The need for cross-Analyzing JSON objects representing heterogeneous geo-referenced information coming from multiple sources, such as open data published on the Web by public administrations and crowd-sourced posts and images from social networks, is becoming common for studying, predicting and planning social dynamics. Nevertheless, although NoSQL databases have emerged as a de facto standard means to store JSON objects, a query language that can be easily used by not-programmers to manipulate and correlate such data is still missing. Furthermore, when the information is geo-referenced, we also need both spatial analysis and mapping facilities. In the paper, we motivate the need for a novel flexible framework, named J-CO, that provides a query language, named JCO- QL, enabling novel declarative (spatial) queries for JSON objects. We will illustrate the basic concepts of the proposal and the possible use of its spatial and non-spatial operators for cross-Analyzing open data and crowd-sourced information. This framework is powered by a plug-in for QGIS that can be used to write and execute queries on MongoDB databases.
A flexible framework to cross-Analyze heterogeneous multi-source geo-referenced information: The J-CO-QL proposal and its implementation
Bordogna Gloria;
2017
Abstract
The need for cross-Analyzing JSON objects representing heterogeneous geo-referenced information coming from multiple sources, such as open data published on the Web by public administrations and crowd-sourced posts and images from social networks, is becoming common for studying, predicting and planning social dynamics. Nevertheless, although NoSQL databases have emerged as a de facto standard means to store JSON objects, a query language that can be easily used by not-programmers to manipulate and correlate such data is still missing. Furthermore, when the information is geo-referenced, we also need both spatial analysis and mapping facilities. In the paper, we motivate the need for a novel flexible framework, named J-CO, that provides a query language, named JCO- QL, enabling novel declarative (spatial) queries for JSON objects. We will illustrate the basic concepts of the proposal and the possible use of its spatial and non-spatial operators for cross-Analyzing open data and crowd-sourced information. This framework is powered by a plug-in for QGIS that can be used to write and execute queries on MongoDB databases.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


