SlideShare a Scribd company logo
1 of 26
1
Presentation Outlines
 Introduction
 Knowledge Management
 Knowledge Management System
 Ontology Based Knowledge Management System
 Concept Extraction Process From Natural Text Formats
 Application of Ontology Based Knowledge Management System
 Conclusion
2
Introduction
 Now days in many organizations knowledge is considered as
the most important asset that enables sustainable competitive
advantage in very dynamic and competitive markets.
 The development of KM and KMS becomes an important issue.
 Traditionally, KMS uses keyword based system to discover,
retrieve and share useful knowledge from the system.
3
Cont.
 Since keyword based system can not understand the meaning of
data users are stressed to find related terms to their query terms.
 Due to the fact that the emerging of new ontology based
knowledge management system is occurred.
 It is a content oriented system which helps users to get related
terms according their submitted query.
4
Knowledge Management
 Knowledge Management (KM) is a process that deals with the
development, storage, retrieval, and dissemination of
information and expertise within an organization to support and
improve its business performance.
5
Cont.
 Knowledge Management (KM) consists of a technique that uses
Technological tools for the management of information.
 its goal is:-
 To improve the efficiency of work teams;
 To studies methods for making knowledge explicit, and
 Sharing of informative knowledge resources.
6
Knowledge Management System
 knowledge management system, supporting the creation and storage
of knowledge,
 The goal of KMS is to provide the right knowledge to the right
people at the right time and right format.
 KMS contain both explicit and tacit knowledge.
 Tacit knowledge is more difficult to manage than explicit
knowledge and can be expressed as "we know more than we can
tell”.
7
Cont.
 KMS makes tacit knowledge better capitalize and disseminate
using different technologies.
 Those are:
 Document based technologies
 Ontology/Taxonomy based technologies
 Artificial Intelligence based technologies
8
Ontology Based Knowledge Management System
 Ontology is an explicit and formal specification of a
conceptualization.
 That is a formal description of the relevant concepts and
relationships in an area of interest, simplifying and abstracting
the view of the world for some purpose.
 It gives an understandable meaning both to humans and to
software agents.
9
Cont.
 In KMS, ontology can be regarded as the classification of
knowledge.
 Ontology defines shared vocabulary for facilitating knowledge
communication, storing, searching and sharing in knowledge
management systems.
10
Cont.
 Ontology-based knowledge management system is better at
supporting:-
 The integration of related resources,
 Searching the accurate knowledge quickly, and
 Avoiding a large number of irrelevant knowledge.
11
Ontology Development Tools
 Ontologies are built by highly trained knowledge engineers.
Some of the developmental tools for ontology are:
 Protégé 2000
 Onto Lingua
 Onto Edit
 Web Onto
12
Cont.
Figure: General architecture of Ontology based knowledge management system
13
Unique Features of Ontology based KMS
 Complete relation ship between the concepts, cases and facts is
stated well.
 Meaning of the facts is taking in to account to relate facts each
other
 Knowledge is represented in a formal language to make good
communication way and understanding among human and
machine.
 Logic-based inference rules - correct and provable results
achieved. 14
Concept Extraction From Natural Texts
 Concepts are sequences of words that represent real or
imaginary entities or ideas that users are interested in from the
large data source.
 Ontology based knowledge management system is used to
extract concepts and realizations from the natural language or
plain text using different techniques.
15
Cont.
 Such as:-
•Information Retrieval system
•Information Extraction
•Machine Learning
•Data Mining
 Ontologies provide a shared and common understanding of a domain
that can be communicated across people and applications.
16
Cont.
 Information Extraction is the process of automatically obtaining
knowledge from plain text.
 Because of the ambiguity of written natural language,
Information Extraction is a difficult task.
 Ontology-based Information Extraction (OBIE) reduces this
complexity by including contextual information in the form of a
domain ontology.
17
Cont.
Figure: Information Extraction process From Natural Textual document Using
OBIE.
18
APPLICATION
 OKMS is applicable In Education, Business, Agriculture,
Medicine and Library.
19
Advantages
 Facilitates search, exchange and integration of knowledge.
 Satisfy the users need by recommend them related items.
 Improves human to computer interaction.
 Helps to extract concepts through large datasets
 It supports business centers for competitive advantage in very
dynamic and competitive markets.
 Allow machine able to understand semantics of data.
20
Cont.
 Ontologies make domain knowledge reusable.
 Ontologies enable the interoperability among models or specific
domain vocabularies.
 Ontologies allow and simplify the communication among
humans, computational systems, and between humans and
systems.
21
Cont.
 Ontologies have the expressive power for acquiring context
from diverse and heterogeneous source.
 It is possible to apply reasoning and inference mechanisms by
means of explicit representation of semantics.
22
Disadvantages
 OBKMS systems have not been widely adopted because of the
 Its difficulties in deployment and maintenance
 Hard to implement and construct
 Space, time and money consuming.
 They have no discussion hub rather than they are suitable for
searching.
23
Conclusion
 OBKMS is useful to satisfy customers need by developing
semantic webs, Recommender systems and IR systems in
different areas such as library and business centers.
 Since our world is covered in dynamic and variety of word
sense and Knowledge fusion, it is difficult to construct ontology
based knowledge system easily.
 Knowledge representation is not a simple way process.
24
Recommendation
 While we are living in knowledge fusion world it is good to
implement multi-lingual ontology based knowledge
management system.
 According to our country it is possible to implement and
develop ontology based knowledge management system for
 Ethiopian Higher institution Library system
 Ethiopian Health System centers.
25
26

