor, and the target customer
size. The study aims to help university students and
instructors to choose a suitable learning management
system.
In (Kasim & Khalid, 2016), the authors discuss
multiple learning management systems, which are
Sakai, Blackboard, SuccessFactor, and SumTotal and
compare them based on several characteristics such
as integration with other systems, accessibility, users’
interactions, flexibility, synchronous and
asynchronous interactions, etc. This study provides a
conclusion on the selection of platforms to be adopted
by the higher education institution. The authors in
(Yilmaz & Erol, 2019) present a comparative study of
learning management systems and e-learning author
tools, which are preferred in Turkey, based on their
technical and educational features as well as
disadvantages to contribute positively. In (Florence,
Yan, Robert, & Carl, 2020), the authors present a
systematic review of research on adaptive learning
based on publication trends, instructional context,
research methodology components, research focus,
adaptive strategies, and technologies. The study in
(Abhinaw & Eswaran, 2018), reviews several
learning management systems, namely Adobe
Captive Prime, TalentLMS, Docebo, Litmos,
Coursemill, Moodle, Blackboard, Electronic
Educational Environment (EEE) LMS, based on a
comparison of the identified and essential features. In
this study (Tsolis, et al., 2010), the authors reviewed
some traditional learning management systems and
existing adaptive e-learning systems and propose
implementing a combined solution to benefit from the
advantages of both technologies.
3 FEE-BASED E-LEARNING
PLATFORMS
KNEWTON: Knewton is a personalized adaptive
platform headquartered in New York City, used by
more than 15 million students around the world. It
identifies and supports the process of continuous
personalized learning through knowledge maps and
real-time monitoring and response to student
interactions (communication, collaboration and
game), as well as identifying and bridging the
knowledge gaps while the students are doing
homework to get them where they need to go (Peng,
Ma, & Spector, 2019). In addition, Knewton is one of
the first platforms to actively put data analysis
technologies at the service of education (Osadcha,
Osadchyi, Semerikov, Chemerys, & Chorna, 2020).
SMARTSPARROW: Smartsparrow is a
platform that allows mentors to easily build
graphically rich online tutorials. They decide on the
structure of their courses, and the platform does the
rest. It is an intuitive authoring tool that offers real-
time interactive learning components; it provides the
student with a space adapted to their specific needs
using questions and feedback. Smartsparrow is based
in Sydney Australia, and over 700 leading institutions
trust it; this technology allows improving the e-book
offer to create new generation e-books that are more
attractive.
SCOOTPAD: Used by over 400 schools in the
USA, it provides a tool for teachers and
administrators to create adaptive learning playlists for
students. Students begin a unit by taking an
assessment; this assessment determines the student's
needs and weaknesses and what instruction the
student should receive in real-time. As the student
progresses, ScootPad adapts to his or her progress,
presenting different lessons, exercises and
assessments for each student. While students work,
data is sent in real-time to a teacher's dashboard.
An Overview of Adaptive Learning Fee-based Platforms
223
YOKIMI: Launched in November 2018 in
France, and installed by more than 10000 users; it is
the first pedagogical artificial intelligence that
represents a maths teacher in the form of an instant
messenger; it is an artificial intelligence that helps to
progress in maths for primary school students. This
chatbot begins by asking questions to determine the
level of the learner in order to adapt the exercises to
his or her needs. Yokimi allows ensuring
personalized monitoring, continuous support,
pedagogical explications, and using point-earning
exercises to motivate the students.
DREAMBOX: Dreambox Learning Math is an
interactive K-8 intelligent, adaptive and self-paced
mathematics platform, used in the USA and Canada
by nearly three million students and serving 120,000
teachers; it offers interesting hands-on activities
based on the principle of game theory. It creates a
personalized path for students based on the level they
have reached and adapts this path as students learn.
As learners complete the lessons, they earn coins,
which can be used to play games or customize their
avatars, wallpaper, and music (Carrie, 2020).
ALEKS: ALEKS stands for Assessment and
LEarning in Knowledge Spaces; it is an adaptive
learning system for mathematics, chemistry, and
business, used in the USA by more than 25 million
students throughout the world. At the core of Aleks is
an artificial intelligence engine that evaluates each
student individually and continuously. Aleks is only
adaptive in the outer loop, where it reinforces mastery
learning: students can only practice problems after
they have mastered all the required prerequisites.
Student interaction in Aleks is focused on selecting a
skill to master (Benjamin, et al., 2018).
CLANED: CLANED is a collaborative
application that creates a personal learning
environment for each student; it suits schools,
universities, and corporations; it is used by nearly two
million students in 2 000 schools across India and 15
customer countries. In this environment, the students
can study, collaborate and find learning materials that
correspond to their individual needs and skills
because CLANED builds on students' orientation and
learning strengths and identifies areas of
improvement.
LRNR: Lrnr is a cloud-based adaptive learning
platform used in the united states; it integrates
educational content with easy-to-use personal
learning tools, interactive assessments, customized
learning paths, and precise analysis to facilitate the
delivery of personalized learning experiences that
make studying and learning more powerful, efficient,
and engaging. Lrnr works by continuously and
seamlessly collecting and analysing huge quantities
of data in real-time as each student interacts with the
platform. Then, using a sophisticated combination of
cognitive analysis, artificial intelligence, machine
learning in order to determine each student's
strengths, weaknesses, knowledge gaps, and optimal
combinations of instruction and content (Aravind,
2015).
KINTERACT: Kinteract is an assessment
portfolio and platform that facilitates speedy
feedback and collaboration between educators and
their students and oldsters. Employed in the United
Kingdom by many schools, Designed for college
students between the ages of three and eighteen.
