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Intelligent Search System for Huge Non-structured Data Storages with Domain-Based Natural Language Interface

  • Artyom Chernyshov
  • Anita Balandina
  • Anastasiya Kostkina
  • Valentin Klimov
Conference paper
Part of the Advances in Intelligent Systems and Computing book series (AISC, volume 636)

Abstract

Nowadays the number of huge companies and corporations has in their disposition various non-structured texts, documents and other data. The absence of clearly defined structure of the data makes the implementation of searching queries complicated and even impossible depending on the storage size. The other problem connected with staff, which may face the problem with misunderstanding of the special query languages, knowledge of which is necessary for the execution of searching queries. To solve these problems, we propose the semantic search system, the possibilities of which include the searching index construction, for queries execution and the semantic map, which would help to clarify the queries. In this paper we are going to describe our algorithms and the architecture of the system, and also to give a comparison to analogues.

Keywords

Semantic search Semantic map Non-structured data Natural language Domain-based natural languages 

Notes

Acknowledgements

This work was supported by Competitiveness Growth Program of the Federal Autonomous Educational Institution of Higher Professional Education National Research Nuclear University MEPhI (Moscow Engineering Physics Institute). The funding for this research was provided by the Russian Science Foundation, Grant RSF 15-11-30014.

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Copyright information

© Springer International Publishing AG 2018

Authors and Affiliations

  • Artyom Chernyshov
    • 1
  • Anita Balandina
    • 1
  • Anastasiya Kostkina
    • 1
  • Valentin Klimov
    • 1
  1. 1.National Research Nuclear University “MEPhI”MoscowRussian Federation

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