Using a Model-driven Approach in Building a Provenance Framework for Tracking Policy-making Processes in Smart Cities
March 19, 2018 Β· Declared Dead Β· π International Database Engineering and Applications Symposium
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Authors
Barkha Javed, Zaheer Khan, Richard McClatchey
arXiv ID
1803.06839
Category
cs.SE: Software Engineering
Citations
3
Venue
International Database Engineering and Applications Symposium
Last Checked
4 months ago
Abstract
The significance of provenance in various settings has emphasised its potential in the policy-making process for analytics in Smart Cities. At present, there exists no framework that can capture the provenance in a policy-making setting. This research therefore aims at defining a novel framework, namely, the Policy Cycle Provenance (PCP) Framework, to capture the provenance of the policy-making process. However, it is not straightforward to design the provenance framework due to a number of associated policy design challenges. The design challenges revealed the need for an adaptive system for tracking policies therefore a model-driven approach has been considered in designing the PCP framework. Also, suitability of a networking approach is proposed for designing workflows for tracking the policy-making process.
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