Driven by artificial intelligence, KINTERACT, the
digital learning platform permits following personal
development and academic performance at any stage
of the education journey.
EMBIBE: Embibe is a platform that allows
students to maximize learning outcomes, used in
India by 160 million subscribers. Among its many
offerings: adaptive practice, university videos, user
forums, news and information articles, and evaluation
tests that help students prepare for various
competitions. The platform supports different types
of tests for all levels of learning. As with all adaptive
teaching tools, Embibe works by personalizing
mentoring and academic guidance, offering each
student the course, assignments, and revisions most
suited to their needs.
ZZISH: ZZISH is a platform that supports over
two million students and 145,000 teachers in 170
countries. This tool allows teachers to quickly and
easily access information on the classroom and
student performance, so they can identify the most
important learning gaps and help individuals learn
better and faster based on their learning needs, more
effectively than ever before. A powerful feature of
Zzish is that, by displaying real-time data on the
electronic whiteboard in a fun and engaging way, it
can turn almost any application into an interesting
game for the whole class.
REALIZEIT: Realizeit is an adaptive learning
platform used in the United States; it enables one to
understand critical learner factors, quickly create the
right design and develop the learning product. A self-
learning engine that continually shapes the
experience to optimally deliver what each learner
needs to maximize their achievement. The Brandon
Hall Group acknowledged Realizeit as the winner of
the 2020 Excellence in Technology Award. Realizeit
has revolutionized the standard learning model by
adaptively integrating science and technology
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learning while preserving and amplifying the art of
teaching and learning.
Table 1 : Pros, cons & price of fee-based platforms.
Platfor
m
Pros Cons Prices
Knewton High
adaptivity.
High
customization
.
Limited
content &
low learner
autonomy
39.95$/sin
gle
course,
79.95$/m
ultiple
courses
Smartspar
row
High
adaptivity.
High learner
autonom
y
Limited
pedagogical
design style
39$/mont
h/author/3
0students
Scootpad High students
monitoring
Dull and
repetitive
ex
p
erience
3$/year/st
udent
Yokimi High
availability
A big
difference
in price
between the
premium
and
enhanced
p
acka
g
es
9,99$/mo
nth
Dreambox High
adaptivity
Annoying
advertiseme
nts
12,95$/m
onth/stude
nt
Aleks High learner
autonomy &
Integration
with LMS
Privacy
limitation
19,95$/m
onth
Claned Fast & easy to
use
Usability
challenges
(limited
guidance)
Not
provided
Lrnr Engaging
activities.
Available on
cloud &
mobile
Limited
learner
autonomy
30$ - 40$
/student
/year/sem
ester
Kinteract Safe & Easy
to use
interface
The
application
crashes
randoml
y
Not
provided
Embibe Easy to use
interface
Android
application
needs
improvemen
t.
Not
provided
Zzish
Real-time
interaction
The
application
crashes
randoml
y
5.75$/teac
her/month
billed
annuall
y
Realizeit High
autonomy
Limited
learner
autonom
y
Not
provided
Table 1 represents a set of advantages and
disadvantages of different fee-based adaptive e-
learning platforms, as well as their prices.
4 DISCUSSION
After reviewing the adaptive e-learning systems
presented previously, we found that some limitations
of existing platforms are related to the privacy,
repetitive contents, learner autonomy, or the need for
feedback based on learners’ social-emotional state.
This says a mechanism of sentiment analysis during
the learning process is needed for these platforms, as
well as integrating more attractive and diverse content
or different learning style will be useful to suit each
learning path and enhance efficiency and
performance.
From a technical angle, the platforms are
characterized by a user-friendly environment, not
requiring any technical or programming skills, an
easy deployment as well as offering a wide range of
customization options.
In addition, the fee-based platforms are featured
with a high adaptivity, high assessment, and high
collaboration, which means that the content can be
adapted to the learner’s data, with the capacity to
assess learning in collaboration with the educator to
maximize the engagement, such as Knewton,
Smartsparrow, Scootpad, Dreambox, Aleks, and
Zzish. However, most of these platforms are not
mobile compatible and are expensive. That said
Yokimi is a great mobile application, yet there is only
a French version.
5 CONCLUSION
Educating means developing a person's potential to
improve as a human being. Everyone seeks to learn
more in order to improve in a field and to acquire new
knowledge. Personalizing learning, skills,
behaviours, and approaches in the traditional context
means having a teacher for every student, which is not
easy and requires strategy, reflection, and many
resources. For this reason, adaptive e-learning
platforms were developed. Adaptive e-learning is a
combination of pedagogical techniques developed to
provide students with a unique and personal
experience, with the ultimate goal of increasing their
learning abilities.
This research is an evaluation of different existing
adaptive fee-based platforms that can be used by
An Overview of Adaptive Learning Fee-based Platforms
225
teachers to produce customized courses, as well as
students to better assimilate the lessons. From an
educational perspective, the fee-based platforms
provide an environment that understands the learners’
differences and converts them into training content
and processes that are suitable for each student. From
a technical perspective, fee-based platforms are
featured by a user-friendly environment that not
require any technical or programming skills for
deployment, high adaptivity, high user autonomy,
and a real-time interactions, but most of these
platforms are not mobile reactive.
ACKNOWLEDGEMENTS
This work was supported by the Al-Khawarizmi
Program funding by Morocco’s Ministry of
Education, Ministry of Industry and the Digital
Development Agency (ADD) under Project No.
451/2020 (Smart Learning).
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