Abstract

Today, almost all active organizations manage a large amount of data from their business operations with partners, customers, and even competitors. They rely on Data Value Chain (DVC) models to handle data processes and extract hidden values to obtain reliable insights. With the advent of Big Data, operations have become increasingly more data-driven, facing new challenges related to volume, variety, and velocity, and giving birth to another type of value chain called Big Data Value Chain (BDVC). Organizations have become increasingly interested in this kind of value chain to extract confined knowledge and monetize their data assets efficiently. However, few contributions to this field have addressed the BDVC in a synoptic way by considering Big Data monetization. This paper aims to provide an exhaustive and expanded BDVC framework. This end-to-end framework allows us to handle Big Data monetization to make organizations’ processes entirely data-driven, support decision-making, and facilitate value co-creation. For this, we present a comprehensive review of existing BDVC models relying on some definitions and theoretical foundations of data monetization. Next, we expose research carried out on data monetization strategies and business models. Then, we offer a global and generic BDVC framework that supports most of the required phases to achieve data valorization. Furthermore, we present both a reduced and full monetization model to support many co-creation contexts along the BDVC.

Highlights

  • A wide variety of data sources such as social media, mobile devices, and the Internet of Things (IoT) generate a considerable amount of data evolving rapidly in a highly connected society

  • We propose two big data monetization models integrated into the proposed Big Data Value Chain (BDVC)

  • With data becoming more valuable than ever, organizations have to adapt all processes dealing with big data specificities to make them more profitable

Read more

Summary

Introduction

A wide variety of data sources such as social media, mobile devices, and the Internet of Things (IoT) generate a considerable amount of data evolving rapidly in a highly connected society. By 2020, the International Data Corporation estimates that accumulated data should increase to 44 zeta-octets [1], and ABI Research predicts that 30 billion devices will be connected [2] These data are expected to grow more, marking a new step in the era of Big Data. Big Data was initially defined as large volume, high velocity, and data asset diversity, which require new processing capabilities to find hidden knowledge and improve decision-making [3]. These three essential characteristics (volume, velocity, and variety) have been extended to become more refined. These 10Vs are: Volume: Refers to a large amount of generated data that is no more possible to master using traditional processing and storage systems

Objectives
Methods
Results
Conclusion
Full Text
Published version (Free)

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