More Related Content

What's hot (20)

Web mining
Web mining Web mining
Web mining
 
Web mining
Web miningWeb mining
Web mining
 
Web usage mining
Web usage miningWeb usage mining
Web usage mining
 
Web mining tools
Web mining toolsWeb mining tools
Web mining tools
 
Web Content Mining
Web Content MiningWeb Content Mining
Web Content Mining
 
Web Usage Pattern
Web Usage PatternWeb Usage Pattern
Web Usage Pattern
 
Web mining (1)
Web mining (1)Web mining (1)
Web mining (1)
 
Web mining
Web miningWeb mining
Web mining
 
web mining
web miningweb mining
web mining
 
Web mining
Web miningWeb mining
Web mining
 
Web mining slides
Web mining slidesWeb mining slides
Web mining slides
 
Web mining
Web miningWeb mining
Web mining
 
Web mining
Web miningWeb mining
Web mining
 
Web Mining Presentation Final
Web Mining Presentation FinalWeb Mining Presentation Final
Web Mining Presentation Final
 
A survey on web usage mining techniques
A survey on web usage mining techniquesA survey on web usage mining techniques
A survey on web usage mining techniques
 
Web Mining
Web MiningWeb Mining
Web Mining
 
WEB MINING.
WEB MINING.WEB MINING.
WEB MINING.
 
Discovering knowledge using web structure mining
Discovering knowledge using web structure miningDiscovering knowledge using web structure mining
Discovering knowledge using web structure mining
 
Web Mining & Text Mining
Web Mining & Text MiningWeb Mining & Text Mining
Web Mining & Text Mining
 
Web mining
Web miningWeb mining
Web mining
 

Similar to Ontology KM System Concept Extraction

A Survey on Knowledge Transfer between Knowledge-based Systems
A Survey on Knowledge Transfer between Knowledge-based SystemsA Survey on Knowledge Transfer between Knowledge-based Systems
A Survey on Knowledge Transfer between Knowledge-based SystemsTELKOMNIKA JOURNAL
 
Ontology-Oriented Inference-Based Learning Content Management System  
Ontology-Oriented Inference-Based Learning Content Management System  Ontology-Oriented Inference-Based Learning Content Management System  
Ontology-Oriented Inference-Based Learning Content Management System  dannyijwest
 
Ontology-Oriented Inference-Based Learning Content Management System
Ontology-Oriented Inference-Based Learning Content Management System  Ontology-Oriented Inference-Based Learning Content Management System
Ontology-Oriented Inference-Based Learning Content Management System dannyijwest
 
ONTOLOGY-ORIENTED INFERENCE-BASED LEARNING CONTENT MANAGEMENT SYSTEM
ONTOLOGY-ORIENTED INFERENCE-BASED LEARNING CONTENT MANAGEMENT SYSTEMONTOLOGY-ORIENTED INFERENCE-BASED LEARNING CONTENT MANAGEMENT SYSTEM
ONTOLOGY-ORIENTED INFERENCE-BASED LEARNING CONTENT MANAGEMENT SYSTEMdannyijwest
 
