2 research outputs found

    BINLI: An Ontology-Based Natural Language Interface for Multidimensional Data Analysis

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    Current technology facilitates access to the vast amount of information that is produced every day. Both individuals and companies are active consumers of data from the Web and other sources, and these data guide decision making. Due to the huge volume of data to be processed in a business context, managers rely on decision support systems to facilitate data analysis. OLAP tools are Business Intelligence solutions for multidimensional analysis of data, allowing the user to control the perspective and the degree of detail in each dimension of the analysis. A conventional OLAP system is configured to a set of analysis scenarios associated with multidimensional data cubes in the repository. To handle a more spontaneous query, not supported in these provided scenarios, one must have specialized technical skills in data analytics. This makes it very difficult for average users to be autonomous in analyzing their data, as they will always need the assistance of specialists. This article describes an ontology-based natural language interface whose goal is to simplify and make more flexible and intuitive the interaction between users and OLAP solutions. Instead of programming an MDX query, the user can freely write a question in his own human language. The system interprets this question by combining the requested information elements, and generates an answer from the OLAP repository

    Accommodating Complex Chained Prepositional Phrases in Natural Language Query Interface to an Event-Based Triplestore

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    Building Natural language query interfaces (NLI) to databases is one the most interesting and challenging fields of study for computer scientists and researchers. There have been many advancements and achievements in this area that enables NLIs to operate more efficiently and have wide NL coverage. However, there exists some shortcomings in query interface to semantic web triplestores. Some researchers have attempted to extend the range of queries that can be answered. However, only a few techniques can handle queries containing complex chained prepositional phrases. This thesis involves extending an existing method that can accommodate prepositional phrases to also be able to handle when..., where..., and with what... type queries. The approach developed is implemented in the Miranda programing environment
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