Title: Adaptive learning
1Adaptive Learning
2Definition of Adaptive Learning
- Adaptive learning or adaptive teaching is the
delivery of custom learning experiences that
address the unique needs of an individual through
just-in-time feedback, pathways, and resources
(rather than providing a one-size-fits-all
learning experience). - adaptive learning refers to an educational
approach or system that leverages technology to
provide personalized and tailored instruction
based on an individual learner's needs,
abilities, and progress. It utilizes data and
algorithms to continuously analyze and adapt the
learning experience to optimize learning outcomes.
3Enter adaptive learning technology
- Adaptive learning technology aims to emulate and
support (not replace!) the talents of great
educators to provide the best possible learning
experience for every single student. It helps
scale the benefits of adaptive learning to tens,
hundreds, or thousands of students at a time. - The mechanisms of how technology adapts to
students has several variations
4 Designed
Algorithmic Adaptivity
Adaptivity
A method of adaptivity in which an educator designs the expert teaching sequence to guide their learners toward content mastery. They drive how the lessons adapts feedback and content sequences in the lesson. Adaptations can occur based on a variety of factors called adaptivity factors. A method of adaptivity in which one or more algorithms answer the following two questions1. What does the learner 'know'?2. What should the learner experience next?Based on those answers, the algorithm can select the right item at the right time for students as they learn.
This expert-model approach to adaptivity tells the technology how to react in unique situations an "If THIS, then THAT" approach. It can be used to provide needed remediation, share advanced content with excelling learners, encourage people racing through screens to slow down, and more A common algorithm is is Bayesian Knowledge Tracing (BKT) which estimates the rate at which learning occurs. Another known framework is Item Response Theory (IRT), developed in the field of psychometrics to model the interaction of a learner with discrete items.
5Different adaptivity types and adaptivity factors
Adaptivity factors Adaptables
Learner information/profile, behaviours, and performance benchmarks that can be used adapt a learning experience, e.g. The ways the lesson can adapt based on the learner's performance. For example
Performance Was the correct or incorrect answer was provided? How has the learner done across a series of tasks/lessons? Real-time Feedback Offer appropriate help when it is needed most, e.g. hints based on a shown misconceptions (as if students are being guided by a tutor looking over their shoulder).
Behaviours How long did the learner take to complete the task? Differentiated Pathways Offer varying sequences of content to each student, e.g. provide extra help to a student for a particular concept before continuing to the next topic, fast-track advanced learners, or allow learners to decide what theyll learn next.
Information Learners can share how confident they feel in material, content type preferences, or personal data to alter what happens next.
6Adaptive learning in the global market
- Increased Demand The demand for adaptive
learning solutions is on the rise as educational
institutions, corporations, and online learning
platforms seek innovative ways to deliver
personalized and effective instruction. The
global market for adaptive learning is projected
to grow significantly in the coming years. - Technological Advancements Advances in
artificial intelligence (AI), machine learning,
and data analytics have paved the way for more
sophisticated adaptive learning systems. These
technologies enable the collection and analysis
of vast amounts of learner data, facilitating
personalized recommendations and adaptive content
delivery. - K-12 Education Adaptive learning is increasingly
being integrated into K-12 education systems
worldwide. Adaptive learning software and
platforms are utilized to individualize
instruction, identify learning gaps, and support
differentiated learning in classrooms. Teachers
can access real-time data and insights to inform
their instruction and provide targeted
interventions.
7- Higher Education Adaptive learning is gaining
momentum in higher education institutions, where
it is used to personalize learning experiences,
support self-paced learning, and improve student
retention rates. Adaptive learning platforms
offer interactive content, adaptive assessments,
and personalized feedback to enhance the learning
process in college courses. - Corporate Training Adaptive learning is also
being employed in corporate training programs to
provide customized learning pathways for
employees. Adaptive learning systems can identify
employees' skill gaps and offer tailored training
modules to address specific needs. This approach
increases engagement, knowledge retention, and
skill development in professional settings. - Global Accessibility Adaptive learning
technologies have the potential to bridge
educational gaps and provide quality education in
underserved regions. Online adaptive learning
platforms can reach learners in remote areas,
offering personalized learning experiences and
expanding access to educational resources. - Challenges and Opportunities While adaptive
learning holds immense promise, challenges such
as implementation costs, data privacy, and
ensuring equitable access to technology need to
be addressed. However, the global market for
adaptive learning presents opportunities for
education technology companies to innovate,
collaborate with educational institutions, and
provide scalable adaptive learning solutions. - Reference
- Simplify Assessments with EasySIM Cloud The Best
Assessment Software - Role of technology-induced training towards
efficient competency building