TL;DR
This paper introduces a probabilistic position bias model tailored for short-video feeds, capturing user scrolling behavior to improve exposure estimation and ranking fairness on social media platforms.
Contribution
It proposes a novel probabilistic model that accounts for user scrolling budgets, providing more accurate exposure estimates for feed recommendation systems.
Findings
Model outperforms existing position bias models in empirical tests.
Enables unbiased evaluation and learning-to-rank in social media feeds.
Provides closed-form estimates for personalized exposure probabilities.
Abstract
Modern web-based platforms show ranked lists of recommendations to users, attempting to maximise user satisfaction or business metrics. Typically, the goal of such systems boils down to maximising the exposure probability for items that are deemed "reward-maximising" according to a metric of interest. This general framing comprises streaming applications, as well as e-commerce or job recommendations, and even web search. Position bias or user models can be used to estimate exposure probabilities for each use-case, specifically tailored to how users interact with the presented rankings. A unifying factor in these diverse problem settings is that typically only one or several items will be engaged with (clicked, streamed,...) before a user leaves the ranked list. Short-video feeds on social media platforms diverge from this general framing in several ways, most notably that users do not…
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