Insight_in_the_gap
Insight_in_the_gapInsight_in_the_gap
Insight_in_the_gapIan Gordon
 
Towards the Intelligent Internet of Everything
Towards the Intelligent Internet of EverythingTowards the Intelligent Internet of Everything
Towards the Intelligent Internet of EverythingRECAP Project
 
Semantic Annotation Framework For Intelligent Information Retrieval Using KIM...
Semantic Annotation Framework For Intelligent Information Retrieval Using KIM...Semantic Annotation Framework For Intelligent Information Retrieval Using KIM...
Semantic Annotation Framework For Intelligent Information Retrieval Using KIM...dannyijwest
 
Semantic Annotation Framework For Intelligent Information Retrieval Using KIM...
Semantic Annotation Framework For Intelligent Information Retrieval Using KIM...Semantic Annotation Framework For Intelligent Information Retrieval Using KIM...
Semantic Annotation Framework For Intelligent Information Retrieval Using KIM...dannyijwest
 
Assessing The Tangible And Intangible Impacts Of The Convergence Of E-Learnin...
Assessing The Tangible And Intangible Impacts Of The Convergence Of E-Learnin...Assessing The Tangible And Intangible Impacts Of The Convergence Of E-Learnin...
Assessing The Tangible And Intangible Impacts Of The Convergence Of E-Learnin...ijistjournal
 
A novel method for generating an elearning ontology
A novel method for generating an elearning ontologyA novel method for generating an elearning ontology
A novel method for generating an elearning ontologyIJDKP
 
Assessing The Tangible And Intangible Impacts Of The Convergence Of E-Learnin...
Assessing The Tangible And Intangible Impacts Of The Convergence Of E-Learnin...Assessing The Tangible And Intangible Impacts Of The Convergence Of E-Learnin...
Assessing The Tangible And Intangible Impacts Of The Convergence Of E-Learnin...ijistjournal
 
Concept integration using edit distance and n gram match
Concept integration using edit distance and n gram match Concept integration using edit distance and n gram match
Concept integration using edit distance and n gram match ijdms
 
Knowledge management
Knowledge managementKnowledge management
Knowledge managementNEHA SHARMA
 
Building_a_Personal_Knowledge_Recommenda
Building_a_Personal_Knowledge_RecommendaBuilding_a_Personal_Knowledge_Recommenda
Building_a_Personal_Knowledge_RecommendaVinícios Pereira
 
Knowledge Management by Arti Pandey UIM Naini Allahabad
Knowledge Management by Arti Pandey UIM Naini AllahabadKnowledge Management by Arti Pandey UIM Naini Allahabad
Knowledge Management by Arti Pandey UIM Naini AllahabadAnjani Pandey
 
Bsim0004 Assignment1 Copy Part1
Bsim0004 Assignment1 Copy Part1Bsim0004 Assignment1 Copy Part1
Bsim0004 Assignment1 Copy Part1Svensson Leung
 
An efficient educational data mining approach to support e-learning
An efficient educational data mining approach to support e-learningAn efficient educational data mining approach to support e-learning
An efficient educational data mining approach to support e-learningVenu Madhav
 

Similar to Ontology KM System Concept Extraction (20)

A Survey on Knowledge Transfer between Knowledge-based Systems
A Survey on Knowledge Transfer between Knowledge-based SystemsA Survey on Knowledge Transfer between Knowledge-based Systems
A Survey on Knowledge Transfer between Knowledge-based Systems
 
Ontology-Oriented Inference-Based Learning Content Management System  
Ontology-Oriented Inference-Based Learning Content Management System  Ontology-Oriented Inference-Based Learning Content Management System  
Ontology-Oriented Inference-Based Learning Content Management System  
 
Ontology-Oriented Inference-Based Learning Content Management System
Ontology-Oriented Inference-Based Learning Content Management System  Ontology-Oriented Inference-Based Learning Content Management System
Ontology-Oriented Inference-Based Learning Content Management System
 
ONTOLOGY-ORIENTED INFERENCE-BASED LEARNING CONTENT MANAGEMENT SYSTEM
ONTOLOGY-ORIENTED INFERENCE-BASED LEARNING CONTENT MANAGEMENT SYSTEMONTOLOGY-ORIENTED INFERENCE-BASED LEARNING CONTENT MANAGEMENT SYSTEM
ONTOLOGY-ORIENTED INFERENCE-BASED LEARNING CONTENT MANAGEMENT SYSTEM
 
