International Technology Alliance In Network & Information Sciences International Technology Alliance In Network & Information Sciences 1 The Semantic.

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Presentation transcript:

International Technology Alliance In Network & Information Sciences International Technology Alliance In Network & Information Sciences 1 The Semantic Battlespace Infosphere: A Knowledge Infrastructure for Improved Coalition Inter-Operability Paul R Smart & Nigel R Shadbolt

2 Interoperability Challenges –Semantic Integration How can we enable the integration of heterogeneous information content in semantically-coherent ways? –Information Exchange How can we support meaning-preserving modes of information exchange across organizational and cultural boundaries? –Shared Understanding How can we promote a shared understanding of information content in a distributed and culturally heterogeneous coalition environment? –Information Exploitation How can we enable advanced modes of information exploitation that capitalize on the availability of advanced sensor systems and a global information space? –Communication & Collaboration How can we surmount barriers to communication and collaboration, especially in military coalition contexts? How can we deal with a host of cultural and psycho-social issues that may undermine information sharing and mutual trust? –Information Representation How can we develop, use and exploit representational formalisms that serve as an effective vehicle for the communication and manipulation of information content?

3 Team Situation Awareness (TSA)? –To what extent is situation awareness important for coalition inter- operability? –Does it merely reflect the outcome of information exchange, communication, collaboration, etc? –How should situation awareness be characterized and analysed in coalition contexts? –To what extent is situation awareness important for coalition inter- operability? –Does it merely reflect the outcome of information exchange, communication, collaboration, etc? –How should situation awareness be characterized and analysed in coalition contexts? Varieties of TSA: –Shared Situation Awareness all team members have same awareness –Collective Situation Awareness team members have distinct, but collective, awareness of situation –Emergent Situation Awareness team members have limited (any?) individual awareness – awareness is ‘ascribed’ to team as system

4 Semantic Technologies Developed as part of Semantic Web initiative Knowledge representation –RDF/RDFS/OWL –semantic expressivity – derived from description logics –modelling axioms with accepted meaning permits inference, e.g. transitive closure of ‘subClassOf’ axiom Query capabilities –SPARQL/RDQL –query repositories at semantic level –exploit semantic infrastructure of domain –requires repositories to expose query interface Reasoning & inference –certain forms of inference supported by representation languages –rule languages – SWRL, RIF

5 Semantic Battlespace Infosphere Semantically-enabled technological framework for improving information exploitation and operational effectiveness in wide variety of military contexts. Focus of a number of eDefence research projects: –MIMEX, ITA, SEMIOTIKS, AKTiveSA, OntoMediate Builds on notion of JBI –some similarities: exploits information available in existing C2 systems, but it does not aim to replace them support improved situation awareness based on its ability to integrate (fuse) information from different sources and to make inferences based on environmental data –key difference is extent to which semantic technologies, such as ontologies, underpin information representation and processing Claim is that coalition capabilities benefit from semantic technologies –sufficient, but also necessary?

6 Opportunity Areas How do semantic extensions to the JBI (and semantic technologies in general) contribute to improved capabilities? –Ontologies semantic vs. non-semantic approaches ontologies provide semantic substrate for information integration and aggregation processes provide explicit semantics which may be useful for information exchange between epistemically, culturally and organizationally heterogeneous communities provide coalition-level common language or vocabulary for data elements suited to distributed information environments –Semantic Queries non-semantic approaches result in queries defined in terms of logical of structural organization of data, e.g. XQuery, SQL heterogeneity of sources means that different queries must be written to match multiple schemas semantic queries exploit conceptual knowledge that is independent of local schemas good mechanism for expressing information requirements

7 Some Problems (1) Collective Representations –does sufficient common ground exist in coalition contexts to ensure that a common languages would be accepted - do cultural differences militate against consensual representations? Socio-Technical Challenges –inter-personal relationships, socio-cultural and organizational factors seem to play a key role key to coalition interoperability – do semantic technologies really help here? Network Environment –ad hoc wireless mobile networks –volatility of query results differential availability of nodes confusing situation picture intelligent caching? epistemic redundancy? –similar concerns with reasoning processes –information accessibility information not always available data charging approaches? All nodes interconnected. Physical displacement of mobile nodes leads to disruption in connectivity.

