Demand estimation and inventory optimization under stock-out-based substitution and censoring

    Activity: Talk/lecture or presentationPresentation

    Description

    Retail customers often have a favorite product in mind, but may switch to a substitute if their first choice is out of stock. Estimating demand from sales data then becomes difficult, as stock-outs censor demand for the primary product, and recapture demand to substitutes. We propose two methods for estimating first- choice demand and the substitution probability for Poisson demand and stochastic substitution between products: (1)Maximum likelihood estimation(MLE), (2)Bayesian updating. These two approaches assume that the exact timing of sales is known, while the latter requires only that sales are recorded at discrete checkpoints. The Bayesian updating estimation is easy to apply in practice, and exploits exact sales timings for better accuracy. We also introduce ordering policies to maximize the daily profit based on the estimated demand model.
    Period14 Jul 201816 Jul 2018
    Event titleThe Eleventh Annual International Conference of the Chinese Scholars Association for Management Science and Engineering (CSAMSE)
    Event typeConference
    LocationNingbo, ChinaShow on map
    Degree of RecognitionInternational

    Keywords

    • Newsvendor
    • demand estimation
    • substitution modeling
    • censored observations
    • Bayesian updating