OptDist: Learning Optimal Distribution for Customer Lifetime Value Prediction
Yunpeng Weng, Xing Tang, Zhenhao Xu, Fuyuan Lyu, Dugang Liu, Zexu Sun,, Xiuqiang He

TL;DR
OptDist introduces an adaptive model that learns and selects optimal sub-distributions for accurate Customer Lifetime Value prediction, effectively handling complex, mutable distributions in real-world scenarios.
Contribution
The paper proposes a novel adaptive distribution selection framework, OptDist, for CLTV prediction, outperforming existing methods by modeling complex, mutable distributions more accurately.
Findings
OptDist outperforms state-of-the-art baselines on multiple datasets.
OptDist improves CLTV prediction accuracy in real-world applications.
Deployment on a large-scale platform confirms practical effectiveness.
Abstract
Customer Lifetime Value (CLTV) prediction is a critical task in business applications. Accurately predicting CLTV is challenging in real-world business scenarios, as the distribution of CLTV is complex and mutable. Firstly, there is a large number of users without any consumption consisting of a long-tailed part that is too complex to fit. Secondly, the small set of high-value users spent orders of magnitude more than a typical user leading to a wide range of the CLTV distribution which is hard to capture in a single distribution. Existing approaches for CLTV estimation either assume a prior probability distribution and fit a single group of distribution-related parameters for all samples, or directly learn from the posterior distribution with manually predefined buckets in a heuristic manner. However, all these methods fail to handle complex and mutable distributions. In this paper, we…
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Taxonomy
TopicsCustomer churn and segmentation · Consumer Market Behavior and Pricing · Stock Market Forecasting Methods
MethodsSparse Evolutionary Training