8 Some Problems (2) Semantic Technologies –reasoning processes must complete within operationally-useful timeframe –semantic expressivity is both a boon and a burden: –semantic queries may be difficult for users to design in terms of the underlying query language Knowledge Capture –knowledge acquisition bottleneck has not necessarily disappeared with advent of semantic technologies Semantic Integration –automated approaches to semantic information integration largely beyond current state-of-the-art –requirement for dynamic semantic integration impossible to predict relevant information sources in light of rapidly changing operation commitments information exchange with non-military agencies, e.g. NGOs is operational prerequisite –extant semantic integration solutions do not, in general, support information quality assessments “…the semantic expressivity of ontologies, at least OWL ontologies, supports a large number of rule firings following fact assertion. Semantic expressivity is a potential problem here because even a small change to the knowledge infrastructure (i.e. single fact assertion) can have semantically-significant implications, e.g. it may result in computation of the entire taxonomic hierarchy, and this results in extensive bouts of inference execution” – Smart et al, 1997

International Technology Alliance In Network & Information Sciences International Technology Alliance In Network & Information Sciences 9 Project 12: Semantic Integration and Collaborative Planning

10 ITA Project 12 Tasks Task 1: Semantic Integration & Interoperability –investigate techniques for semantically-mediated integration of information content –support coalition inter-operability Task 2: Plan Representation within the Collaborative Planning Model –investigate representational issues associated with the understanding, communication and enactment of coalition plans –support collaborative planning and plan execution Task 1 Task 2 Information Representation Shared Understanding Semantic Integration Information Exploitation Information Exchange Communication & Collaboration

11 Military Relevance semantic integration & inter- operability –improved modes of inter-agent information exchange & communication –semantically-sensible transformations of information/data content between the elements of a coalition formation –inter-operation between legacy military systems and application –exploitation of semantically heterogeneous information sources –federated access to a variety of military and non-military information repositories plan representation –improve coalition planning capabilities –improve the understanding, communication and acceptance of plans –facilitate inter-agent communication of coalition plans within hybrid (human/agent) teams –improve trustworthiness of plan solutions by enhancing plan relevance and credibility –enhance opportunities for automated plan evaluation/execution –improve information aggregation for goal-relevant information processing during the development or execution of coalition plans

12 Proposed ITA Research (1) generate a test suite of semantically similar ontologies (used for empirical evaluation) develop a representational framework to support the interpretation, evaluation and execution of semantic integration solutions Shared Ontology Ontology AOntology B Ontology alignment/mapping – identification of semantically- related elements The Semantics of Semantic Integration evaluate approaches to representing uncertainty, e.g. fuzzy logic, probabilistic extensions to OWL extend the representation framework to include support for certainty, trust, provenance, explanations, justifications, etc.

13 Proposed ITA Research (2) empirically evaluate extant semantic integration techniques using a controlled testing and evaluation framework develop an integrative, knowledge- driven framework for the adaptive selection and automatic parameterization of semantic integration techniques understand how to combine multiple semantic similarity metrics to improve the accuracy (and efficiency) of semantic integration solutions investigate the trade-off between semantic expressivity and representational parsimony in semantic integration contexts A Framework for Adaptive Semantic Integration Integrative Framework for Semantic Integration Rules (Adaptive Selection, Automatic Parameterization) Empirical Evaluation Semantic Integration Techniques MAFRAGLUEPROMPTOthers

14 Proposed ITA Research (3) investigate strategies for improving the current state-of-the-art with respect to automated modes of semantic integration evaluate novel approaches to semantic integration –recursive neural networks –structural heuristic methods evaluate the importance of upper or mid-level ontologies for semantic integration in coalition contexts –provide best-practice ontology development recommendations to facilitate future coalition inter- operability and information integration –develop and test the use of an ‘upper’ ontology for coalition operations Strategies for Enhanced Semantic Integration

15 Conclusion The notion of the SBI provides a vision of how semantic technologies may be used to improve information exploitation and operational effectiveness in coalition military contexts. Semantic technologies may assist with some aspects of coalition inter-operability, but significant challenges remain, e.g. –knowledge capture –the idiosyncrasies of the military network environment –semantic technologies themselves Some of these challenges are being explored in a number of ongoing research projects. Semantic integration emerges as a critical problem-opportunity area for SBI-related research – this will be the focus of our work within the ITA initiative.