Bayesian Hierarchical Bernoulli-Weibull Mixture Model for Extremely Rare Events
Yuki Ohnishi, Shinsuke Sugaya

TL;DR
This paper introduces a Bayesian hierarchical Bernoulli-Weibull mixture model tailored for analyzing extremely rare events and inactive users in survival analysis, addressing limitations of traditional methods in such contexts.
Contribution
It proposes a novel mixture model that distinguishes active and inactive users, extending it to a Bayesian hierarchical framework for improved inference and uncertainty quantification.
Findings
The model effectively captures activation and conversion rates.
It outperforms traditional survival analysis in high-inactivity scenarios.
Provides credible intervals for parameter estimates.
Abstract
Estimating the duration of user behavior is a central concern for most internet companies. Survival analysis is a promising method for analyzing the expected duration of events and usually assumes the same survival function for all subjects and the event will occur in the long run. However, such assumptions are inappropriate when the users behave differently or some events never occur for some users, i.e., the conversion period on web services of the light users with no intention of behaving actively on the service. Especially, if the proportion of inactive users is high, this assumption can lead to undesirable results. To address these challenges, this paper proposes a mixture model that separately addresses active and inactive individuals with a latent variable. First, we define this specific problem setting and show the limitations of conventional survival analysis in addressing this…
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Taxonomy
TopicsRecommender Systems and Techniques · Complex Network Analysis Techniques · Advanced Clustering Algorithms Research
