Hesitation and Tolerance in Recommender Systems
User interactions in recommender systems are inherently complex, often involving behaviors that go beyond simple acceptance or rejection. One particularly common behavior is hesitation, where users deliberate over recommended items, signaling uncertainty. Our large-scale surveys, with 6,644 and 3,86...
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Zusammenfassung: | User interactions in recommender systems are inherently complex, often
involving behaviors that go beyond simple acceptance or rejection. One
particularly common behavior is hesitation, where users deliberate over
recommended items, signaling uncertainty. Our large-scale surveys, with 6,644
and 3,864 responses respectively, confirm that hesitation is not only
widespread but also has a profound impact on user experiences. When users spend
additional time engaging with content they are ultimately uninterested in, this
can lead to negative emotions, a phenomenon we term as tolerance. The surveys
reveal that such tolerance behaviors often arise after hesitation and can erode
trust, satisfaction, and long-term loyalty to the platform. For instance, a
click might reflect a need for more information rather than genuine interest,
and prolonged exposure to unsuitable content amplifies frustration. This
misalignment between user intent and system interpretation introduces noise
into recommendation training, resulting in suggestions that increase
uncertainty and disengagement. To address these issues, we identified signals
indicative of tolerance behavior and analyzed datasets from both e-commerce and
short-video platforms. The analysis shows a strong correlation between
increased tolerance behavior and decreased user activity. We integrated these
insights into the training process of a recommender system for a major
short-video platform. Results from four independent online A/B experiments
demonstrated significant improvements in user retention, achieved with minimal
additional computational costs. These findings underscore the importance of
recognizing hesitation as a ubiquitous user behavior and addressing tolerance
to enhance satisfaction, build trust, and sustain long-term engagement in
recommender systems. |
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DOI: | 10.48550/arxiv.2412.09950 |