Insight_in_the_gap
Insight_in_the_gapInsight_in_the_gap
Insight_in_the_gap
 
Towards the Intelligent Internet of Everything
Towards the Intelligent Internet of EverythingTowards the Intelligent Internet of Everything
Towards the Intelligent Internet of Everything
 
Semantic Annotation Framework For Intelligent Information Retrieval Using KIM...
Semantic Annotation Framework For Intelligent Information Retrieval Using KIM...Semantic Annotation Framework For Intelligent Information Retrieval Using KIM...
Semantic Annotation Framework For Intelligent Information Retrieval Using KIM...
 
Semantic Annotation Framework For Intelligent Information Retrieval Using KIM...
Semantic Annotation Framework For Intelligent Information Retrieval Using KIM...Semantic Annotation Framework For Intelligent Information Retrieval Using KIM...
Semantic Annotation Framework For Intelligent Information Retrieval Using KIM...
 
Assessing The Tangible And Intangible Impacts Of The Convergence Of E-Learnin...
Assessing The Tangible And Intangible Impacts Of The Convergence Of E-Learnin...Assessing The Tangible And Intangible Impacts Of The Convergence Of E-Learnin...
Assessing The Tangible And Intangible Impacts Of The Convergence Of E-Learnin...
 
A novel method for generating an elearning ontology
A novel method for generating an elearning ontologyA novel method for generating an elearning ontology
A novel method for generating an elearning ontology
 
Assessing The Tangible And Intangible Impacts Of The Convergence Of E-Learnin...
Assessing The Tangible And Intangible Impacts Of The Convergence Of E-Learnin...Assessing The Tangible And Intangible Impacts Of The Convergence Of E-Learnin...
Assessing The Tangible And Intangible Impacts Of The Convergence Of E-Learnin...
 
Concept integration using edit distance and n gram match
Concept integration using edit distance and n gram match Concept integration using edit distance and n gram match
Concept integration using edit distance and n gram match
 
Document
DocumentDocument
Document
 
Knowledge management
Knowledge managementKnowledge management
Knowledge management
 
Building_a_Personal_Knowledge_Recommenda
Building_a_Personal_Knowledge_RecommendaBuilding_a_Personal_Knowledge_Recommenda
Building_a_Personal_Knowledge_Recommenda
 
Knowledge Management by Arti Pandey UIM Naini Allahabad
Knowledge Management by Arti Pandey UIM Naini AllahabadKnowledge Management by Arti Pandey UIM Naini Allahabad
Knowledge Management by Arti Pandey UIM Naini Allahabad
 
Technologies for Information and Knowledge Management (2011)
Technologies for Information and Knowledge Management (2011)Technologies for Information and Knowledge Management (2011)
Technologies for Information and Knowledge Management (2011)
 
Bsim0004 Assignment1 Copy Part1
Bsim0004 Assignment1 Copy Part1Bsim0004 Assignment1 Copy Part1
Bsim0004 Assignment1 Copy Part1
 
An efficient educational data mining approach to support e-learning
An efficient educational data mining approach to support e-learningAn efficient educational data mining approach to support e-learning
An efficient educational data mining approach to support e-learning
 
Contributions on Knowledge Management in Mechanical Engineering
Contributions on Knowledge Management in Mechanical EngineeringContributions on Knowledge Management in Mechanical Engineering
Contributions on Knowledge Management in Mechanical Engineering
 

Recently uploaded

Proudly South Africa powerpoint Thorisha.pptx
Proudly South Africa powerpoint Thorisha.pptxProudly South Africa powerpoint Thorisha.pptx
Proudly South Africa powerpoint Thorisha.pptxthorishapillay1
 
Presiding Officer Training module 2024 lok sabha elections
Presiding Officer Training module 2024 lok sabha electionsPresiding Officer Training module 2024 lok sabha elections
Presiding Officer Training module 2024 lok sabha electionsanshu789521
 
Roles & Responsibilities in Pharmacovigilance
Roles & Responsibilities in PharmacovigilanceRoles & Responsibilities in Pharmacovigilance
Roles & Responsibilities in PharmacovigilanceSamikshaHamane
 
