- Open Access
- Total Downloads : 6
- Authors : V. Vijayalakshmi, I. Shamili, D. Sundaranarayana
- Paper ID : IJERTCONV3IS16134
- Volume & Issue : TITCON – 2015 (Volume 3 – Issue 16)
- Published (First Online): 30-07-2018
- ISSN (Online) : 2278-0181
- Publisher Name : IJERT
- License: This work is licensed under a Creative Commons Attribution 4.0 International License
Improved Content Personalization in E-Learning using MQACP
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Vijayalakshmi I. Shamili D. Sundaranarayana
Assistant Professor, Dept of CSE, Final Year M.Tech, Dept of CSE, Final Year M.Tech, Dept of CSE,
Christ College of Engg. & Tech, Pondicherry, India.
Christ College of Engg. & Tech, Pondicherry, India.
Christ College of Engg. & Tech, Pondicherry, India.
AbstractData Mining is a process of identifying invisible patterns and relationship within data that can help for decision making. E-learning is a tool which supports teaching and learning using a computer web technology. The main aim of the E-learning is to provide exact content to the well known students profiles and preferences and also to specific the better content for each student. In this paper we proposed the comparison of techniques and algorithms which used in the system to improve the student knowledge level and academic progress, but the quality of e-learning service is low and so there is a lack of interaction among e-learners. The proposed System deals with a comprehensive metadata quality pledge method, specifically the (MQACP) Metadata Quality Assurance Certification Process. The basic of this method is to propose a set of methods that can be deployed throughout the lifecycle of a repository to ensure that metadata generated from content providers are of high quality. This system deals with Metadata quality assurance certification process to improve the high quality of learning object in digital repository and proper identification of metadata labeling. We measured the resulting metadata quality to certify that the anticipated improvement in metadata quality actually took place.
KeywordContent Personalization; E-learning Planning; Intelligent E-Learning System; Educational technology.
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INTRODUCTION
E-learning is the use of electronic instructive technology in knowledge and education. The development of e-learning systems and online courses has made instructive objects broadly available by students of changing ability, backgrounds and manners. An important necessity of the current e-learning systems is the personalization that is a role able to adapt the e-earning content or serves to the customer profile. The personalization
Includes how to find and filter the studying information that suits the user preferences and wants a most important part of instructional plan and e-learning growth is to know the behavior of learners. This way, an e-learning experience can be created that offers the most benefit for the learners and ensure that every component of the e- learning course is helping them to reaching their objectives and goals.
Personalized content in E-learning can particularly improve the learning routes personalization in an almost transparent way to the user. The fundamental thought is to build a powerfully-related and planned leaning route capable of fulfilling each students profile. The proposed System deals with a comprehensive metadata quality pledge method, specifically the (MQACP) Metadata Quality Assurance Certification Process. A digital repository is a method for supervising and storing digital content. Repositories can be focus or institutional in their centre of attention. Placing content into an institutional repository enables employees and institutions to supervise and maintain it, and thus gain maximum value from it.
A repository can support explore, learning, and executive processes. Repositories use open principles to certify that the content they contain is available in that it can be sought and recalled for later use. The use of these approved international standards permits mechanisms to be place high which classify, store, retrieve, import and export the digital content inside the repository.The basic idea of this method is to propose a set of methods that can be deployed throughout the lifecycle of a repository to ensure that metadata generated from content providers are of high quality. We supported the metadata creation process throughout the different phases of the repositories involved by setting up the MQACP.
During each level, we evaluated the ensuing metadata quality to attest that the expected improvement in metadata quality essentially took Place. The results showed that the MQACP was successfully adapted to the latest contexts, with smallest amount adjustment desired, through related outcome formed and also with comparable costs. We
Can also determine high Quality assurance methods
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LITERATURE SURVEY
For checking metadata documentation quality that will have an optimistic outcome on the resulting quality of the metadata records of a given group of repositories. Our Proposed Metadata Quality Assurance Certification Process that can be applies in several domains with proven effectiveness.
