A joint analysis of production and seeding strategies for new products: an agent-based simulation approach
Authored by Ashkan Negahban, Jeffrey S Smith
Date Published: 2018
DOI: 10.1007/s10479-016-2389-8
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Platforms:
Repast
Model Documentation:
UML
Other Narrative
Flow charts
Mathematical description
Model Code URLs:
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Abstract
The goal of this paper is to provide a joint analysis of marketing and
production strategies for new products to find the optimal combination
of seeding and inventory build-up policies. We propose and experiment
with an agent-based simulation model of new technology diffusion to
evaluate different seeding criteria, fraction of the market to seed, and
inventory build-up policies under various social network structures,
demand backlogging levels, and product categories. In contrast to
previous findings (that are mainly based on the assumption of unlimited
supply), we show that the seeding strategy that maximizes the adoption
rate is not necessarily optimal in the presence of supply constraints.
More importantly, we show that determining seeding and build-up policies
sequentially may lead to suboptimal decisions and that the optimal
combination of seeding and build-up policy varies for different product
categories. We study different small-world and scale-free networks and
illustrate how the distribution of long-range connections and
influential nodes affect the adoption, demand backlogging, and lost
sales dynamics as well as the overall profit. The important implications
of the findings for diffusion research as well as marketing and
operations management practice are also discussed.
Tags
Dynamics
Agent-Based Modeling and Simulation
networks
Adoption
Innovation Diffusion
Model
seeding
Sales
Demand
Policies
Myopic and build-up policies
Social
network
Supply constraints