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️9953056974 Low Rate Call Girls In Saket, Delhi NCR
 
Introduction to AI in Higher Education_draft.pptx
Introduction to AI in Higher Education_draft.pptxIntroduction to AI in Higher Education_draft.pptx
Introduction to AI in Higher Education_draft.pptxpboyjonauth
 
“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...
“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...
“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...Marc Dusseiller Dusjagr
 
Crayon Activity Handout For the Crayon A
Crayon Activity Handout For the Crayon ACrayon Activity Handout For the Crayon A
Crayon Activity Handout For the Crayon AUnboundStockton
 
Alper Gobel In Media Res Media Component
Alper Gobel In Media Res Media ComponentAlper Gobel In Media Res Media Component
Alper Gobel In Media Res Media ComponentInMediaRes1
 
internship ppt on smartinternz platform as salesforce developer
internship ppt on smartinternz platform as salesforce developerinternship ppt on smartinternz platform as salesforce developer
internship ppt on smartinternz platform as salesforce developerunnathinaik
 
Solving Puzzles Benefits Everyone (English).pptx
Solving Puzzles Benefits Everyone (English).pptxSolving Puzzles Benefits Everyone (English).pptx
Solving Puzzles Benefits Everyone (English).pptxOH TEIK BIN
 
Final demo Grade 9 for demo Plan dessert.pptx
Final demo Grade 9 for demo Plan dessert.pptxFinal demo Grade 9 for demo Plan dessert.pptx
Final demo Grade 9 for demo Plan dessert.pptxAvyJaneVismanos
 
CARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptxCARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptxGaneshChakor2
 
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdfssuser54595a
 
EPANDING THE CONTENT OF AN OUTLINE using notes.pptx
EPANDING THE CONTENT OF AN OUTLINE using notes.pptxEPANDING THE CONTENT OF AN OUTLINE using notes.pptx
EPANDING THE CONTENT OF AN OUTLINE using notes.pptxRaymartEstabillo3
 
Painted Grey Ware.pptx, PGW Culture of India
Painted Grey Ware.pptx, PGW Culture of IndiaPainted Grey Ware.pptx, PGW Culture of India
Painted Grey Ware.pptx, PGW Culture of IndiaVirag Sontakke
 
DATA STRUCTURE AND ALGORITHM for beginners
DATA STRUCTURE AND ALGORITHM for beginnersDATA STRUCTURE AND ALGORITHM for beginners
DATA STRUCTURE AND ALGORITHM for beginnersSabitha Banu
 
Meghan Sutherland In Media Res Media Component
Meghan Sutherland In Media Res Media ComponentMeghan Sutherland In Media Res Media Component
Meghan Sutherland In Media Res Media ComponentInMediaRes1
 
Employee wellbeing at the workplace.pptx
Employee wellbeing at the workplace.pptxEmployee wellbeing at the workplace.pptx
Employee wellbeing at the workplace.pptxNirmalaLoungPoorunde1
 

Recently uploaded (20)

Proudly South Africa powerpoint Thorisha.pptx
Proudly South Africa powerpoint Thorisha.pptxProudly South Africa powerpoint Thorisha.pptx
Proudly South Africa powerpoint Thorisha.pptx
 
Presiding Officer Training module 2024 lok sabha elections
Presiding Officer Training module 2024 lok sabha electionsPresiding Officer Training module 2024 lok sabha elections
Presiding Officer Training module 2024 lok sabha elections
 
Roles & Responsibilities in Pharmacovigilance
Roles & Responsibilities in PharmacovigilanceRoles & Responsibilities in Pharmacovigilance
Roles & Responsibilities in Pharmacovigilance
 
TataKelola dan KamSiber Kecerdasan Buatan v022.pdf
TataKelola dan KamSiber Kecerdasan Buatan v022.pdfTataKelola dan KamSiber Kecerdasan Buatan v022.pdf
TataKelola dan KamSiber Kecerdasan Buatan v022.pdf
 
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
call girls in Kamla Market (DELHI) 🔝 >༒9953330565🔝 genuine Escort Service 🔝✔️✔️
 
Introduction to AI in Higher Education_draft.pptx
Introduction to AI in Higher Education_draft.pptxIntroduction to AI in Higher Education_draft.pptx
Introduction to AI in Higher Education_draft.pptx
 
“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...
“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...
“Oh GOSH! Reflecting on Hackteria's Collaborative Practices in a Global Do-It...
 
