A Domain Specific Entity Linking Approach Consuming Multistore Environment

Author:

Inan Emrah1,Yonyul Burak1,Tekbacak Fatih2

Affiliation:

1. Ege University

2. Aydin Adnan Menderes University

Abstract

Most of the data on the web is non-structural, and it is required that the data should be transformed into a machine operable structure. Therefore, it is appropriate to convert the unstructured data into a structured form according to the requirements and to store those data in different data models by considering use cases. As requirements and their types increase, it fails using one approach to perform on all. Thus, it is not suitable to use a single storage technology to carry out all storage requirements. Managing stores with various type of schemas in a joint and an integrated manner is named as 'multistore' and 'polystore' in the database literature. In this paper, Entity Linking task is leveraged to transform texts into wellformed data and this data is managed by an integrated environment of different data models. Finally, this integrated big data environment will be queried and be examined by presenting the method.

Publisher

Islerya Medikal ve Bilisim Teknolojileri

Reference31 articles.

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