Designing Recommendation Exposure and Favorite Lists: A Field Experiment in a Spot-Work Platform
Kazuki Sekiya,
Suguru Otani,
Yuki Komatsu,
Shunsuke Ozeki and
Shunya Noda
Papers from arXiv.org
Abstract:
How should recommender systems be designed when recommendations shape access to scarce, short-lived opportunities? We study this question in a production setting: Timee, Japan's largest platform for spot work, where workers favorite job templates and receive notifications when firms post shifts from those templates. Maximizing predicted favoriting can generate misdirected concentration: recommendations accumulate on popular templates that create few viable job openings, while templates with unmet labor demand receive too little exposure. We design exposure-control mechanisms for favorite-list management, reallocating template exposure based on posting activity and unfilled capacity. The proposed recommender, thresholded eligibility control (TEC), is fully parallelizable and suitable for large-scale digital platforms. In simulations calibrated to Timee data, TEC raises the per-round job-finding rate from 57.6% to 70.0%. A prefecture-level randomized field experiment increases realized matches and exposure per active template, reduces the share of low-exposure templates, and improves impression-level favoriting and downstream matching.
Date: 2026-06, Revised 2026-06
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Persistent link: https://EconPapers.repec.org/RePEc:arx:papers:2606.17397
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