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Book part
Publication date: 14 November 2014

Candace Walkington and Matthew L. Bernacki

As educators seek ways to enhance student motivation and improve achievement, promising advances are being made in adaptive approaches to instruction. Learning technologies are…

Abstract

Purpose

As educators seek ways to enhance student motivation and improve achievement, promising advances are being made in adaptive approaches to instruction. Learning technologies are emerging that promote a high level of personalization of the learning experience. One type of personalization is context personalization, in which instruction is presented in the context of learners’ individual interests in areas like sports, music, and video games. Personalized contexts may elicit situational interest, which can in turn spur motivational and metacognitive states like positive affect and focused attention. Personalized contexts may also allow for concepts to become grounded in prior knowledge by fostering connections to everyday activity. In this Chapter, we discuss the theoretical, design, and implementation issues to consider when creating interventions that utilize context personalization to enhance motivation.

Design/methodology/approach

First, we provide an overview of context personalization as an instructional principle and outline the emerging evidence that personalization can enhance motivation and improve achievement. We then discuss the theory hypothesized to account for the effectiveness of context personalization and discuss the approaches to personalization interventions. We close by discussing some of the practical issues to consider when bridging the design and implementation of personalization interventions. Throughout the paper, we anchor our discussion to our own research which focuses on the use of context personalization in middle and high school mathematics.

Findings

The theoretical mechanisms through which context personalization enhances learning may include (1) eliciting positive affective reactions to the instruction, (2) fostering feelings of value for the instructional content through connections to valued personal interests, or (3) drawing upon prior funds of knowledge of the topic. We provide hypotheses for the relatedness of context personalization to triggering and maintaining situational interest, and explore potential drawbacks of personalization, considering research on seductive details, desirable difficulties, and authenticity of connections to prior knowledge. We further examine four approaches to personalized learning – “fill-in-the-blank” personalization, matching instruction to individual topic interests, group-level personalization, and utility-value interventions. These approaches vary in terms of the depth of the personalization – whether simple, shallow connections are made to interest topics, or deep, meaningful connections are made to learners’ actual experiences. The consideration of depth also interacts with grain size – whether content is personalized based on the broader interests of a group, or the individual experiences of a particular learner. And finally, personalization interventions can have different levels of ownership – an instructor can generate the personalized connections, the connections can be made by the curriculum designers, or learners can take an active role in personalizing their own learning. Finally, we discuss the practical implementation issues when bringing context personalization interventions into K-12 classrooms. Personalization can be logistically difficult to implement, given that learners hold a diverse array of interests, and may experience each of those interests differently. In addition, particular types of instructional content may show greater sensitivity when personalization is implemented, and personalization may be most helpful for learners with certain background characteristics.

Originality/value

Realizing the promise of personalized learning is an unsolved problem in education whose solution becomes ever more critical as we confront a new digital age. Context personalization has the potential to bring together several well-established strands of research on improving student learning – research on the development of interest, funds of knowledge, and utility value – into one powerful intervention.

Article
Publication date: 3 October 2008

S.M. Syed‐Khuzzan, J.S. Goulding and J. Underwood

This paper aims to introduce the concepts and key issues surrounding the development of personalised learning environments.

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Abstract

Purpose

This paper aims to introduce the concepts and key issues surrounding the development of personalised learning environments.

Design/methodology/approach

This is a distillation of core research material gathered from a detailed literature review covering the concepts and issues surrounding the development of personalised learning environments (PLE).

Findings

This paper finds that most e‐learning applications are rather static and represent a generic approach to tutoring. Therefore, by default, they do not fully embrace learners' needs (i.e. learning styles). This paper also highlights key issues of incorporating learning styles into a PLE; and, has identified a “roadmap” for shaping and identifying the rubrics for further work in this field.

Originality/value

This paper is a very useful source in developing a PLE incorporating learning styles for learners.

Details

Industrial and Commercial Training, vol. 40 no. 6
Type: Research Article
ISSN: 0019-7858

Keywords

Article
Publication date: 16 January 2019

María Consuelo Sáiz-Manzanares, César Ignacio García Osorio, José Francisco Díez-Pastor and Luis Jorge Martín Antón

Recent research in higher education has pointed out that personalized e-learning through the use of learning management systems, such as Moodle, improves the academic results of…

1004

Abstract

Purpose

Recent research in higher education has pointed out that personalized e-learning through the use of learning management systems, such as Moodle, improves the academic results of students and facilitates the detection of at-risk students.

Design/methodology/approach

A sample of 124 students following the Degree in Health Sciences at the University of Burgos participated in this study. The objectives were as follows: to verify whether the use of a Moodle-based personalized e-learning system will predict the learning outcomes of students and the use of effective learning behaviour patterns and to study whether it will increase student satisfaction with teaching practice.

