Abstract

Existing research recognizes the critical role of quality data in the current big-data and Internet of Things (IoT) era. Quality data has a direct impact on model results and hence business decisions. The growth in the number of IoT-connected devices makes it hard to access data quality using traditional assessments methods. This is exacerbated by the need to share data across different IoT domains as it increases the heterogeneity of the data. Data-shared IoT defines a new perspective of IoT applications which benefit from sharing data among different domains of IoT to create new use-case applications. For example, sharing data between smart transport and smart industry can lead to other use-case applications such as intelligent logistics management and warehouse management. The benefits of such applications, however, can only be achieved if the shared data is of acceptable quality. There are three main practices in data quality (DQ) determination approaches that are restricting their effective use in data-shared platforms: (1) most DQ techniques validate test data against a known quantity considered to be a reference; a gold reference. (2) narrow sets of static metrics are used to describe the quality. Each consumer uses these metrics in similar ways. (3) data quality is evaluated in isolated stages throughout the processing pipeline. Data-shared IoT presents unique challenges; (1) each application and use-case in shared IoT has a unique description of data quality and requires a different set of metrics. This leads to an extensive list of DQ dimensions which are difficult to implement in real-world applications. (2) most data in IoT scenarios does not have a gold reference. (3) factors endangering DQ in shared IoT exist throughout the entire big-data model from data collection to data visualization, and data use. This paper aims to describe data-shared IoT and shared data pools while highlighting the importance of sharing quality data across various domains. The article examines how we can use trust as a measure of quality in data-shared IoT. We conclude that researchers can combine such trust-based techniques with blockchain for secure end-to-end data quality assessment.

Highlights

  • The Internet of Things (IoT) is a paradigm shift to computing which has accelerated over the past decade

  • This leads to an extensive list of data quality (DQ) dimensions which are difficult to implement in real-world applications. (2) most data in IoT scenarios does not have a gold reference. (3) factors endangering DQ in shared IoT exist throughout the entire big-data model from data collection to data visualization, and data use

  • Unlike previous studies that only focus on a single area, our study provides a detailed account of data quality in IoT, and trust in computing

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Summary

Introduction

The Internet of Things (IoT) is a paradigm shift to computing which has accelerated over the past decade. We catalogue data quality metrics and techniques used for describing data quality Both data quality and trust are highly researched areas, this article is the first to give such a detailed review of the intersections of both in data-shared IoT. The article shows how trust techniques can benefit from existing technologies such as blockchain for secure end-to-end data quality assessment. We later show how trust-based techniques can be combined with existing technologies such as blockchain for a secure data quality assessment.

Data-Shared IoT
Data Quality
The Challenges of Data Quality in Shared IoT
Trust and Data Quality
Trust Definition
Propagative
Dynamic
Subjective
Context-Dependent
Components of Trust Model
Metric
Source
Algorithm
Architecture
Propagation
Trust as a Measure of Data Quality in Various Computing Domains
Multi-Agent Systems
Web Services
Social Networks
P2P Networks
Secure Data Sharing with Trust
Secure Data Sharing in IoT
Opportunities Trust Brings to Data-Shared IoT
Open Challenges and Future Directions
Conclusions

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