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Early Findings from a Large-Scale User Study of CHESTNUT: Validations and Implications

机译:CHESTNUT大规模用户研究的早期发现:验证和启示

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Towards a serendipitous recommender system with user-centred understanding, we have built CHESTNUT, an Information Theory-based Movie Recommender System, which introduced a more comprehensive understanding of the concept. Although off-line evaluations have already demonstrated that CHESTNUT has greatly improved serendipity performance, feedback on CHESTNUT from real-world users through online services are still unclear now. In order to evaluate how serendipitous results could be delivered by CHESTNUT, we consequently designed, organized and conducted large-scale user study, which involved 104 participants from 10 campuses in 3 countries. Our preliminary feedback has shown that, compared with mainstream collaborative filtering techniques, though CHESTNUT limited users' feelings of unexpectedness to some extent, it showed significant improvement in their feelings about certain metrics being both beneficial and interesting, which substantially increased users' experience of serendipity. Based on them, we have summarized three key takeaways, which would be beneficial for further designs and engineering of serendipitous recommender systems, from our perspective.
机译:为了建立一个以用户为中心的偶然推荐系统,我们构建了CHESTNUT,这是一个基于信息论的电影推荐系统,它引入了对该概念的更全面的理解。尽管脱机评估已经显示出CHESTNUT大大提高了偶然性性能,但是目前尚不清楚真实用户通过在线服务对CHESTNUT的反馈。为了评估CHESTNUT如何产生意外结果,我们设计,组织并进行了大规模的用户研究,来自3个国家10个校区的104名参与者参加了此次研究。我们的初步反馈表明,与主流协作过滤技术相比,尽管CHESTNUT在一定程度上限制了用户的意外感,但它对某些指标既有益又有趣的感觉显着改善,这大大增加了用户的意外体验。在此基础上,我们总结了三个关键点,从我们的角度来看,这将有益于偶然推荐系统的进一步设计和工程设计。

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