Generative Discrete Event Process Simulation for Hidden Markov Models to Predict Competitor Time-to-Market
Nandakishore Santhi, Stephan Eidenbenz, Brian Key, George Tompkins

TL;DR
This paper presents a method for predicting a competitor's product launch time using a generative discrete event simulation combined with Hidden Markov Models, leveraging resource observations to improve accuracy.
Contribution
It introduces a novel approach combining PDES-based process modeling with HMMs to estimate competitor time-to-market from limited resource observations.
Findings
HMM achieves 70-80% prediction accuracy after 20 observations
Prediction accuracy depends on process graph density and resource-activity map density
Scaling properties show robustness of the approach with increasing resource counts
Abstract
We study the challenge of predicting the time at which a competitor product, such as a novel high-capacity EV battery or a new car model, will be available to customers; as new information is obtained, this time-to-market estimate is revised. Our scenario is as follows: We assume that the product is under development at a Firm B, which is a competitor to Firm A; as they are in the same industry, Firm A has a relatively good understanding of the processes and steps required to produce the product. While Firm B tries to keep its activities hidden (think of stealth-mode for start-ups), Firm A is nevertheless able to gain periodic insights by observing what type of resources Firm B is using. We show how Firm A can build a model that predicts when Firm B will be ready to sell its product; the model leverages knowledge of the underlying processes and required resources to build a Parallel…
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Taxonomy
TopicsBusiness Process Modeling and Analysis · Simulation Techniques and Applications