Findings

The use of a Moodle-based personalized e-learning system that included problem-based learning (PBL) methodology predicted the learning outcomes by 42.3 per cent, especially with regard to the results of the quizzes. In addition, it predicted effective behavioural patterns by 74.2 per cent. Increased student satisfaction levels were also identified through the conceptual feedback provided by the teacher, arguably because it facilitated a deeper understanding of the subject matter.

Research limitations/implications

The results of this work should be treated with caution, because of the sample size and the specificity of the branch of knowledge of the students, as well as the design type. Future studies will be directed at increasing the size of the sample and the diversity of the qualifications.

Originality/value

Learning methodology in the twenty-first century has to be guided towards carefully structured work from the pedagogic point of view in the learning management systems allowing for process-oriented feedback and PBL both included in personalized e-learning systems.

Details

Information Discovery and Delivery, vol. 47 no. 1
Type: Research Article
ISSN: 2398-6247

Keywords

Article
Publication date: 26 May 2023

Kam Cheong Li and Billy Tak-Ming Wong

This paper aims to present a comprehensive overview of the patterns and trends of publications on artificial intelligence (AI) in personalised learning. It addresses the need to…

Abstract

Purpose

This paper aims to present a comprehensive overview of the patterns and trends of publications on artificial intelligence (AI) in personalised learning. It addresses the need to investigate the intellectual structure and development of this area in view of the growing amount of related research and practices.

Design/methodology/approach

A bibliometric analysis was conducted to cover publications on AI in personalised learning published from 2000 to 2022, including a total of 1,005 publications collected from the Web of Science and Scopus. The patterns and trends in terms of sources of publications, intellectual structure and major topics were analysed.

Findings

Research on AI in personalised learning has been widely published in various sources. The intellectual bases of related work were mostly on studies on the application of AI technologies in education and personalised learning. The relevant research covered mainly AI technologies and techniques, as well as the design and development of AI systems to support personalised learning. The emerging topics have addressed areas such as big data, learning analytics and deep learning.

Originality/value

This study depicted the research hotspots of personalisation in learning with the support of AI and illustrated the evolution and emerging trends in the field. The results highlight its latest developments and the need for future work on diverse means to support personalised learning with AI, the pedagogical issues, as well as teachers’ roles and teaching strategies.

Details

Interactive Technology and Smart Education, vol. 20 no. 3
Type: Research Article
ISSN: 1741-5659

Keywords

Abstract

Details

Personalised Learning for the Learning Person
Type: Book
ISBN: 978-1-78973-147-7

Book part
Publication date: 22 November 2018

Anja P. Schmitz and Jan Foelsing

During the past decade, fast-paced changes created a new environment organisations need to adapt to in an agile way. To support their transformation, organisations are rethinking…

Abstract

During the past decade, fast-paced changes created a new environment organisations need to adapt to in an agile way. To support their transformation, organisations are rethinking their approach to learning. They are moving away from traditional instructor-centred, standardised classroom-based learning settings. Instead, learning needs to be tailored to the individuals’ needs, available anywhere at any time and needs to enable learners to build their network. The development of digital tools, specifically network technology and social collaboration platforms, has enabled these new learning concepts.

The use of these new learning concepts in organisations also has implications for higher education. The present case study, therefore, investigates how universities can best prepare future employees and leaders for these new working environments, both on a content level and a methodological level. It also investigates if these new learning concepts can support universities in dealing with a changing environment.

The investigated case is a traditional face-to-face leadership lecture for a heterogeneous group of students. It was reconceptualised as a personalised and social collaborative learning setting, delivered through a social collaboration platform as the primary learning environment. Initial evaluation results indicate positive motivational effects, experience sharing and changes in perception of the student − lecturer relationship. The findings also supported previous challenges of computer-supported collaborative learning settings, such as the perception of a higher cognitive load. The implications of these results for the future teaching and business models of higher education are discussed. In addition, the potential of these computer-supported social collaborative learning settings is outlined.

Article
Publication date: 7 August 2017

Julius T. Nganji and Mike Brayshaw

The purpose of this paper is to address how virtual learning environments (VLEs) can be designed to include the needs of learners with multiple disabilities. Specifically, it…

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Abstract

Purpose

The purpose of this paper is to address how virtual learning environments (VLEs) can be designed to include the needs of learners with multiple disabilities. Specifically, it employs AI to show how specific learning materials from a huge repository of learning materials can be recommended to learners with various disabilities. This is made possible through employing semantic web technology to model the learner and their needs.

Design/methodology/approach

The paper reviews personalised learning for students with disabilities, revealing the shortcomings of existing e-learning environments with respect to students with multiple disabilities. It then proceeds to show how the needs of a student with multiple disabilities can be analysed and then simple logical operators and knowledge-based rules used to personalise learning materials in order to meet the needs of such students.