PAPER NAME
YEAR
EXISTING
DISADVANTAGE
PROPOSED
ADVANTAGE
TECHNIQUE
ALGORITHMS
E-Learning and
Feb 2014
1.Adjacency
To Monitor and Adapt
The myPTutor
The planning
Case-Based
–
Intelligent
Matrices
the learning object of
approach
Techniques helps
Planning
planning:
2.Integer
each learning route
to bridge the gap
Technique
Improving
Programming
against unexpected
between the e-
Content
Constraints
contingencies
learning
Personalization
Satisfaction
necessities and
Models
the student
3.Neural
Content
Network
Adaptation
4.Soft
Computing
Methods
A Generic
July 2013
One Size-Fits
Low Quality of e-
Personalized
1.Improve the
Intelligent e-
Inherited
Adaptive
Model of
All
learning Service
search engine
Quality of e-
learning System
Object-Oriented
student-based
learning Service
Structure
of the
Adaptive
2.To Achieve the
Course Material
Intelligent Web-
Student learning
Based learning
goals effectively
Environment
E-Learning
2013
Educational
Lack of Interest in
Data Mining in
1.Improve
Visualization
–
Using Data
Data Mining
Education Data Mining
E-learning
corporate the
Technique
Mining
(EDM)
System
learning task
2.Successfully
incorporate to e-
learning
environment
Quality
June
Numerous
Low Quality of e-
QA
Increasing the
Quality Assurance
Grade
Assurance of e-
2011
initiative have
learning
Methodology
Quality of e-
Correspondence
learning
been developed
learning
cluster analysis
Processes
on QA in
Education
Applying case-
2011
AI Planning
Sequence of learning
Approach to
Allow the best
Case-Based plan
Learning
object
Based Planning
Objects (LO)
Automatically
learning routes for
Merging technique
Algorithm
to personalized
extract
each student
e-learning
information
profile and course
from the LO
objectives
Planning and
2011
Adjacency
Execution of the learning
Adaptation
Reuse the original
LPG-
–
Execution in
Matrics, Integer
routes, check its progress
Approach (Plan
Route as much as
ADAPT,LPG &
personalized E-
Programming
and act when
Stability)
possible and adapt
SGPLAN6
learning Setting
Model,
discrepancies appears
/replan
Neural Network
and AI Planning
Data Mining
2010
Educational
Resulted in a high Drop
Dynamically
1.During the
Cluster difficulty
K-means
For
Data Mining
out of Participants
tailored hints
challenge in the
ranking
algorithms
Individualized
(EDM)
for users
form of hints and
Hints in e-
easier access to
learning
notes
2.hinting system
were evaluated
through a large
scale participants
Discovering
2007
Filter or
Not paying too much
Adaptive
User can make a
Stretch-Text
IB algorithm
student
Sort
attention to student
Machine
better use of it
techniques
preferences in
preferences
learning system
e-learning
E-Learning
2007
Electronic
Lack on Interaction of
Learners
Improving the
Data driven
Frequent
Episode
Process
Learning
Learners
Profile
Flexibility and
Approach
Discovery
Characterization
Environment
Characterization
Authenticity of
Algorithm(FED)
using Data
the Learners and
driven
cost Benefits
Approaches
Ratio
In intelligent planning Antonio Garrido and Lluvia Morales rescues a victorious technique called myPTutor is a combined effort to take improvement of Artificial Intelligence planning techniques in the adaptation of sequences of Learning Objects to pedagogic and students' necessities[1]. In [5, 6] Ivan Serina prove that the imminent is a real valuable to increase the stability of the education course as well as to increase the performance and quality of the education routes. The most important intention of intelligent e-learning environments is to get better students learning progression by generous higher educational techniques, so that intelligent learning environments are supported on different pedagogical approach and theories that have been originated in the education field [2, 3] Nedhal A. M. Al Saiyd, Intisar A. M. Al-Sayed and Shimaa Abd Elkader Abd Elaal recommended the suitable architectural design for the growth modules of intelligent and contented with the intelligent Web-based learning environment about the effectiveness and competence. Zbigniew Mrozek [4] a quality assurance system (QA) had better to make sure the Necessitates is satisfied. Similarly the significance of fundamental guarantee plus learner perceptions, Increase in Educational facility, and also improves efficiency of E- learning system. In [7] Anna Katrina Dominguez, Kalina Yacef, James R. Curran well again Higher average mark achieved from user who be permissible with preventative hints to put off future mistakes. In [8] Cristina Carmona, Gladys Castillo, Eva Millán brought in an adaptive learning user model aimed at
discovery out the students preferences about the educational materials terminate Time, such model is actually appropriate in e-learning systems so as to require to filtering the large intensities o information available, and so users can build a better use of it. Silvia Rita Viola
[9] recommended the approaches used for learners profiles characterization. significant the value of the learning system used by learners in Learners profiles characterization in both the area by means of deference to different ways of non linear navigation. By comparing all techniques and algorithms is shown in survey table [10] those techniques and algorithms which used in the system to recover the student knowledge level and academic progress, although the quality of e-learning examine is low and so there is a lack of interaction among e-learners. -
EXISTING SYSTEM
Data mining extract the data as of the e-learning content in order to adjust, stores, reprocess and to select the righter learning method according to the students profile and preference. By applying the myPTutor techniques [12] they have suggested how to monitor and adjust the studying objectives of every education routes against surprising contingencies.
