Forecasting new product diffusion with agent-based models
Authored by Yu Xiao, Jingti Han
Date Published: 2016
DOI: 10.1016/j.techfore.2016.01.019
Sponsors:
Chinese National Natural Science Foundation
Specialized Research Fund for the Doctoral Program of Higher Education of China
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Abstract
Agent-based model (ABM) has been widely used to explore the influence of
complex interactions and individual heterogeneity on the diffusion of
innovation, while it is seldom used as a forecasting tool in the
innovation diffusion literature. This paper introduces a novel approach
of forecasting new product diffusion with ABMs. The ABM is built on the
hidden influence network (HIN) over which the innovation diffuses. An
efficient method is presented to estimate non-structural parameters
(i.e., p, q and m) and a multinomial logistic model is formulated to
identify the type of the HIN for diffusion data. The simulation study
shows that the trained logistic model performs well in inferring the
HINs for most simulated diffusion data sets but poorly for those
generated by ABMs with similar HINs. Therefore, to reduce the possible
prediction loss arising from the misspecification of the HIN, three
methods, namely, the predicted HIN, the weighted averaging and simple
averaging, are developed to forecast new products diffusion. Their
performances are evaluated by using a data set composed of 317 time
series on consumer durables penetration. The results show that most
identified HINs have moderate topology, and that our methods outperform
four classical differential equation based diffusion models in both
short-term and long-term prediction. (C) 2016 Elsevier Inc. All rights
reserved.
Tags
Social networks
Dynamics
Market
Innovation Diffusion
influentials