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Introduction It is a well-accepted fact that drugs may still have serious side effects Nebeker et al. Materials and Methods An overview of the proposed semantic transformation methodology is presented in Figure 1. Table 1. Figure 2. Visualization of OMOP ontology constructs. Figure 5. Specifying eligibility criteria in TAS. Figure 7. Implementation of the proposed framework in real-world settings.
Email Address. Sign In. Access provided by: anon Sign Out. A novel semantic knowledge engine using automated knowledge extraction from World Wide Web Abstract: It is extremely difficult for the existing search engines such as Google and Bing to crawl, index, rank, and manage huge amount of data and locate information. Semantic web technology such as Google Knowledge Graph and Wolfram Alpha is emerging into the answer engine market in order to transform the unstructured data into more structured useful information. Dataspaces Hyperdata Linked data Rule-based systems. Semantic analytics Semantic broker Semantic computing Semantic mapper Semantic matching Semantic publishing Semantic reasoner Semantic search Semantic service-oriented architecture Semantic wiki.
Collective intelligence Description logic Folksonomy Geotagging Information architecture Knowledge extraction Knowledge management Knowledge representation and reasoning Library 2. Categories : Semantic Web Data mapping. Namespaces Article Talk. Views Read Edit View history. Languages Add links.
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