Information Updates and Transparency in Newsvendor-Supply-Chains: Values of Big Data and Block chain Technologies

Posted: 6 May 2020

See all articles by Ya-Jun Cai

Ya-Jun Cai

The Hong Kong Polytechnic University

Tsan-Ming Choi

The Hong Kong Polytechnic University - Institute of Textiles and Clothing

Suresh Sethi

University of Texas at Dallas - Naveen Jindal School of Management

Xiutian Shi

Independent

Date Written: March 2020

Abstract

In the Industry 4.0 era, emerging technologies such as big data analytics and blockchain can improve supply chain operations by updating information to reduce demand uncertainty and improving data quality. We conduct a theoretical exploration of the values provided by such technologies in the context of a newsvendor supply chain facing a normally distributed demand with an unknown mean. We use Bayesian learning to reduce demand uncertainty based on the observation data, and obtain the expected value of big data (EVBD) as the number of data becomes large. Further, we obtain the expected value [resp. profit] of perfect information (EVPI [resp. EPPI]), and establish a relationship between EVBD and EVPI. We then define a concept of “asymptotically perfect coordination”, and propose how a blockchain technology information sharing (BTIS) scheme can help achieve this by dampening knowledge uncertainty. We further extend the analysis to examine when blockchain technology incurs an operations cost and discuss the respective implications when blockchain is used for knowledge uncertainty reduction, as well as product information disclosures.

Keywords: Newsvendor, value of perfect information, big data, blockchain, supply chain coordination, product information disclosure

JEL Classification: C61, M11, M20

Suggested Citation

Cai, Ya-Jun and Choi, Tsan-Ming and Sethi, Suresh and Shi, Xiutian, Information Updates and Transparency in Newsvendor-Supply-Chains: Values of Big Data and Block chain Technologies (March 2020). Available at SSRN: https://ssrn.com/abstract=3575100

Ya-Jun Cai

The Hong Kong Polytechnic University ( email )

Hung Hom
Kowloon
Hong Kong, Hong Kong 999077
China
999077 (Fax)

Tsan-Ming Choi

The Hong Kong Polytechnic University - Institute of Textiles and Clothing ( email )

Hong Kong
852-27666450 (Phone)

Suresh Sethi (Contact Author)

University of Texas at Dallas - Naveen Jindal School of Management ( email )

800 W. Campbell Road, SM30
Richardson, TX 75080-3021
United States

Xiutian Shi

Independent ( email )

United States

Do you have a job opening that you would like to promote on SSRN?

Paper statistics

Abstract Views
1,034
PlumX Metrics