A framework for an adaptable and personalised e-learning system based on free web resources

An adaptable and personalised E-learning system (APELS) architecture is developed to provide a framework for the development of comprehensive learning environments for learners who cannot follow a conventional programme of study. The system extracts information from freely available resources on the...

Full description

Saved in:
Bibliographic Details
Main Author Aeiad, E
Format Dissertation
LanguageEnglish
Published University of Salford 2017
Online AccessGet full text

Cover

Abstract An adaptable and personalised E-learning system (APELS) architecture is developed to provide a framework for the development of comprehensive learning environments for learners who cannot follow a conventional programme of study. The system extracts information from freely available resources on the Web taking into consideration the learners' background and requirements to design modules and a planner system to organise the extracted learning material to facilitate the learning process. The process is supported by the development of an ontology to optimise and support the information extraction process. Additionally, natural language processing techniques are utilised to evaluate a topic's content against a set of learning outcomes as defined by standard curricula. An application in the computer science field is used to illustrate the working mechanisms of the proposed framework and its evaluation based on the ACM/IEEE Computing Curriculum. A variety of models are developed and techniques used to support the adaptability and personalisation features of APELS. First, a learner’s model was designed by incorporating students’ details, students’ requirements and the domain they wish to study into the system. In addition, learning style theories were adopted as a way of identifying and categorising the individuals, to improve their on-line learning experience and applying it to the learner’s model. Secondly, the knowledge extraction model is responsible for the extraction of the learning resources from the Web that would satisfy the learners’ needs and learning outcomes. To support this process, an ontology was developed to retrieve the relevant information as per users’ needs. In addition, it transforms HTML documents to XHTML to provide the information in an accessible format and easier for extraction and comparison purposes. Moreover, a matching process was implemented to compute the similarity measure between the ontology concepts that are used in the ACM/IEEE Computer Science Curriculum and those extracted from the websites. The website with the highest similarity score is selected as the best matching website that satisfies the learners’ request. A further step is required to evaluate whether the content extracted by the system is the appropriate learning material of the subject. For this purpose, the learning outcome validation process is added to ensure that the content of the selected websites will enable the appropriate learning based to the learning outcomes set by standard curricula. Finally, the information extracted by the system will be passed to a Planner model that will structure the content into lectures, tutorials and workshops based on some predefined learning constraints. The APELS system provides a novel addition to the field of adaptive E-learning systems by providing more personalized learning material to each user in a time-efficient way saving his/her time looking for the right course from the hugely available resources on the Web or going through the large number of websites and links returned by traditional search engines. The APELS system will adapt better to the learner’s style based on feedback and assessment once the learning process is initiated by the learner. The APELS system is expected to develop over time with more users.
AbstractList An adaptable and personalised E-learning system (APELS) architecture is developed to provide a framework for the development of comprehensive learning environments for learners who cannot follow a conventional programme of study. The system extracts information from freely available resources on the Web taking into consideration the learners' background and requirements to design modules and a planner system to organise the extracted learning material to facilitate the learning process. The process is supported by the development of an ontology to optimise and support the information extraction process. Additionally, natural language processing techniques are utilised to evaluate a topic's content against a set of learning outcomes as defined by standard curricula. An application in the computer science field is used to illustrate the working mechanisms of the proposed framework and its evaluation based on the ACM/IEEE Computing Curriculum. A variety of models are developed and techniques used to support the adaptability and personalisation features of APELS. First, a learner’s model was designed by incorporating students’ details, students’ requirements and the domain they wish to study into the system. In addition, learning style theories were adopted as a way of identifying and categorising the individuals, to improve their on-line learning experience and applying it to the learner’s model. Secondly, the knowledge extraction model is responsible for the extraction of the learning resources from the Web that would satisfy the learners’ needs and learning outcomes. To support this process, an ontology was developed to retrieve the relevant information as per users’ needs. In addition, it transforms HTML documents to XHTML to provide the information in an accessible format and easier for extraction and comparison purposes. Moreover, a matching process was implemented to compute the similarity measure between the ontology concepts that are used in the ACM/IEEE Computer Science Curriculum and those extracted from the websites. The website with the highest similarity score is selected as the best matching website that satisfies the learners’ request. A further step is required to evaluate whether the content extracted by the system is the appropriate learning material of the subject. For this purpose, the learning outcome validation process is added to ensure that the content of the selected websites will enable the appropriate learning based to the learning outcomes set by standard curricula. Finally, the information extracted by the system will be passed to a Planner model that will structure the content into lectures, tutorials and workshops based on some predefined learning constraints. The APELS system provides a novel addition to the field of adaptive E-learning systems by providing more personalized learning material to each user in a time-efficient way saving his/her time looking for the right course from the hugely available resources on the Web or going through the large number of websites and links returned by traditional search engines. The APELS system will adapt better to the learner’s style based on feedback and assessment once the learning process is initiated by the learner. The APELS system is expected to develop over time with more users.
Author Aeiad, E
Author_xml – sequence: 1
  fullname: Aeiad, E
BookMark eNqdjDsOwjAQRF1Awe8Oe4E0mE-NEIgD0FFYa7IhVhxvtOsoyu0JUk5ANfNGerM2i8SJVuZ1gUqwpYGlgYoFMAGW2GX0kSYooSNRThiDUglUREJJIX1AR83Ugsffzmm6IYKBPAgp9_Im3ZplhVFpN-fG7O-35_VReAk5aB2DF5TRUa5ZHWOYm4-ub9zZnuzxYP-SvnlOTUE
ContentType Dissertation
DBID ABQQS
LLH
DEWEY 371.33
DatabaseName EThOS: Electronic Theses Online Service (Full Text)
EThOS: Electronic Theses Online Service
DatabaseTitleList
Database_xml – sequence: 1
  dbid: LLH
  name: EThOS: Electronic Theses Online Service
  url: http://ethos.bl.uk/
  sourceTypes: Open Access Repository
DeliveryMethod fulltext_linktorsrc
Discipline Education
DissertationDegree Thesis (Ph.D.)
DissertationSchool University of Salford
ExternalDocumentID oai_ethos_bl_uk_736354
GroupedDBID ABQQS
LLH
ID FETCH-britishlibrary_ethos_oai_ethos_bl_uk_7363543
IEDL.DBID LLH
IngestDate Tue Jul 22 20:29:09 EDT 2025
IsOpenAccess true
IsPeerReviewed false
IsScholarly false
Language English
LinkModel DirectLink
MergedId FETCHMERGED-britishlibrary_ethos_oai_ethos_bl_uk_7363543
Notes 000000046500060X
OpenAccessLink https://salford-repository.worktribe.com/output/1390974
ParticipantIDs britishlibrary_ethos_oai_ethos_bl_uk_736354
PublicationCentury 2000
PublicationDate 2017
PublicationDateYYYYMMDD 2017-01-01
PublicationDate_xml – year: 2017
  text: 2017
PublicationDecade 2010
PublicationYear 2017
Publisher University of Salford
Publisher_xml – name: University of Salford
Score 3.494001
Snippet An adaptable and personalised E-learning system (APELS) architecture is developed to provide a framework for the development of comprehensive learning...
SourceID britishlibrary
SourceType Open Access Repository
Title A framework for an adaptable and personalised e-learning system based on free web resources
URI https://salford-repository.worktribe.com/output/1390974
hasFullText 1
inHoldings 1
isFullTextHit
isPrint
link http://utb.summon.serialssolutions.com/2.0.0/link/0/eLvHCXMwlV1NS8QwEB10vagIfuI3c_Am0ZomXXsUdSmyeFJY8FAyNBVxacu2_f_OtF1Yj3tLIAxJCHnDmzczADfaaUsMBSpwkVXGRYGi2GTKRDb2D6Hl_7ETyL5Hyad5m9nZQF1ILkzt5iLqVsKY1z8SZ74TgZJ0f-rJpbJtqra5Z8clYFd4E7akmoo87ek02YE96ksBDRTIClRM9mH3ZSXEfQAbvjiU3siDjuIIvp4wXyqikHeBrkCXuaqRJCaeZFgtHeTaZ-jV0NjhG_uqyyjAk2FZsBnvkb9BXAwcfH0MevL68Zyo_xtMpU10nUqN535E87T9TcchH8qEJzAqysKfAo4fvdWkNeWxNWRcTETsedmcgceZ3J_B7RqGz9dafQHbWrCs4x0uYdQsWn_FSNzQdXfrf_tcmjI
linkProvider British Library Board
openUrl ctx_ver=Z39.88-2004&ctx_enc=info%3Aofi%2Fenc%3AUTF-8&rfr_id=info%3Asid%2Fsummon.serialssolutions.com&rft_val_fmt=info%3Aofi%2Ffmt%3Akev%3Amtx%3Adissertation&rft.genre=dissertation&rft.title=A+framework+for+an+adaptable+and+personalised+e-learning+system+based+on+free+web+resources&rft.DBID=ABQQS%3BLLH&rft.au=Aeiad%2C+E&rft.date=2017&rft.pub=University+of+Salford&rft.inst=University+of+Salford&rft.externalDBID=n%2Fa&rft.externalDocID=oai_ethos_bl_uk_736354