Saved in:
Bibliographic Details
Main Authors: Wei, Yuxiang, Qiu, Zhaoxin, Li, Yingjie, Sun, Yuke, Li, Xiaoling
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2408.12803
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866910574757019648
author Wei, Yuxiang
Qiu, Zhaoxin
Li, Yingjie
Sun, Yuke
Li, Xiaoling
author_facet Wei, Yuxiang
Qiu, Zhaoxin
Li, Yingjie
Sun, Yuke
Li, Xiaoling
contents As a key component in boosting online user growth, uplift modeling aims to measure individual user responses (e.g., whether to play the game) to various treatments, such as gaming bonuses, thereby enhancing business outcomes. However, previous research typically considers a single-task, single-treatment setting, where only one treatment exists and the overall treatment effect is measured by a single type of user response. In this paper, we propose a Multi-Treatment Multi-Task (MTMT) uplift network to estimate treatment effects in a multi-task scenario. We identify the multi-treatment problem as a causal inference problem with a tiered response, comprising a base effect (from offering a treatment) and an incremental effect (from offering a specific type of treatment), where the base effect can be numerically much larger than the incremental effect. Specifically, MTMT separately encodes user features and treatments. The user feature encoder uses a multi-gate mixture of experts (MMOE) network to encode relevant user features, explicitly learning inter-task relations. The resultant embeddings are used to measure natural responses per task. Furthermore, we introduce a treatment-user feature interaction module to model correlations between each treatment and user feature. Consequently, we separately measure the base and incremental treatment effect for each task based on the produced treatment-aware representations. Experimental results based on an offline public dataset and an online proprietary dataset demonstrate the effectiveness of MTMT in single/multi-treatment and single/multi-task settings. Additionally, MTMT has been deployed in our gaming platform to improve user experience.
format Preprint
id arxiv_https___arxiv_org_abs_2408_12803
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Multi-Treatment Multi-Task Uplift Modeling for Enhancing User Growth
Wei, Yuxiang
Qiu, Zhaoxin
Li, Yingjie
Sun, Yuke
Li, Xiaoling
Machine Learning
Artificial Intelligence
Information Retrieval
As a key component in boosting online user growth, uplift modeling aims to measure individual user responses (e.g., whether to play the game) to various treatments, such as gaming bonuses, thereby enhancing business outcomes. However, previous research typically considers a single-task, single-treatment setting, where only one treatment exists and the overall treatment effect is measured by a single type of user response. In this paper, we propose a Multi-Treatment Multi-Task (MTMT) uplift network to estimate treatment effects in a multi-task scenario. We identify the multi-treatment problem as a causal inference problem with a tiered response, comprising a base effect (from offering a treatment) and an incremental effect (from offering a specific type of treatment), where the base effect can be numerically much larger than the incremental effect. Specifically, MTMT separately encodes user features and treatments. The user feature encoder uses a multi-gate mixture of experts (MMOE) network to encode relevant user features, explicitly learning inter-task relations. The resultant embeddings are used to measure natural responses per task. Furthermore, we introduce a treatment-user feature interaction module to model correlations between each treatment and user feature. Consequently, we separately measure the base and incremental treatment effect for each task based on the produced treatment-aware representations. Experimental results based on an offline public dataset and an online proprietary dataset demonstrate the effectiveness of MTMT in single/multi-treatment and single/multi-task settings. Additionally, MTMT has been deployed in our gaming platform to improve user experience.
title Multi-Treatment Multi-Task Uplift Modeling for Enhancing User Growth
topic Machine Learning
Artificial Intelligence
Information Retrieval
url https://arxiv.org/abs/2408.12803