Ontology of KM technologies
Describes an ontology of KM technologies based on four generic modes of support for business strategy. Article to be published in the Journal of Knowledge Management, Vol. 11, No. 1, 2007.
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- Slide 1: Journal of Knowledge Management
Vol. 11, No. 1 (2007)
A Strategy-Based Ontology
of Knowledge Management
Technologies
André Saito, Katsuhiro Umemoto and Mitsuru Ikeda
Japan Advanced Institute of Science and Technology
Graduate School of Knowledge Science
Ver 1.1 – 2006.01.17
- Slide 2: Background
Knowledge management (KM) is still emerging
The word knowledge has many different meanings
Contributions come from many disciplines
The role of technology in KM needs further
explanation
Technology itself is complex and fast-paced
Existing accounts present limitations
A link between KM technologies and strategy
is missing
KM itself suffers from lack of strategic alignment
Strategic alignment of IT is a well known issue
Saito, Umemoto and Ikeda 2006 2
- Slide 3: Objectives and Methodology
Objectives
To describe the relations among technology, KM, and
strategy
To categorize available KM technologies according to
those relations.
Methodology
An ontology development method was used to identify
and formally define concepts and their relationships
Two sub-domains were mapped: KM technologies and
KM strategy
Saito, Umemoto and Ikeda 2006 3
- Slide 4: Findings on KM strategy
Three meanings associated to the term:
An approach to KM
Express a particular perspective on knowledge and how
it can be managed
A knowledge strategy
Identify and prioritize knowledge to be managed, based
on its contribution to business strategy
A KM implementation strategy
Describes steps and conditions for the successful
implementation of KM initiatives
Saito, Umemoto and Ikeda 2006 4
- Slide 5: KM strategy as…
Approach to KM
Saito, Umemoto and Ikeda 2006 5
- Slide 6: KM strategy as…
Knowledge strategy
Saito, Umemoto and Ikeda 2006 6
- Slide 7: KM strategy as…
KM implementation strategy
Saito, Umemoto and Ikeda 2006 7
- Slide 8: KM strategy conceptual map
Saito, Umemoto and Ikeda 2006 8
- Slide 9: Findings on KM technologies
Common sources of misunderstanding:
Technologies are usually associated with
knowledge processes, which are numerous
and highly context-dependent
Technologies are usually integrated into
systems, in many different levels
Component technologies ≠ KM systems
KM systems can be either generic or
domain-specific applications
Generic KM applications ≠ Business applications
Saito, Umemoto and Ikeda 2006 9
- Slide 10: An ontology of KM technologies
Three basic categories:
Component technologies (integrated into other systems)
KM applications (for general knowledge processes)
Business applications with KM functionality (for specific
business processes)
Saito, Umemoto and Ikeda 2006 10
- Slide 11: KM component technologies
Storage. Databases, repositories, file-servers, Collaboration. Calendaring, file sharing, meeting
data warehouses, data marts, etc. support, application sharing, group decision
support, etc.
Connectivity. Internet, security, wireless,
mobility, authentication, P2P, etc. Community. Community management, web logs,
wikis, social network analysis, etc.
Communication. E-mail, mailing lists, discussion
groups, chat, instant messaging, audio/video Creativity. Cognitive mapping, idea generation,
conferencing, VoIP, etc. etc.
Authoring. Office suites, desktop publishing, Data mining. Statistical techniques, multi-
graphic suites, multimedia, imaging, etc. dimensional analysis, neural networks, etc.
Distribution. Web, intranets, extranets, Text mining. Semantic analysis, Bayesian
enterprise portals, personalization, syndication, inference, natural language processing, etc.
audio/video streaming, etc. Web mining. Collaborative profiling, intelligent
Search. Search engines, search agents, indexing, agents, etc.
glossaries, thesauri, taxonomies, ontologies, Visualization. 2D and 3D navigation, geographic
collaborative filtering, etc. mapping, etc.
