919 research outputs found
OntoMaven: Maven-based Ontology Development and Management of Distributed Ontology Repositories
In collaborative agile ontology development projects support for modular
reuse of ontologies from large existing remote repositories, ontology project
life cycle management, and transitive dependency management are important
needs. The Apache Maven approach has proven its success in distributed
collaborative Software Engineering by its widespread adoption. The contribution
of this paper is a new design artifact called OntoMaven. OntoMaven adopts the
Maven-based development methodology and adapts its concepts to knowledge
engineering for Maven-based ontology development and management of ontology
artifacts in distributed ontology repositories.Comment: Pre-print submission to 9th International Workshop on Semantic Web
Enabled Software Engineering (SWESE2013). Berlin, Germany, December 2-5, 201
concept paper
In this concept paper, we outline our working plan for the next phase of the
Corporate Semantic Web project. The plan covers the period from March 2009 to
March 2010. Corporate ontology engineering will improve the facilitation of
agile ontology engineering to lessen the costs of ontology development and,
especially, maintenance. Corporate semantic collaboration focuses the human-
centered aspects of knowledge management in corporate contexts. Corporate
semantic search is settled on the highest application level of the three
research areas and at that point it is a representative for applications
working on and with the appropriately represented and delivered background
knowledge. Each of these pillars will yield innovative methods and tools
during the project runtime until 2013. We propose a concept draft and a
working plan covering the next twelve months for an integrative architecture
of a Corporate Semantic Web provided by these three core pillars
requirements and use cases
In this report, we introduce our initial vision of the Corporate Semantic Web
as the next step in the broad field of Semantic Web research. We identify
requirements of the corporate environment and gaps between current approaches
to tackle problems facing ontology engineering, semantic collaboration, and
semantic search. Each of these pillars will yield innovative methods and tools
during the project runtime until 2013. Corporate ontology engineering will
improve the facilitation of agile ontology engineering to lessen the costs of
ontology development and, especially, maintenance. Corporate semantic
collaboration focuses the human-centered aspects of knowledge management in
corporate contexts. Corporate semantic search is settled on the highest
application level of the three research areas and at that point it is a
representative for applications working on and with the appropriately
represented and delivered background knowledge. We propose an initial layout
for an integrative architecture of a Corporate Semantic Web provided by these
three core pillars
prototypical implementations
In this technical report, we present prototypical implementations of
innovative tools and methods developed according to the working plan outlined
in Technical Report TR-B-09-05 [23]. We present an ontology modularization and
integration framework and the SVoNt server, the server-side end of an SVN-
based versioning system for ontologies in the Corporate Ontology Engineering
pillar. For the Corporate Semantic Collaboration pillar, we present the
prototypical implementation of a light-weight ontology editor for non-experts
and an ontology based expert finder system. For the Corporate Semantic Search
pillar, we present a prototype for algorithmic extraction of relations in
folksonomies, a tool for trend detection using a semantic analyzer, a tool for
automatic classification of web documents using Hidden Markov models, a
personalized semantic recommender for multimedia content, and a semantic
search assistant developed in co-operation with the Museumsportal Berlin. The
prototypes complete the next milestone on the path to an integral Cor- porate
Semantic Web architecture based on the three pillars Corporate Ontol- ogy
Engineering, Corporate Semantic Collaboration, and Corporate Semantic Search,
as envisioned in [23]
Requirements and Use Cases ; Report I on the sub-project Smart Content Enrichment
In this technical report, we present the results of the first milestone phase
of the Corporate Smart Content sub-project "Smart Content Enrichment". We
present analyses of the state of the art in the fields concerning the three
working packages defined in the sub-project, which are aspect-oriented
ontology development, complex entity recognition, and semantic event pattern
mining. We compare the research approaches related to our three research
subjects and outline briefly our future work plan
Corporate Smart Content Evaluation
Nowadays, a wide range of information sources are available due to the
evolution of web and collection of data. Plenty of these information are
consumable and usable by humans but not understandable and processable by
machines. Some data may be directly accessible in web pages or via data feeds,
but most of the meaningful existing data is hidden within deep web databases
and enterprise information systems. Besides the inability to access a wide
range of data, manual processing by humans is effortful, error-prone and not
contemporary any more. Semantic web technologies deliver capabilities for
machine-readable, exchangeable content and metadata for automatic processing
of content. The enrichment of heterogeneous data with background knowledge
described in ontologies induces re-usability and supports automatic processing
of data. The establishment of “Corporate Smart Content” (CSC) - semantically
enriched data with high information content with sufficient benefits in
economic areas - is the main focus of this study. We describe three actual
research areas in the field of CSC concerning scenarios and datasets
applicable for corporate applications, algorithms and research. Aspect-
oriented Ontology Development advances modular ontology development and
partial reuse of existing ontological knowledge. Complex Entity Recognition
enhances traditional entity recognition techniques to recognize clusters of
related textual information about entities. Semantic Pattern Mining combines
semantic web technologies with pattern learning to mine for complex models by
attaching background knowledge. This study introduces the afore-mentioned
topics by analyzing applicable scenarios with economic and industrial focus,
as well as research emphasis. Furthermore, a collection of existing datasets
for the given areas of interest is presented and evaluated. The target
audience includes researchers and developers of CSC technologies - people
interested in semantic web features, ontology development, automation,
extracting and mining valuable information in corporate environments. The aim
of this study is to provide a comprehensive and broad overview over the three
topics, give assistance for decision making in interesting scenarios and
choosing practical datasets for evaluating custom problem statements. Detailed
descriptions about attributes and metadata of the datasets should serve as
starting point for individual ideas and approaches
Lifecycle-Support in Architectures for Ontology-Based Information Systems
Ontology-based applications play an increasingly important role in the public and corporate Semantic Web. While today there exist a range of tools and technologies to support specific ontology engineering and management activities, architectural design guidelines for building ontology-based applications are missing. In this paper, we present an architecture for ontology-based applications—covering the complete ontology-lifecycle—that is intended to support
software engineers in designing and developing ontology based-applications.
We illustrate the use of the architecture in a concrete case study using the NeOn toolkit as one implementation of the architecture
state of the art analysis ; working packages in project phase II
In this report, we introduce our goals and present our requirement analysis
for the second phase of the Corporate Semantic Web project. Corporate ontology
engineering will improve the facilitation of agile ontology engineering to
lessen the costs of ontology development and, especially, maintenance.
Corporate semantic collaboration focuses the human-centered aspects of
knowledge management in corporate contexts. Corporate semantic search is
settled on the highest application level of the three research areas and at
that point it is a representative for applications working on and with the
appropriately represented and delivered background knowledge
Validation and Evaluation
In this technical report, we present prototypical implementations of
innovative tools and methods for personalized and contextualized (multimedia)
search, collaborative ontology evolution, ontology evaluation and cost models,
and dynamic access and trends in distributed (semantic) knowledge, developed
according to the working plan outlined in Technical Report TR-B-12-04. The
prototypes complete the next milestone on the path to an integral Corporate
Semantic Web architecture based on the three pillars Corporate Ontology
Engineering, Corporate Semantic Collaboration, and Corporate Semantic Search,
as envisioned in TR-B-08-09
- …