74,998 research outputs found
Rule-based Retrieval of Human Motion Data Using Inductive Logic Programming
This paper proposes a novel method for automatically classifyingand retrieving motions based on spatio-temporal features of motionappearance. Our method first converts a motion data into a form ofclausal language that represents geometrical relations between humanbody parts and their temporal relations. A classification rule is then learned from the minimal set of manually classified examples using inductive logic programming. We introduce a two-step search algorithm to retrieve motion segments from the motion database,which uses two types of classification rules that are discovered bydifferent learning models. Our method allows robust and efficientretrieval from complex motion sequences with a small number oftraining data
Inductive Logic Programming in Databases: from Datalog to DL+log
In this paper we address an issue that has been brought to the attention of
the database community with the advent of the Semantic Web, i.e. the issue of
how ontologies (and semantics conveyed by them) can help solving typical
database problems, through a better understanding of KR aspects related to
databases. In particular, we investigate this issue from the ILP perspective by
considering two database problems, (i) the definition of views and (ii) the
definition of constraints, for a database whose schema is represented also by
means of an ontology. Both can be reformulated as ILP problems and can benefit
from the expressive and deductive power of the KR framework DL+log. We
illustrate the application scenarios by means of examples. Keywords: Inductive
Logic Programming, Relational Databases, Ontologies, Description Logics, Hybrid
Knowledge Representation and Reasoning Systems. Note: To appear in Theory and
Practice of Logic Programming (TPLP).Comment: 30 pages, 3 figures, 2 tables
Distributed First Order Logic
Distributed First Order Logic (DFOL) has been introduced more than ten years
ago with the purpose of formalising distributed knowledge-based systems, where
knowledge about heterogeneous domains is scattered into a set of interconnected
modules. DFOL formalises the knowledge contained in each module by means of
first-order theories, and the interconnections between modules by means of
special inference rules called bridge rules. Despite their restricted form in
the original DFOL formulation, bridge rules have influenced several works in
the areas of heterogeneous knowledge integration, modular knowledge
representation, and schema/ontology matching. This, in turn, has fostered
extensions and modifications of the original DFOL that have never been
systematically described and published. This paper tackles the lack of a
comprehensive description of DFOL by providing a systematic account of a
completely revised and extended version of the logic, together with a sound and
complete axiomatisation of a general form of bridge rules based on Natural
Deduction. The resulting DFOL framework is then proposed as a clear formal tool
for the representation of and reasoning about distributed knowledge and bridge
rules
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