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Research Article

Market segmentation using predictive technology and shared-service contracts

Received 12 Jul 2023, Accepted 12 May 2024, Published online: 06 Jun 2024
 

Abstract

‘Shared-service contracts’ provided by Original Equipment Manufacturers (OEMs) are a standard feature of capital-intensive, long-life products. In such contracts, OEMs assume a predetermined portion of the products’ long-term failure opportunity costs by conducting routine and breakdown maintenance tasks for their customers. Recently, OEMs have been utilizing predictive technology to improve service productivity. It enables OEMs to reduce failure opportunity costs mentioned while using the data generated to develop products at lower costs. We extend the adverse selection framework to model the market segmentation of products offered with shared-service contracts and predictive technology. Our model includes: (i) the cost of product development and operation, (ii) the failure opportunity cost driven by long-term product failures, (iii) the cost of designing product reliability, and (iv) the cost of incorporating predictive technology, which reduces the first two cost components. Here, the OEM targets a basic and a premium offering at their respective customer types. We find that using predictive technology improves the quality and price of OEM products, thereby increasing their profitability. However, predictive technology enables the OEM to design a product line with lower reliability. In addition, the OEM is more likely to choose a ‘premium-only’ strategy when predictive technology is present.

Acknowledgements

The author thanks Prof. Omkar D. Palsule-Desai, IIM Indore, for his timely guidance and sharp insights while writing this paper. The author also acknowledges healthy discussions with domain experts in the Power Plant Industry, without which this paper would not be possible. Finally, the author appreciates the constructive feedback and suggestions from the anonymous referees, which enriched this paper.

Disclosure statement

The author declares no potential conflict of interests.

Data availability statement

There was no data set used for the current paper.

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