Leveraging Watch-time Feedback for Short-Video Recommendations: A Causal Labeling Framework ...

With the proliferation of short video applications, the significance of short video recommendations has vastly increased. Unlike other recommendation scenarios, short video recommendation systems heavily rely on feedback from watch time. Existing approaches simply treat watch time as a direct label,...

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Bibliographic Details
Main Authors: Zhang, Yang, Bai, Yimeng, Chang, Jianxin, Zang, Xiaoxue, Lu, Song, Lu, Jing, Feng, Fuli, Niu, Yanan, Song, Yang
Format: Text
Language:unknown
Published: arXiv 2023
Subjects:
DML
Online Access:https://dx.doi.org/10.48550/arxiv.2306.17426
https://arxiv.org/abs/2306.17426
Description
Summary:With the proliferation of short video applications, the significance of short video recommendations has vastly increased. Unlike other recommendation scenarios, short video recommendation systems heavily rely on feedback from watch time. Existing approaches simply treat watch time as a direct label, failing to effectively harness its extensive semantics and introduce bias, thereby limiting the potential for modeling user interests based on watch time. To overcome this challenge, we propose a framework named Debiased Multiple-semantics-extracting Labeling(DML). DML constructs labels that encompass various semantics by utilizing quantiles derived from the distribution of watch time, prioritizing relative order rather than absolute label values. This approach facilitates easier model learning while aligning with the ranking objective of recommendations. Furthermore, we introduce a method inspired by causal adjustment to refine label definitions, thereby directly mitigating bias at the label level. We ... : 8 pages, 4 figures ...