adplus-dvertising
frame-decoration

Question

How can the problem of accommodating new vocabulary or knowledge from new data sources be addressed in OBDA?

a.

By creating a new ontology from scratch.

b.

By using a constrained ontology profile.

c.

By approximating the ontology to be as expressive as possible.

d.

By applying formal meta-models to schema mappings.

Posted under Big Data Computing

Answer: (c).By approximating the ontology to be as expressive as possible. Explanation:The problem of accommodating new vocabulary or knowledge from new data sources in OBDA can be addressed by approximating the ontology to be as expressive as possible while still falling within the required profile.

Engage with the Community - Add Your Comment

Confused About the Answer? Ask for Details Here.

Know the Explanation? Add it Here.

Q. How can the problem of accommodating new vocabulary or knowledge from new data sources be addressed in OBDA?

Similar Questions

Discover Related MCQs

Q. What is the goal of defining a specific language for querying schema mappings?

Q. What is the purpose of designing a query language over a mapping meta-model?

Q. How can reasoning techniques based on a mapping meta-model support the evolution of schema mappings?

Q. What is the main goal of a reasoning system that monitors changes and reactions to them in schema mappings?

Q. What is the primary motivation for using query rewriting techniques in the context of OBDA?How do succinct query expressions, such as nonrecursive Datalog programs, compare to unions of conjunctive queries (UCQs) in terms of query rewriting speed?

Q. What is the primary motivation for using query rewriting techniques in the context of OBDA?

Q. What benefits can be achieved through load-time precomputation of inferences in OBDA systems?

Q. What role does the form of the SQL query play in achieving high performance in the context of query rewriting into SQL?

Q. Which system served as a platform for the implementation of epistemic-query answering techniques in the context of Description Logic (DL) ontologies?

Q. Which prototype implemented resolution-based query rewriting techniques?

Q. Which system focused on the exploitation of efficient rewriting techniques, SQO optimization, and the generation of efficient SQL queries?

Q. What was the primary focus of QuOnto and Mastro initially?

Q. Which generation of OBDA systems has focused on efficient rewriting techniques, SQO optimization, and efficient SQL query generation?

Q. What is a challenge in optimizing query rewriting techniques for industrial applications and Big Data?

Q. What has been the focus of optimization in the context of OBDA systems so far?

Q. In the context of Big Data and complex analytical queries, what is considered a viable alternative for achieving good performance?

Q. What should an OBDA system provide when domain-specific procedures are more efficient?

Q. What should an optimal system for query answering in the context of Big Data include?

Q. In the context of OBDA solutions for industrial applications involving time-stamped data, what is one of the requirements for the user query language?

Q. What is a challenge when using SQL to represent validity of facts with attributes Start and End?