从众的同时保留个性:了解用户品味和群众智慧在在线产品评分预测中的作用

Liang Wang, Shubham Jain, Yingtong Dou, Junpeng Wang, Chin-Chia Michael Yeh, Yujie Fan, Prince Aboagye, Yan Zheng, Xin Dai, Zhongfang Zhuang, Uday Singh Saini, Wei Zhang
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引用次数: 0

摘要

针对在线产品评级预测开发的算法不胜枚举,但用户和产品信息对最终预测得分的具体影响在很大程度上仍未得到探讨。现有研究往往依赖于狭义的数据设置,从而忽略了现实世界中的挑战,如冷启动问题、跨类别信息利用以及可扩展性和部署问题。为了深入研究这些方面,特别是揭示用户个人品味和集体智慧的作用,我们提出了一种独特而实用的方法,强调用户和产品层面的历史评价,并使用持续更新的动态树形表示法进行封装。此外,我们还开发了一种高效的数据处理策略,使这种方法具有高度的可扩展性和易部署性。值得注意的是,我们的研究结果表明,在在线产品评级预测中,个人品味比集体智慧更有优势,这与在其他领域普遍观察到的群体智慧现象形成了鲜明对比。用户个人品味的优势在各种类型的模型中都是一致的,包括提升树模型、递归神经网络(RNN)和基于变换器的架构。我们的发现强调了用户个人品味在在线产品评分预测中的重要性,以及我们的方法在不同模型架构中的稳健性。
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Preserving Individuality while Following the Crowd: Understanding the Role of User Taste and Crowd Wisdom in Online Product Rating Prediction
Numerous algorithms have been developed for online product rating prediction, but the specific influence of user and product information in determining the final prediction score remains largely unexplored. Existing research often relies on narrowly defined data settings, which overlooks real-world challenges such as the cold-start problem, cross-category information utilization, and scalability and deployment issues. To delve deeper into these aspects, and particularly to uncover the roles of individual user taste and collective wisdom, we propose a unique and practical approach that emphasizes historical ratings at both the user and product levels, encapsulated using a continuously updated dynamic tree representation. This representation effectively captures the temporal dynamics of users and products, leverages user information across product categories, and provides a natural solution to the cold-start problem. Furthermore, we have developed an efficient data processing strategy that makes this approach highly scalable and easily deployable. Comprehensive experiments in real industry settings demonstrate the effectiveness of our approach. Notably, our findings reveal that individual taste dominates over collective wisdom in online product rating prediction, a perspective that contrasts with the commonly observed wisdom of the crowd phenomenon in other domains. This dominance of individual user taste is consistent across various model types, including the boosting tree model, recurrent neural network (RNN), and transformer-based architectures. This observation holds true across the overall population, within individual product categories, and in cold-start scenarios. Our findings underscore the significance of individual user tastes in the context of online product rating prediction and the robustness of our approach across different model architectures.
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