Evaluating the performance of adaptive learning objects selection and sequencing in adaptive educational hypermedia systems

Adaptive learning objects selection and sequencing is recognized as among the most interesting research questions in adaptive educational hypermedia systems (AEHS). In order to adaptively select and sequence learning objects in AEHS, the definition of adaptation behavior, referred to as Adaptation M...

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Main Authors: Karampiperis, P., Sampson, Demetrios
Format: Conference Paper
Published: 2009
Online Access:http://hdl.handle.net/20.500.11937/8414
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author Karampiperis, P.
Sampson, Demetrios
author_facet Karampiperis, P.
Sampson, Demetrios
author_sort Karampiperis, P.
building Curtin Institutional Repository
collection Online Access
description Adaptive learning objects selection and sequencing is recognized as among the most interesting research questions in adaptive educational hypermedia systems (AEHS). In order to adaptively select and sequence learning objects in AEHS, the definition of adaptation behavior, referred to as Adaptation Model, is required. Several efforts have been reported in literature aiming to support the Adaptation Model design by providing AEHS designers either guidance for the direct definition of adaptation rules, or semi-automatic mechanisms for making the design process less demanding via the implicit definition of such rules. The main drawback of the direct definition of adaptation rules is that there can be cases during the run-time execution of AEHS where no adaptation decision can be made, due to inconsistency, and/or insufficiency of the defined adaptation rule sets. The goal of the semi-automatic approaches is to generate a continuous decision function that estimates the desired AEHS response, overcoming the above mentioned problem. To achieve this, they use data from the implicit definition of sample adaptation rules and try to fit the response function on these data. Although such approaches bare the potential to provide efficient Adaptation Models, they still miss a commonly accepted framework for measuring their performance. In this paper, we present our performance evaluation methodology for validating the use of decision-based approaches for adaptive learning objects selection and sequencing in AEHS. © 2009 IEEE.
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spelling curtin-20.500.11937-84142017-09-13T14:35:42Z Evaluating the performance of adaptive learning objects selection and sequencing in adaptive educational hypermedia systems Karampiperis, P. Sampson, Demetrios Adaptive learning objects selection and sequencing is recognized as among the most interesting research questions in adaptive educational hypermedia systems (AEHS). In order to adaptively select and sequence learning objects in AEHS, the definition of adaptation behavior, referred to as Adaptation Model, is required. Several efforts have been reported in literature aiming to support the Adaptation Model design by providing AEHS designers either guidance for the direct definition of adaptation rules, or semi-automatic mechanisms for making the design process less demanding via the implicit definition of such rules. The main drawback of the direct definition of adaptation rules is that there can be cases during the run-time execution of AEHS where no adaptation decision can be made, due to inconsistency, and/or insufficiency of the defined adaptation rule sets. The goal of the semi-automatic approaches is to generate a continuous decision function that estimates the desired AEHS response, overcoming the above mentioned problem. To achieve this, they use data from the implicit definition of sample adaptation rules and try to fit the response function on these data. Although such approaches bare the potential to provide efficient Adaptation Models, they still miss a commonly accepted framework for measuring their performance. In this paper, we present our performance evaluation methodology for validating the use of decision-based approaches for adaptive learning objects selection and sequencing in AEHS. © 2009 IEEE. 2009 Conference Paper http://hdl.handle.net/20.500.11937/8414 10.1109/ICALT.2009.134 restricted
spellingShingle Karampiperis, P.
Sampson, Demetrios
Evaluating the performance of adaptive learning objects selection and sequencing in adaptive educational hypermedia systems
title Evaluating the performance of adaptive learning objects selection and sequencing in adaptive educational hypermedia systems
title_full Evaluating the performance of adaptive learning objects selection and sequencing in adaptive educational hypermedia systems
title_fullStr Evaluating the performance of adaptive learning objects selection and sequencing in adaptive educational hypermedia systems
title_full_unstemmed Evaluating the performance of adaptive learning objects selection and sequencing in adaptive educational hypermedia systems
title_short Evaluating the performance of adaptive learning objects selection and sequencing in adaptive educational hypermedia systems
title_sort evaluating the performance of adaptive learning objects selection and sequencing in adaptive educational hypermedia systems
url http://hdl.handle.net/20.500.11937/8414