Analytics. Query, reporting, multi-dimensional Organization. Ontology development, ontology
analysis (OLAP), etc. acquisition, taxonomies, glossaries, thesauri,
Workflow. Process modeling, process engines, etc.
etc. Reasoning. Rule-based expert systems, case-
E-learning. Interactive multimedia (CBT), web based reasoning, knowledge-bases, machine
seminars, simulations, etc. learning, fuzzy logic, etc.
Saito, Umemoto and Ikeda 2006 11
- Slide 12: KM applications
Decision support
Document management
Integrate a series of tools for decision
Automate the control of electronic
making.
documents through their entire life-cycle.
Discovery and data mining
Content management
Support the identification of patterns and
Manage the whole Web publishing
in large amounts of data.
process.
Search and organization
Process management
Facilitate access to and organize
Automate the flow of tasks and
unstructured content.
information across business processes.
Enterprise portals
Group support
Integrate access to a range of
Support work and collaboration of groups
information at a single point of entry.
and teams.
Learning management
Project management
Support the delivery of online courses in
Support the management of project
a variety of formats.
activities and resources.
Expertise management
Community support
Brokers expertise in large communities.
Coordinate interaction in large groups.
Saito, Umemoto and Ikeda 2006 12
- Slide 13: Business apps with KM funcionality
Sales Force
Automation
Solutions
Representative
Data
database
warehousing
Contact Center
Customer
Backoffice systems
profiling
Field Service
Customer
Information Analytical
on demand applications
Self-Service
Segmentation
Profiling
Personalization
Profitability analysis
E-Commerce
Needs analysis
Focus Sales analysis
groups Campaign analysis
Campaign Etc.
Management
Operational CRM Analytical CRM
Saito, Umemoto and Ikeda 2006 13
- Slide 14: Linking KM technologies to strategy
A KM program is strategic if it includes:
A knowledge strategy that defines knowledge intents
KM initiatives that support those knowledge intents
KM initiatives are inherently associated with particular
approaches to KM
Personalization Codification
Knowledge Knowledge
Creation
creation creation
through through
personalization codification
Four generic modes of
KM support for strategy Knowledge Knowledge
Transfer
transfer transfer
through through
personalization codification
Saito, Umemoto and Ikeda 2006 14
- Slide 15: KM component technologies
Personalization Codification
Collaboration Discovery
Connectivity Storage
Creation
Communication Search
Authoring Analytics
Collaboration Data mining
Community Text mining
Creativity Web mining
Workflow Visualization
Dissemination Repository
Connectivity Connectivity
Transfer
Communication Storage
Authoring Authoring
Distribution Search
E-learning Workflow
Collaboration Organization
Community Reasoning
Saito, Umemoto and Ikeda 2006 15
- Slide 16: KM applications
Personalization Codification
Collaboration Discovery
Creation
Group support Decision support
Project management Discovery & data mining
Community support Search & organization
Dissemination Repository
Transfer
Enterprise portals Document management
Learning management Content management
Expertise management Process management
Saito, Umemoto and Ikeda 2006 16
- Slide 17: An ontology of KM technologies
Saito, Umemoto and Ikeda 2006 17
- Slide 18: Conclusions
A wide range of technologies can support KM
Three basic categories: component technologies,
KM apps and business apps with KM functionality
KM applications summarize KM functionality
KM technologies are linked to strategy
through KM initiatives that support specific
knowledge intents
There are four generic modes of technological
support for strategy in KM
Saito, Umemoto and Ikeda 2006 18
- Slide 19: Some implications
For research
KM technologies can be better analyzed in the context
of KM initiatives instead of knowledge processes
There seems to be exemplary KM initiatives that
connect specific knowledge intents to typical
approaches to KM and KM technologies
For practice
Guidance in the design of particular KM strategies
Guidance in the selection of adequate
KM technologies for particular KM initiatives
Saito, Umemoto and Ikeda 2006 19