The techniques comprise of 4 steps. The First one is Knowledge Extraction consist Automated techniques of information technology to mine their necessary features. Second one is the Solve Problem It involves the usage of a
smart planner to discover a plan or education path. Third is Execute & Monitor the implementation of the education path inside a LMS that supports supervising.
We assure whether the actual state meets the awaited state. If a disagreement is noticed, that is if changeability happens on the route implementation, we apply plan- validation technique to assure if the path is quiet possible. The last and final one is Repair/Adapt the plan it requires fixing or adjusting the plan to make it executable again. The drawbacks found in the existing system is the explanation of the contents is not sufficient and the quality of the produced metadata records is not in high quality.
-
PROPOSED SYSTEM
The Present System proposing a complete metadata quality assurance technique, namely the Metadata Quality Assurance Certification Process (MQACP). The fundamental estimate of this technique is to propose a set of methods that can be deployed during the lifecycle of a repository to ensure that metadata generated from content providers are of high quality. This method handles with Metadata quality assurance certification process to improve the high quality of learning object in digital repository and proper recognition of metadata labeling. We evaluated the resulting metadata quality to certify that the excepted improvement in metadata quality really took place. The main advantages of proposed system it gives Accuracy, Correctness, Completeness, and Appropriateness of Metadata labeling. The automated mechanisms of measuring information quality that can easily be scaled up and maintained. The metadata quality is an integral part of any digital repository project and a critical success factor.
-
OVERALL ARCHITECTURE
Fig 1: System Architecture
-
ALGORITHMS
Fig 2: K-Means Clustering Algorithms Flowchart
-
MODULES DESCRIPTION
In [11] MQACP method personalized to the contents, with lowest adaptations required, and moreover with equivalent expenses. Metadata lies at the spirit of each digital repository plan in the logic that it determines and causes the explanation of digital content stored in the repositories. Metadata permits content to be successfully stored, managed and retrieved but also conserved in the long-term. Although the large significance of metadata in digital repositories, solitary that is broadly established, examines specify that what is defined as metadata quality is comparatively low in nearly events of digital repositories [13]. Metadata superiority is freely defined as suitability for purpose meaning that low quality of metadata means that metadata cannot complete its principle which is to permit for the retrieval of resources, management and successful storage. In present low metadata quality conducts to useless searches for content, no more resources which make them unseen to the aimed user, which is the customer of each digital repository.
The present thesis approaches such problem by suggesting a broad metadata quality pledge method, specifically the (MQACP) Metadata Quality Assurance Certification Process. The basic idea of this thesis is to suggest a set of methods that can be deployed all over the development of a repository to assure that metadata generated from content providers are of high quality. These methods have to be direct, simple to apply with important outcome. They also have to be adaptable with minimum effort so that they can be used in different contexts easily. This set of methods was described systematically, taking into account the actors needed to apply them, drawing the tools required and significant the expected outcomes.
-
CONCUSLION
-
Modern courses in remoteness education center of attention on exhibiting digital contents on LMSs and on covering such contents as learning objects labeled according to SCORM standards. The aim of these standards is perhaps to sell, exchange among platforms and/or schools, or else just entrée the contents distantly and all of these by using LMS-based environments. subsequent this thread, in this paper we have presented a general system implemented on top of Moodle that facilitates the use of generic GUIs to build up, incorporate and manage the alteration system based on intelligent planning. The preparation tools do not permit us to personalize the learning paths, other than in addition to carry out, observe their advance and adapt them when unexpected contingencies are found.
REFERENCES
-
Antonio Garrido and Lluvia Morales, E-Learning and Intelligent Planning: Improving Content Personalization, IEEE Revista Iberoamericande Technologies Del Aprendizaje, Vol.9, No.1, Feb.2014.
-
Nedhal A.M.AI Saiyd, And Intisar A.M.AI -Sayed , A Generic Model Of Student-Based Adaptive Intelligent Web-Based Learning Environment, Proceedings Of The World Congress On Engineering 2013 Vol II, WCE 2013, July 3-5, 2013, London, U.K.
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Shimaa Abd Elkader Abd Elaal, E-Learning Using Data Mining, Chinese-Egyptian Research Journal Helwan University 2013.
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Zbigniew Mrozek, Quality Assurance Of E-Learning, Presented On 22-Nd EAEEIE Annual Conference, EAEEIE 2011, Maribor, Slovenia, and JUNE 13-15, 2011.
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Antonio Garrido, Lluvia Morales and Ivan Serina, Applying Case-Base Planning To Personalize E-Learning, Proceedings/ Dms11/ DET/_Antonio_ GARRIDO.PDF 2011.
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Anna Katrina Dominguez, Kalina Yacef, James R. Data Mining for Individualized Hints in E-learning, University Of Sydney, Australia 2010.
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