Crayon Activity Handout For the Crayon A
Crayon Activity Handout For the Crayon ACrayon Activity Handout For the Crayon A
Crayon Activity Handout For the Crayon A
 
Alper Gobel In Media Res Media Component
Alper Gobel In Media Res Media ComponentAlper Gobel In Media Res Media Component
Alper Gobel In Media Res Media Component
 
internship ppt on smartinternz platform as salesforce developer
internship ppt on smartinternz platform as salesforce developerinternship ppt on smartinternz platform as salesforce developer
internship ppt on smartinternz platform as salesforce developer
 
Solving Puzzles Benefits Everyone (English).pptx
Solving Puzzles Benefits Everyone (English).pptxSolving Puzzles Benefits Everyone (English).pptx
Solving Puzzles Benefits Everyone (English).pptx
 
Final demo Grade 9 for demo Plan dessert.pptx
Final demo Grade 9 for demo Plan dessert.pptxFinal demo Grade 9 for demo Plan dessert.pptx
Final demo Grade 9 for demo Plan dessert.pptx
 
CARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptxCARE OF CHILD IN INCUBATOR..........pptx
CARE OF CHILD IN INCUBATOR..........pptx
 
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
18-04-UA_REPORT_MEDIALITERAСY_INDEX-DM_23-1-final-eng.pdf
 
Model Call Girl in Bikash Puri Delhi reach out to us at 🔝9953056974🔝
Model Call Girl in Bikash Puri  Delhi reach out to us at 🔝9953056974🔝Model Call Girl in Bikash Puri  Delhi reach out to us at 🔝9953056974🔝
Model Call Girl in Bikash Puri Delhi reach out to us at 🔝9953056974🔝
 
EPANDING THE CONTENT OF AN OUTLINE using notes.pptx
EPANDING THE CONTENT OF AN OUTLINE using notes.pptxEPANDING THE CONTENT OF AN OUTLINE using notes.pptx
EPANDING THE CONTENT OF AN OUTLINE using notes.pptx
 
Painted Grey Ware.pptx, PGW Culture of India
Painted Grey Ware.pptx, PGW Culture of IndiaPainted Grey Ware.pptx, PGW Culture of India
Painted Grey Ware.pptx, PGW Culture of India
 
DATA STRUCTURE AND ALGORITHM for beginners
DATA STRUCTURE AND ALGORITHM for beginnersDATA STRUCTURE AND ALGORITHM for beginners
DATA STRUCTURE AND ALGORITHM for beginners
 
Meghan Sutherland In Media Res Media Component
Meghan Sutherland In Media Res Media ComponentMeghan Sutherland In Media Res Media Component
Meghan Sutherland In Media Res Media Component
 
Employee wellbeing at the workplace.pptx
Employee wellbeing at the workplace.pptxEmployee wellbeing at the workplace.pptx
Employee wellbeing at the workplace.pptx
 

