Abstract

Building trustworthy knowledge graphs for cyber–physical social systems (CPSS) is a challenge. In particular, current approaches relying on human experts have limited scalability, while automated approaches are often not validated by users resulting in knowledge graphs of questionable quality. This paper introduces a novel pervasive knowledge graph builder for mobile devices that brings together automation, experts’ and crowdsourced citizens’ knowledge. The knowledge graph grows via automated link predictions using genetic programming that are validated by humans for improving transparency and calibrating accuracy. The knowledge graph builder is designed for pervasive devices such as smartphones and preserves privacy by localizing all computations. The accuracy, practicality, and usability of the knowledge graph builder is evaluated in a real-world social experiment that involves a smartphone implementation and a Smart City application scenario. The proposed methodology of knowledge graph building outperforms a baseline method in terms of accuracy while demonstrating its efficient calculations on smartphones and the feasibility of the pervasive human supervision process in terms of high interactions throughput. These findings promise new opportunities to crowdsource and operate pervasive reasoning systems for cyber–physical social systems in Smart Cities.

Highlights

  • Mobile cyber-physical systems involve humans utilizing mobile services in their social contexts

  • 1) Knowledge graph builder: The usability of the knowledge graph builder and its accuracy in predicting unobserved links in a knowledge graph is investigated by the following hypotheses: a) The knowledge graph builder improves the accuracy of link prediction compared to the baseline heuristic: The knowledge graph builder utilizes a genetic programming approach to estimate the weights of various similarity measures (Table II)

  • An ensemble of semantic and temporal metrics are identified that dominate link prediction in a smart city application domain

Read more

Summary

INTRODUCTION

Mobile cyber-physical systems involve humans utilizing mobile services in their social contexts. Systems utilizing link prediction methods are proposed to automate the building of knowledge graphs [11] These CPSSs are designed either explicitly or implicitly for values such as usability [12], autonomy [13], or privacy [14]. The automated knowledge graph building remains accountableby-design to humans by letting users supervise the accuracy of recommendations via accepting or rejecting recommended links As this feedback is in turn utilized to train the link prediction method, users can control the calibration of their machine intelligence. This value-sensitive design approach builds a trustworthy domain-specific knowledge graph about users’ reality that can improve services provided by CPSS such as privacy-preserving recommenders.

BACKGROUND
AUTOMATED KNOWLEDGE GRAPH BUILDING VIA LINK
Ontology
Directed graphs as a data model for knowledge representations
Automated knowledge graph building via link prediction
A HUMAN-SUPERVISED AND PRIVACY-PRESERVING
Background: genetic programming
Link prediction method
EXPERIMENT METHODOLOGY
Hypotheses and Operationalisation
Knowledge graph instantiation
Knowledge graph builder
Metric weights
SUMMARY OF FINDINGS
VIII. CONCLUSION AND FUTURE WORK
Modified Metrics
Novel Metrics
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call