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Main Authors: Wan, Yibing, Guan, Zhengxiong, Zhang, Chaoli, Li, Xiaoyang, Xu, Lai, Jia, Beibei, Zheng, Zhenzhe, Wu, Fan
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2511.17639
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author Wan, Yibing
Guan, Zhengxiong
Zhang, Chaoli
Li, Xiaoyang
Xu, Lai
Jia, Beibei
Zheng, Zhenzhe
Wu, Fan
author_facet Wan, Yibing
Guan, Zhengxiong
Zhang, Chaoli
Li, Xiaoyang
Xu, Lai
Jia, Beibei
Zheng, Zhenzhe
Wu, Fan
contents In the user growth scenario, Internet companies invest heavily in paid acquisition channels to acquire new users. But sustainable growth depends on acquired users' generating lifetime value (LTV) exceeding customer acquisition cost (CAC). In order to maximize LTV/CAC ratio, it is crucial to predict channel-level LTV in an early stage for further optimization of budget allocation. The LTV forecasting problem is significantly different from traditional time series forecasting problems, and there are three main challenges. Firstly, it is an unaligned multi-time series forecasting problem that each channel has a number of LTV series of different activation dates. Secondly, to predict in the early stage, it faces the imbalanced short-input long-output (SILO) challenge. Moreover, compared with the commonly used time series datasets, the real LTV series are volatile and non-stationary, with more frequent fluctuations and higher variance. In this work, we propose a novel framework called Trapezoidal Temporal Fusion (TTF) to address the above challenges. We introduce a trapezoidal multi-time series module to deal with data unalignment and SILO challenges, and output accurate predictions with a multi-tower structure called MT-FusionNet. The framework has been deployed to the online system for Douyin. Compared to the previously deployed online model, MAPEp decreased by 4.3%, and MAPEa decreased by 3.2%, where MAPEp denotes the point-wise MAPE of the LTV curve and MAPEa denotes the MAPE of the aggregated LTV.
format Preprint
id arxiv_https___arxiv_org_abs_2511_17639
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle TTF: A Trapezoidal Temporal Fusion Framework for LTV Forecasting in Douyin
Wan, Yibing
Guan, Zhengxiong
Zhang, Chaoli
Li, Xiaoyang
Xu, Lai
Jia, Beibei
Zheng, Zhenzhe
Wu, Fan
Machine Learning
In the user growth scenario, Internet companies invest heavily in paid acquisition channels to acquire new users. But sustainable growth depends on acquired users' generating lifetime value (LTV) exceeding customer acquisition cost (CAC). In order to maximize LTV/CAC ratio, it is crucial to predict channel-level LTV in an early stage for further optimization of budget allocation. The LTV forecasting problem is significantly different from traditional time series forecasting problems, and there are three main challenges. Firstly, it is an unaligned multi-time series forecasting problem that each channel has a number of LTV series of different activation dates. Secondly, to predict in the early stage, it faces the imbalanced short-input long-output (SILO) challenge. Moreover, compared with the commonly used time series datasets, the real LTV series are volatile and non-stationary, with more frequent fluctuations and higher variance. In this work, we propose a novel framework called Trapezoidal Temporal Fusion (TTF) to address the above challenges. We introduce a trapezoidal multi-time series module to deal with data unalignment and SILO challenges, and output accurate predictions with a multi-tower structure called MT-FusionNet. The framework has been deployed to the online system for Douyin. Compared to the previously deployed online model, MAPEp decreased by 4.3%, and MAPEa decreased by 3.2%, where MAPEp denotes the point-wise MAPE of the LTV curve and MAPEa denotes the MAPE of the aggregated LTV.
title TTF: A Trapezoidal Temporal Fusion Framework for LTV Forecasting in Douyin
topic Machine Learning
url https://arxiv.org/abs/2511.17639