Findings

It has been acknowledged in literature that designing for cases of multiple disabilities is difficult. This paper shows that existing learning environments do not consider the needs of students with multiple disabilities. As they are not flexibly designed and hence not adaptable, they cannot meet the needs of such students. Nevertheless, it is possible to anticipate that students with multiple disabilities would use learning environments, and then design learning environments to meet their needs.

Practical implications

This paper, by presenting various combination rules to present specific learning materials to students with multiple disabilities, lays the foundation for the design and development of learning environments that are inclusive of all learners, regardless of their abilities or disabilities. This could potentially stimulate designers of such systems to produce such inclusive environments. Hopefully, future learning environments will be adaptive enough to meet the needs of learners with multiple disabilities.

Social implications

This paper, by proposing a solution towards developing inclusive learning environments, is a step towards inclusion of students with multiple disabilities in VLEs. When these students are able to access these environments with little or no barrier, they will be included in the learning community and also make valuable contributions.

Originality/value

So far, no study has proposed a solution to the difficulties faced by students with multiple disabilities in existing learning environments. This study is the first to raise this issue and propose a solution to designing for multiple disabilities. This will hopefully encourage other researchers to delve into researching the educational needs of students with multiple disabilities.

Details

The International Journal of Information and Learning Technology, vol. 34 no. 4
Type: Research Article
ISSN: 2056-4880

Keywords

Abstract

Details

Personalised Learning for the Learning Person
Type: Book
ISBN: 978-1-78973-147-7

Article
Publication date: 28 February 2023

V. Senthil Kumaran and R. Latha

The purpose of this paper is to provide adaptive access to learning resources in the digital library.

Abstract

Purpose

The purpose of this paper is to provide adaptive access to learning resources in the digital library.

Design/methodology/approach

A novel method using ontology-based multi-attribute collaborative filtering is proposed. Digital libraries are those which are fully automated and all resources are in digital form and access to the information available is provided to a remote user as well as a conventional user electronically. To satisfy users' information needs, a humongous amount of newly created information is published electronically in digital libraries. While search applications are improving, it is still difficult for the majority of users to find relevant information. For better service, the framework should also be able to adapt queries to search domains and target learners.

Findings

This paper improves the accuracy and efficiency of predicting and recommending personalized learning resources in digital libraries. To facilitate a personalized digital learning environment, the authors propose a novel method using ontology-supported collaborative filtering (CF) recommendation system. The objective is to provide adaptive access to learning resources in the digital library. The proposed model is based on user-based CF which suggests learning resources for students based on their course registration, preferences for topics and digital libraries. Using ontological framework knowledge for semantic similarity and considering multiple attributes apart from learners' preferences for the learning resources improve the accuracy of the proposed model.

Research limitations/implications

The results of this work majorly rely on the developed ontology. More experiments are to be conducted with other domain ontologies.

Practical implications

The proposed approach is integrated into Nucleus, a Learning Management System (https://nucleus.amcspsgtech.in). The results are of interest to learners, academicians, researchers and developers of digital libraries. This work also provides insights into the ontology for e-learning to improve personalized learning environments.

Originality/value

This paper computes learner similarity and learning resources similarity based on ontological knowledge, feedback and ratings on the learning resources. The predictions for the target learner are calculated and top N learning resources are generated by the recommendation engine using CF.

Book part
Publication date: 16 September 2021

Jeremy Anderson, Heather Bushey, Maura Devlin and Amanda J. Gould

Online learning can present challenges and barriers for students, especially when it comes to self-motivation and discipline. Non-traditional learners and those who may be…

Abstract

Online learning can present challenges and barriers for students, especially when it comes to self-motivation and discipline. Non-traditional learners and those who may be underprepared are often the students most likely to seek virtual learning options. As a result, methods of supporting online learners must be intentional and robust to stay attentive to students’ needs. The American Women’s College (TAWC) at Bay Path University designed its Social Online Universal Learning (SOUL) model to promote degree completion through a constellation of evidence-based practices that cultivate student engagement in a personalized online learning environment. SOUL employs an innovative adaptive technology approach with Universal Design for Learning (UDL) principles to promote accessibility and affordability. Foundational to these frameworks is a commitment to leveraging technology to gather data that drives action-oriented analytics, triggering interventions by faculty and staff and generating predictive models to inform wrap-around support. SOUL’s high-tech, high-touch attributes give students agency over their unique learning paths and provide instructors and administrators the meaningful insights needed to target efforts in a personalized yet scalable way, to promote and positively impact student success. Lessons learned in the process of developing data-driven “high-tech, high-touch” practices are presented.

Details

International Perspectives on Supporting and Engaging Online Learners
Type: Book
ISBN: 978-1-80043-485-1

Keywords

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