Ontology KM System Concept Extraction

  • 1. 1
  • 2. Presentation Outlines  Introduction  Knowledge Management  Knowledge Management System  Ontology Based Knowledge Management System  Concept Extraction Process From Natural Text Formats  Application of Ontology Based Knowledge Management System  Conclusion 2
  • 3. Introduction  Now days in many organizations knowledge is considered as the most important asset that enables sustainable competitive advantage in very dynamic and competitive markets.  The development of KM and KMS becomes an important issue.  Traditionally, KMS uses keyword based system to discover, retrieve and share useful knowledge from the system. 3
  • 4. Cont.  Since keyword based system can not understand the meaning of data users are stressed to find related terms to their query terms.  Due to the fact that the emerging of new ontology based knowledge management system is occurred.  It is a content oriented system which helps users to get related terms according their submitted query. 4
  • 5. Knowledge Management  Knowledge Management (KM) is a process that deals with the development, storage, retrieval, and dissemination of information and expertise within an organization to support and improve its business performance. 5
  • 6. Cont.  Knowledge Management (KM) consists of a technique that uses Technological tools for the management of information.  its goal is:-  To improve the efficiency of work teams;  To studies methods for making knowledge explicit, and  Sharing of informative knowledge resources. 6
  • 7. Knowledge Management System  knowledge management system, supporting the creation and storage of knowledge,  The goal of KMS is to provide the right knowledge to the right people at the right time and right format.  KMS contain both explicit and tacit knowledge.  Tacit knowledge is more difficult to manage than explicit knowledge and can be expressed as "we know more than we can tell”. 7
  • 8. Cont.  KMS makes tacit knowledge better capitalize and disseminate using different technologies.  Those are:  Document based technologies  Ontology/Taxonomy based technologies  Artificial Intelligence based technologies 8
  • 9. Ontology Based Knowledge Management System  Ontology is an explicit and formal specification of a conceptualization.  That is a formal description of the relevant concepts and relationships in an area of interest, simplifying and abstracting the view of the world for some purpose.  It gives an understandable meaning both to humans and to software agents. 9
  • 10. Cont.  In KMS, ontology can be regarded as the classification of knowledge.  Ontology defines shared vocabulary for facilitating knowledge communication, storing, searching and sharing in knowledge management systems. 10
  • 11. Cont.  Ontology-based knowledge management system is better at supporting:-  The integration of related resources,  Searching the accurate knowledge quickly, and  Avoiding a large number of irrelevant knowledge. 11
  • 12. Ontology Development Tools  Ontologies are built by highly trained knowledge engineers. Some of the developmental tools for ontology are:  Protégé 2000  Onto Lingua  Onto Edit  Web Onto 12
  • 13. Cont. Figure: General architecture of Ontology based knowledge management system 13
  • 14. Unique Features of Ontology based KMS  Complete relation ship between the concepts, cases and facts is stated well.  Meaning of the facts is taking in to account to relate facts each other  Knowledge is represented in a formal language to make good communication way and understanding among human and machine.  Logic-based inference rules - correct and provable results achieved. 14
  • 15. Concept Extraction From Natural Texts  Concepts are sequences of words that represent real or imaginary entities or ideas that users are interested in from the large data source.  Ontology based knowledge management system is used to extract concepts and realizations from the natural language or plain text using different techniques. 15
  • 16. Cont.  Such as:- •Information Retrieval system •Information Extraction •Machine Learning •Data Mining  Ontologies provide a shared and common understanding of a domain that can be communicated across people and applications. 16
  • 17. Cont.  Information Extraction is the process of automatically obtaining knowledge from plain text.  Because of the ambiguity of written natural language, Information Extraction is a difficult task.  Ontology-based Information Extraction (OBIE) reduces this complexity by including contextual information in the form of a domain ontology. 17
  • 18. Cont. Figure: Information Extraction process From Natural Textual document Using OBIE. 18
  • 19. APPLICATION  OKMS is applicable In Education, Business, Agriculture, Medicine and Library. 19
  • 20. Advantages  Facilitates search, exchange and integration of knowledge.  Satisfy the users need by recommend them related items.  Improves human to computer interaction.  Helps to extract concepts through large datasets  It supports business centers for competitive advantage in very dynamic and competitive markets.  Allow machine able to understand semantics of data. 20
  • 21. Cont.  Ontologies make domain knowledge reusable.  Ontologies enable the interoperability among models or specific domain vocabularies.  Ontologies allow and simplify the communication among humans, computational systems, and between humans and systems. 21
  • 22. Cont.  Ontologies have the expressive power for acquiring context from diverse and heterogeneous source.  It is possible to apply reasoning and inference mechanisms by means of explicit representation of semantics. 22
  • 23. Disadvantages  OBKMS systems have not been widely adopted because of the  Its difficulties in deployment and maintenance  Hard to implement and construct  Space, time and money consuming.  They have no discussion hub rather than they are suitable for searching. 23
  • 24. Conclusion  OBKMS is useful to satisfy customers need by developing semantic webs, Recommender systems and IR systems in different areas such as library and business centers.  Since our world is covered in dynamic and variety of word sense and Knowledge fusion, it is difficult to construct ontology based knowledge system easily.  Knowledge representation is not a simple way process. 24
  • 25. Recommendation  While we are living in knowledge fusion world it is good to implement multi-lingual ontology based knowledge management system.  According to our country it is possible to implement and develop ontology based knowledge management system for  Ethiopian Higher institution Library system  Ethiopian Health System centers. 25
  • 26. 26