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<a target="_blank" rel="noopener" href="https://fatcat.wiki/container/b637noqf3vhmhjevdfk3h5pdsu" style="color: black;">International Journal of Computer Applications</a>
The development of ontologies involves continuous but relatively small modifications. Even after a number of changes, ontology and its previous versions usually share most of their axioms. For large and complex ontologies this may require a few minutes, or even a few hours. Cognitive on a Web scale becomes increasingly stimulating because of the large volume of data involved and the complexity of the task. Full rereasoning over the entire dataset at every update is too timeconsuming to be<span class="external-identifiers"> <a target="_blank" rel="external noopener noreferrer" href="https://doi.org/10.5120/ijca2016912339">doi:10.5120/ijca2016912339</a> <a target="_blank" rel="external noopener" href="https://fatcat.wiki/release/byhvtlhnnzejfnh32z3b5zqarm">fatcat:byhvtlhnnzejfnh32z3b5zqarm</a> </span>
more »... cal. Semantic information has been reduced by using Hadoop framework with simple machine learning algorithm. Each level of mapping and reducing is based on k-means clustering technique. Large set of information can be constructing or modified with the help of simple pattern based grouping. Dynamically grouping dependencies can be made based on attributes. Clustered values have got modifications like addition. At the end user query has been retrieved with the help of grouped items. The system has been assessed on the BTC benchmark and the results show that this method outperforms related ones in nearly all aspects. General Terms RDF (Resource Description Framework), RDFS (RDF schema), OWL (Web Ontology Language), SD (Structured Design), IDI (Incremental and Distributed Inference) Keywords Ontology, Hadoop, Semantic, Cognitive, Pattern, machine learning. Disadvantages • DR-DEVICE uses the logic meta-program as a guiding principle, but there is no formal proof of the correctness of the implementation. • To provide information on web process, assumed players will not be able to interfere due to communication problems and privacy or security concerns. • A skeptical approach is sensible because it does not allow for contradictory conclusions to be drawn. • It did not implement load/upload functionality in conjunction with an RDF repository.
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