11,500 research outputs found
MinoanER: Schema-Agnostic, Non-Iterative, Massively Parallel Resolution of Web Entities
Entity Resolution (ER) aims to identify different descriptions in various
Knowledge Bases (KBs) that refer to the same entity. ER is challenged by the
Variety, Volume and Veracity of entity descriptions published in the Web of
Data. To address them, we propose the MinoanER framework that simultaneously
fulfills full automation, support of highly heterogeneous entities, and massive
parallelization of the ER process. MinoanER leverages a token-based similarity
of entities to define a new metric that derives the similarity of neighboring
entities from the most important relations, as they are indicated only by
statistics. A composite blocking method is employed to capture different
sources of matching evidence from the content, neighbors, or names of entities.
The search space of candidate pairs for comparison is compactly abstracted by a
novel disjunctive blocking graph and processed by a non-iterative, massively
parallel matching algorithm that consists of four generic, schema-agnostic
matching rules that are quite robust with respect to their internal
configuration. We demonstrate that the effectiveness of MinoanER is comparable
to existing ER tools over real KBs exhibiting low Variety, but it outperforms
them significantly when matching KBs with high Variety.Comment: Presented at EDBT 2001
Efficient Discovery of Ontology Functional Dependencies
Poor data quality has become a pervasive issue due to the increasing
complexity and size of modern datasets. Constraint based data cleaning
techniques rely on integrity constraints as a benchmark to identify and correct
errors. Data values that do not satisfy the given set of constraints are
flagged as dirty, and data updates are made to re-align the data and the
constraints. However, many errors often require user input to resolve due to
domain expertise defining specific terminology and relationships. For example,
in pharmaceuticals, 'Advil' \emph{is-a} brand name for 'ibuprofen' that can be
captured in a pharmaceutical ontology. While functional dependencies (FDs) have
traditionally been used in existing data cleaning solutions to model syntactic
equivalence, they are not able to model broader relationships (e.g., is-a)
defined by an ontology. In this paper, we take a first step towards extending
the set of data quality constraints used in data cleaning by defining and
discovering \emph{Ontology Functional Dependencies} (OFDs). We lay out
theoretical and practical foundations for OFDs, including a set of sound and
complete axioms, and a linear inference procedure. We then develop effective
algorithms for discovering OFDs, and a set of optimizations that efficiently
prune the search space. Our experimental evaluation using real data show the
scalability and accuracy of our algorithms.Comment: 12 page
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